Accepted Papers| Artificial Intelligence and Statistics Conference
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Accepted Papers

PMLR Conference Proceedings
Virtual Conference Website: Accepted Papers

Notable papers

  • Who Should Predict? Exact Algorithms For Learning to Defer to Humans
    Mozannar, Hussein; Lang, Hunter; Wei, Dennis; Sattigeri, Prasanna; Das, Subhro; Sontag, David

  • Implications of sparsity and high triangle density for graph representation learning
    Sansford, Hannah J; Modell, Alexander; Whiteley, Nick; Rubin-Delanchy, Patrick

  • Fitting low-rank models on egocentrically sampled partial networks
    Chan, Ga Ming Angus; Li, Tianxi

  • The Power of Recursion in Graph Neural Networks for Counting Substructures
    Tahmasebi, Behrooz; Lim, Derek; Jegelka, Stefanie

  • Rethinking Initialization of the Sinkhorn Algorithm
    Thornton, James; Cuturi, marco

  • Using Sliced Mutual Information to Study Memorization and Generalization in Deep Neural Networks
    Wongso, Shelvia; Ghosh, Rohan; Motani, Mehul

  • Noisy Low-rank Matrix Optimization: Geometry of Local Minima and Convergence Rate
    Ma, Ziye; Sojoudi, Somayeh

  • Federated Learning under Distributed Concept Drift
    Jothimurugesan, Ellango; Hsieh, Kevin; Wang, Jianyu; Joshi, Gauri; Gibbons, Phillip B

  • Error Estimation for Random Fourier Features
    Yao, Junwen; Erichson, Benjamin; Lopes, Miles E

  • Implicit Graphon Neural Representation
    Xia, Xinyue; Mishne, Gal; Wang, Yusu

  • A Tale of Sampling and Estimation in Discounted Reinforcement Learning
    Metelli, Alberto Maria; Mutti, Mirco; Restelli, Marcello

  • Fix-A-Step: Semi-supervised Learning From Uncurated Unlabeled Data
    Huang, Zhe; Sidhom, Mary-Joy; Wessler, Benjamin; Hughes, Michael C

  • BaCaDI: Bayesian Causal Discovery with Unknown Interventions
    Hägele, Alexander; Rothfuss, Jonas; Lorch, Lars; Somnath, Vignesh Ram; Schölkopf, Bernhard; Krause, Andreas

  • Mode-Seeking Divergences: Theory and Applications to GANs
    Li, Cheuk Ting; Farnia, Farzan

  • The Schrödinger Bridge between Gaussian Measures has a Closed Form
    Bunne, Charlotte; Hsieh, Ya-Ping; Cuturi, marco; Krause, Andreas

  • Huber-robust confidence sequences
    Wang, Hongjian; Ramdas, Aaditya

  • Blessing of Class Diversity in Pre-training
    Zhao, Yulai; Chen, Jianshu; Du, Simon

  • Hedging against Complexity: Distributionally Robust Optimization with Parametric Approximation
    Iyengar, Garud; Lam, Henry; Wang, Tianyu

  • Scalable Bicriteria Algorithms for Non-Monotone Submodular Cover
    Crawford, Victoria

  • Scalable particle-based alternatives to EM
    Kuntz Nussio, Juan; Lim, Jen Ning; Johansen, Adam M.

  • Do Bayesian Neural Networks Need to be Fully Stochastic?
    Sharma, Mrinank; Farquhar, Sebastian; Nalisnick, Eric; Rainforth, Tom

  • Distance-to-Set Priors and Constrained Bayesian Inference
    Presman, Rick; Xu, Jason Q

  • An Efficient and Continuous Voronoi Density Estimator
    Marchetti, Giovanni Luca; Polianskii, Vladislav; Varava, Anastasiia; Pokorny, Florian T.; Kragic, Danica

  • Multilevel Bayesian Quadrature
    Li, Kaiyu; Giles, Daniel; Karvonen, Toni; Guillas, Serge; Briol, Francois-Xavier

  • Inducing Point Allocation for Sparse Gaussian Processes in High-Throughput Bayesian Optimisation
    Moss, Henry B; Ober, Sebastian W; Picheny, Victor

  • Discovering Many Diverse Solutions with Bayesian Optimization
    Maus, Natalie; Wu, Kaiwen; Eriksson, David; Gardner, Jacob

  • Indeterminacy in Generative Models: Characterization and Strong Identifiability
    Xi, Quanhan; Bloem-Reddy, Benjamin

  • Robust Sequential Testing and Effect Estimation in Stratified Count Data
    Turner, Rosanne; Grunwald, Peter

  • Data Banzhaf: A Robust Data Valuation Framework for Machine Learning
    Wang, Tianhao; Jia, Ruoxi

  • Combating label-leaking explanations
    Jethani, Neil; Saporta, Adriel; Ranganath, Rajesh

  • Generalized PTR: User-Friendly Recipes for Data-Adaptive Algorithms with Differential Privacy
    Redberg, Rachel; Zhu, Yuqing; Wang, Yu-Xiang

  • Origins of Low-Dimensional Adversarial Perturbations
    Dohmatob, Elvis; Guo, Chuan; Goibert, Morgane

All Accepted Papers

  • Improved Generalization Bound and Learning of Sparsity Patterns for Data-Driven Low-Rank Approximation
    Sakaue, Shinsaku; Oki, Taihei

  • Meta-Uncertainty in Bayesian Model Comparison
    Schmitt, Marvin; Radev, Stefan T.; Bürkner, Paul-Christian

  • PAC Learning of Halfspaces with Malicious Noise in Nearly Linear Time
    Shen, Jie

  • Entropic Risk Optimization in Discounted MDPs
    Hau, Jia Lin; Petrik, Marek; Ghavamzadeh, Mohammad

  • Acceleration of Frank-Wolfe Algorithms with Open Loop Step-Sizes
    Wirth, Elias S; Kerdreux, Thomas; Pokutta, Sebastian

  • An Online and Unified Algorithm for Projection Matrix Vector Multiplication with Application to Empirical Risk Minimization
    Qin, Lianke; Song, Zhao; Zhang, Lichen; Zhuo, Danyang

  • Leveraging Instance Features for Label Aggregation in Programmatic Weak Supervision
    Zhang, Jieyu; Song, Linxin; Ratner, Alex

  • Stochastic Gradient Descent-Ascent: Unified Theory and New Efficient Methods
    Beznosikov, Aleksandr; Gorbunov, Eduard; Berard, Hugo; Loizou, Nicolas

  • Scalable marked point processes for exchangeable and non-exchangeable event sequences
    Panos, Aristeidis; Kosmidis, Ioannis; Dellaportas, Petros

  • Bayesian Variable Selection in a Million Dimensions
    Jankowiak, Martin

  • Blessing of Class Diversity in Pre-training
    Zhao, Yulai; Chen, Jianshu; Du, Simon

  • Barlow Graph Auto-Encoder for Unsupervised Network Embedding
    Khan, RayyanAhmad; Kleinsteuber, Martin

  • Gradient-Informed Neural Network Statistical Robustness Estimation
    TIT, Karim; Furon, Teddy; Rousset, Mathias

  • Online Defense Strategies for Reinforcement Learning Against Adaptive Reward Poisoning
    Nika, Andi; Singla, Adish; Radanovic, Goran

  • A Case of Exponential Convergence Rates for SVM
    Cabannnes, Vivien A; Vigogna, Stefano

  • Finding Regularized Competitive Equilibria of Heterogeneous Agent Macroeconomic Models via Reinforcement Learning
    Xu, Ruitu; Min, Yifei; Wang, Tianhao; Jordan, Michael; Wang, Zhaoran; Yang, Zhuoran

  • Adaptive Cholesky Gaussian Processes
    Bartels, Simon; Stensbo-Smidt, Kristoffer; Moreno-Munoz, Pablo; Boomsma, Wouter Krogh; Frellsen, Jes; Hauberg, Soren

  • Sample Complexity of Kernel-Based Q-Learning
    Yeh, Sing-Yuan; Chang, Fu-Chieh; Yueh, Chang-Wei; Wu, Pei-Yuan; Bernacchia, Alberto; Vakili, Sattar

  • A principled framework for the design and analysis of token algorithms
    Hendrikx, Hadrien

  • Learning k-qubit Quantum Operators via Pauli Decomposition
    Heidari, Mohsen; Szpankowski, Wojciech

  • Semi-Verified PAC Learning from the Crowd
    Zeng, Shiwei; Shen, Jie

  • On the Capacity Limits of Privileged ERM
    Sharoni, Michal; Sabato, Sivan

  • USIM Gate: Novel Attention-based UpSampling Interpolation Method for Segmenting Precise Boundaries of Target Objects
    Lee, Kyungsu; Lee, Haeyun; Hwang, Jae Youn

  • Bayesian Structure Scores for Probabilistic Circuits
    Yang, Yang; Gala, Gennaro; Peharz, Robert

  • Langevin Diffusion Variational Inference
    Geffner, Tomas; Domke, Justin

  • Overcoming Prior Misspecification in Online Learning to Rank
    Azizi, MohammadJavad; Meshi, Ofer; Zoghi, Masrour; Karimzadehgan, Maryam

  • Catalyst Acceleration of Error Compensated Methods Leads to Better Communication Complexity
    Qian, Xun; Dong, Hanze; Zhang, Tong; Richtarik, Peter

  • Kernel Conditional Moment Constraints for Confounding Robust Inference
    Ishikawa, Kei; He, Niao

  • Meta-learning for Robust Unsupervised Anomaly Detection
    Kumagai, Atsutoshi; Iwata, Tomoharu; Takahashi, Hiroshi; Fujiwara, Yasuhiro

  • Learning in RKHM: a C*-algebraic twist for kernel machines
    Hashimoto, Yuka; Ikeda, Masahiro; Kadri, Hachem

  • From Shapley Values to Generalized Additive Models and back
    Bordt, Sebastian; von Luxburg, Ulrike

  • Estimating Conditional Average Treatment Effects with Missing Treatment Information
    Kuzmanovic, Milan; Hatt, Tobias; Feuerriegel, Stefan

  • Global Convergence of Over-parameterized Deep Equilibrium Models
    Ling, Zenan; Xie, Xingyu; Wang, Qiuhao; Zhang, Zongpeng; Lin, Zhouchen

  • A Tale of Two Efficient Value Iteration Algorithms for Solving Linear MDPs with Large Action Space
    Xu, Zhaozhuo; Song, Zhao; Shrivastava, Anshumali

  • Adversarial De-confounding in Individualised Treatment Effects Estimation
    Chauhan, Vinod K; Molaei, Soheila; Hoque Tania , Marzia ; Thakur, Anshul; Zhu, Tingting; Clifton, David A

  • Fast Distributed k-Means with a Small Number of Rounds
    Hess, Tom; Visbord, Ron; Sabato, Sivan

  • A New Causal Decomposition Paradigm towards Health Equity
    Sun, Xinwei; Zheng, Xiangyu; Weinstein, Jim

  • Matching Map Recovery with an Unknown Number of Outliers
    Minasyan, Arshak; Galstyan, Tigran; Hunanyan, Sona; Dalalyan, Arnak

  • Characterizing Internal Evasion Attacks in Federated Learning
    Kim, Taejin; Singh, Shubhranshu ; Madaan, Nikhil; Joe-Wong, Carlee

  • Optimal and Private Learning from Human Response Data
    Nguyen, Duc; Zhang, Anderson Ye

  • Bayesian Optimization with Conformal Coverage Guarantees
    Stanton, Samuel; Maddox, Wesley; Wilson, Andrew Gordon Gordon

  • Alternating Projected SGD for Equality-constrained Bilevel Optimization
    Xiao, Quan; Shen, Han ; Yin, Wotao; Chen, Tianyi

  • Improved Robust Algorithms for Learning with Discriminative Feature Feedback
    Sabato, Sivan

  • Weisfeiler and Leman go Hyperbolic: Learning Distance Preserving Node Representations
    Nikolentzos, Giannis; Chatzianastasis, Michail; Vazirgiannis, Michalis

  • Can 5th Generation Local Training Methods Support Client Sampling? Yes!
    Grudzień, Michał; Malinovsky, Grigory; Richtarik, Peter

  • qEUBO: A Decision-Theoretic Acquisition Function for Preferential Bayesian Optimization
    Astudillo, Raul; Lin, Zhiyuan Jerry; Bakshy, Eytan; Frazier, Peter

  • Bayesian Hierarchical Models for Counterfactual Estimation
    Raman, Natraj; Magazzeni, Daniele; Shah, Sameena

  • Sequential Gradient Descent and Newton's Method for Change-Point Analysis
    Zhang, Xianyang; Dawn, Trisha

  • Towards Scalable and Robust Structured Bandits: A Meta-Learning Framework
    Wan, Runzhe; Ge, Lin; Song, Rui

  • Compress Then Test: Powerful Kernel Testing in Near-linear Time
    Domingo-Enrich, Carles; Dwivedi, Raaz; Mackey, Lester

  • Select and Optimize Learning to Solve Large-Scale Traveling Salesman Problem
    Cheng, Hanni; Zheng, Haosi; Cong, Ya; Jiang, Weihao; Pu, Shiliang

  • Fixing by Mixing: A Recipe for Optimal Byzantine ML under Heterogeneity
    Allouah, Youssef; Farhadkhani, Sadegh; Guerraoui, Rachid; Gupta, Nirupam; Pinot, Rafael; Stephan, John

  • Testing of Horn Samplers
    BANERJEE, ANSUMAN; Chakraborty, Shayak; Chakraborty, Sourav; Meel, Kuldeep S; Sarkar, Uddalok; Sen, Sayantan

  • Coordinate Ascent for Off-Policy RL with Global Convergence Guarantees
    Su, Hsin-En; Chen, Yen-Ju; Hsieh, Ping-Chun; Liu, Xi

  • Positional Encoder Graph Neural Networks for Geographic Data
    Klemmer, Konstantin; Safir, Nathan S; Neill, Daniel B

  • Coarse-Grained Smoothness for Reinforcement Learning in Metric Spaces
    Gottesman, Omer; Asadi, Kavosh; Allen, Cameron S; Lobel, Samuel; Konidaris, George; Littman, Michael L.

  • BaCaDI: Bayesian Causal Discovery with Unknown Interventions
    Hägele, Alexander; Rothfuss, Jonas; Lorch, Lars; Somnath, Vignesh Ram; Schölkopf, Bernhard; Krause, Andreas

  • Statistical Analysis of Karcher Means for Random Restricted PSD Matrices
    Chen, Hengchao; Li, Xiang; Sun, Qiang

  • Differentially Private Synthetic Control
    Rho, Saeyoung; Cummings, Rachel; Misra, Vishal

  • Scalable Bayesian Optimization Using Vecchia Approximations of Gaussian Processes
    Jimenez, Felix; Katzfuss, Matthias

  • A Randomly Pruned Neural Network can be Equivalent to the Unpruned Network under the NTK Regime
    Yang, Hongru; Wang, Zhangyang

  • Riemannian accelerated gradient methods via extrapolation
    Han, Andi; Mishra, Bamdev; Jawanpuria, Pratik; Gao, Junbin

  • Flexible risk design using bi-directional dispersion
    Holland, Matthew J

  • Contextual Linear Bandits under Noisy Features: Towards Bayesian Oracles
    Kim, Jung-hun; Yun, Se-Young; Jeong, Minchan; Nam, Junhyun; Shin, Jinwoo; Combes, Richard

  • Deep equilibrium models as estimators for continuous latent variables
    Tsuchida, Russell; Ong, Cheng Soon

  • Refined Convergence and Topology Learning for Decentralized SGD with Heterogeneous Data
    Le Bars, Batiste; Bellet, Aurélien; Tommasi, Marc; Lavoie, Erick; Kermarrec, Anne-Marie

  • A Novel Stochastic Gradient Descent Algorithm for Learning Principal Subspaces
    Le Lan, Charline; Greaves, Joshua; Farebrother, Jesse; Rowland, Mark; Pedregosa, Fabian; Agarwal, Rishabh; G. Bellemare, Marc

  • A Constant-Factor Approximation Algorithm for Reconciliation $k$-Median
    Gionis, Aristides; Khodamoradi, Kamyar; Ordozgoiti, Bruno; Riegel, Benedikt; Spoerhase, Joachim

  • Neural Laplace Control for Continuous-time Delayed Systems
    Holt, Samuel I; Hüyük, Alihan; Qian, Zhaozhi; Sun, Hao; van der Schaar, Mihaela

  • Discovering Many Diverse Solutions with Bayesian Optimization
    Maus, Natalie; Wu, Kaiwen; Eriksson, David; Gardner, Jacob

  • BlitzMask: Real-Time Instance Segmentation Approach for Mobile Devices
    Bulygin, Vitalii; Mykheievskyi, Dmytro; Kuchynskyi, Kyrylo

  • Exact Gradient Computation for Spiking Neural Networks via Forward Propagation
    Lee, Jane H; Haghighatshoar, Saeid; Karbasi, Amin

  • Uni6Dv2: Noise Elimination for 6D Pose Estimation
    Sun, Mingshan; Zheng, Ye; Bao, Tianpeng; Chen, Jianqiu; Jin, Guoqiang; Wu, Liwei; Zhao, Rui; Jiang, Xiaoke

  • Multilevel Bayesian Quadrature
    Li, Kaiyu; Giles, Daniel; Karvonen, Toni; Guillas, Serge; Briol, Francois-Xavier

  • Direct Inference of Effect of Treatment (DIET) for a Cookieless World
    Shankar, Shiv; Sinha, Ritwik; Mitra, Saayan; Sinha, Moumita; Fiterau, Madalina

  • The Ordered Matrix Dirichlet for Modeling Ordinal Dynamics
    Stoehr, Niklas; Radford, Benjamin J; Cotterell, Ryan; Schein, Aaron J

  • Energy-Based Processes for Functional Data
    Lim, Jen Ning; Vollmer, Sebastian; Wolf, Lorenz L; Duncan, Andrew

  • Frequentist Uncertainty Quantification in Semi-Structured Neural Networks
    Dorigatti, Emilio; Schubert, Benjamin; Bischl, Bernd; Ruegamer, David

  • NTS-NOTEARS: Learning Nonparametric DBNs With Prior Knowledge
    Sun, Xiangyu; Schulte, Oliver; Liu, Guiliang; Poupart, Pascal

  • One Policy is Enough: Parallel Exploration with a Single Policy is Near-Optimal for Reward-Free Reinforcement Learning
    Cisneros-Velarde, Pedro; Lyu, Boxiang; Koyejo, Sanmi; Kolar, Mladen

  • Variational Inference for Neyman-Scott Processes
    Hong, Chengkuan; Shelton, Christian

  • Graph Alignment Kernels using Weisfeiler and Leman Hierarchies
    Nikolentzos, Giannis; Vazirgiannis, Michalis

  • Geometric Random Walk Graph Neural Networks via Implicit Layers
    Nikolentzos, Giannis; Vazirgiannis, Michalis

  • Model-Free Sequential Testing for Conditional Independence via Testing by Betting
    Shaer, Shalev; Maman, Gal; Romano, Yaniv

  • Mixed-Effect Thompson Sampling
    Aouali, Imad; Kveton, Branislav; Katariya, Sumeet

  • Mixed Linear Regression via Approximate Message Passing
    Tan, Nelvin; Venkataramanan, Ramji

  • EEGNN: Edge Enhanced Graph Neural Networks
    Liu, Yirui; Qiao, Xinghao; Wang, Liying; Lam, Jessica

  • Estimating Total Correlation with Mutual Information Estimators
    Bai, Ke; Cheng, Pengyu; Hao, Weituo; Henao, Ricardo; Carin, Larry

  • Vector Optimization with Stochastic Bandit Feedback
    Ararat, Cagin; Tekin, Cem

  • Knowledge Acquisition for Human-In-The-Loop Image Captioning
    Zheng, Ervine; Yu, Qi; Li, Rui; Shi, Pengcheng; Haake, Anne

  • A Statistical Analysis of Polyak-Ruppert-Averaged Q-Learning
    Li, Xiang; Yang, Wenhao; Liang, Jiadong; Zhang, Zhihua; Jordan, Michael

  • Linear Convergence of Gradient Descent For Overparametrized Finite Width Two-Layer Linear Networks With General Initialization
    Xu, Ziqing; Min, Hancheng; Tarmoun, Salma; Mallada, Enrique; Vidal, Rene

  • “Plus/minus the learning rate”: Easy and Scalable Statistical Inference with SGD
    Chee, Jerry; Kim, Hwanwoo; Toulis, Panos

  • Distance-to-Set Priors and Constrained Bayesian Inference
    Presman, Rick; Xu, Jason Q

  • Fast Computation of Branching Process Transition Probabilities via ADMM
    AWASTHI, ACHAL; Xu, Jason Q

  • Error Estimation for Random Fourier Features
    Yao, Junwen; Erichson, Benjamin; Lopes, Miles E

  • AdaGDA: Faster Adaptive Gradient Descent Ascent Methods for Minimax Optimization
    Huang, Feihu; Wu, Xidong; Hu, Zhengmian

  • Classification of Adolescents' Risky Behavior in Instant Messaging Conversations
    Plhák, Jaromír; Sotolář, Ondřej; Lebedíková, Michaela; Šmahel, David

  • Robust Linear Regression for General Feature Distribution
    Norman, Tom; Levy, Kfir; Weinberger, Nir; Levy, Kfir Yehuda; Weinberger, Nir

  • Fair learning with Wasserstein barycenters for non-decomposable performance measures
    Gaucher, Solenne; Schreuder, Nicolas; Chzhen, Evgenii

  • Deep Neural Networks with Efficient Guaranteed Invariances
    Rath, Matthias; Condurache, Alexandru

  • Fast Block Coordinate Descent for Non-Convex Group Regularizations
    Ida, Yasutoshi; Kanai, Sekitoshi; Kumagai, Atsutoshi

  • AUC-based Selective Classification
    Pugnana, Andrea; Ruggieri, Salvatore

  • Nonparametric Indirect Active Learning
    Singh, Shashank

  • Resolving the Approximability of Offline and Online Non-monotone DR-Submodular Maximization over General Convex Sets
    Mualem, Loay Raed; Feldman, Moran

  • \{PF\}$^2$ES: Parallel Feasible Pareto Frontier Entropy Search for Multi-Objective Bayesian Optimization
    Qing, Jixiang; Moss, Henry B; Dhaene, Tom; Couckuyt, Ivo

  • Learning Constrained Structured Spaces with Application to Multi-Graph Matching
    Cohen Indelman , Hedda; Hazan, Tamir

  • On the Strategyproofness of the Geometric Median
    El-Mhamdi, El-Mahdi; Farhadkhani, Sadegh; Guerraoui, Rachid; Hoang, Lê-Nguyên

  • Covariate-informed Representation Learning to Prevent Posterior Collapse of iVAE
    Kim, Young-geun; Liu, Ying; Wei, Xue-Xin

  • EGG-GAE: scalable graph neural networks for tabular data imputation
    Telyatnikov, Lev; Scardapane, Simone

  • Group Distributionally Robust Reinforcement Learning with Hierarchical Latent Variables
    Xu, Mengdi; Huang, Peide; Niu, Yaru; Kumar, Visak; Qiu, Jielin; Fang, Chao; Lee, Kuan-Hui; Qi, Xuewei ; Lam, Henry; Li, Bo; ZHAO, DING

  • Weather2K: A Multivariate Spatio-Temporal Benchmark Dataset for Meteorological Forecasting Based on Real-Time Observation Data from Ground Weather Stations
    Zhu, Xun; Xiong, Yutong; Wu, Ming; Nie, Gaozhen; Zhang, Bin; Yang, Ziheng

  • Improved Rate of First Order Algorithms for Entropic Optimal Transport
    Luo, Yiling; Xie, Yiling; Huo, Xiaoming

  • Conformal Off-Policy Prediction
    zhang, yingying; Shi, Chengchun; Luo, Shikai

  • Sparse Spectral Bayesian Permanental.Process with Generalized Kernel
    Sellier, Jeremy; Dellaportas, Petros

  • Adversarial Noises Are Linearly Separable for (Nearly) Random Neural Networks
    Zhang, Huishuai; Yu, Da; Lu, Yiping; He, Di

  • Nearly Optimal Latent State Decoding in Block MDPs
    Jedra, Yassir; Lee, Junghyun; Proutiere, Alexandre; Yun, Se-Young

  • On the Limitations of the Elo, Real-World Games are Transitive, not Additive
    Bertrand, Quentin; Czarnecki, Wojciech M; Gidel, Gauthier

  • Agnostic PAC Learning of k-Juntas Using L2-Polynomial Regression
    Heidari, Mohsen; Szpankowski, Wojciech

  • Regularization for Shuffled Data Problems via Exponential Family Priors on the Permutation Group
    Wang, Zhenbang; Ben-David, Emanuel; Slawski, Martin

  • Simulation-Based Inference with WALDO: Confidence Regions by Leveraging Prediction Algorithms or Posterior Estimators for Inverse Problems
    Masserano, Luca; Dorigo, Tommaso; Izbicki, Rafael; Kuusela, Mikael; Lee, Ann

  • Analysis of Catastrophic Forgetting for Random Orthogonal Transformation Tasks in the Overparameterized Regime
    Goldfarb, Daniel; Hand, Paul

  • Clustering above Exponential Families with Tempered Exponential Measures
    Amid, Ehsan; Nock, Richard; Warmuth, Manfred K.

  • Mind the (optimality) Gap: A Gap-Aware Learning Rate Scheduler for Adversarial Nets
    Hazimeh, Hussein; Ponomareva, Natalia

  • Learning Physics-Informed Neural Networks without Stacked Back-propagation
    He, Di; Li, Shanda; Shi, Wenlei; Gao, Xiaotian; Zhang, Jia; Bian, Jiang; Wang, Liwei; Liu, Tie-Yan

  • An Optimization-based Algorithm for Non-stationary Kernel Bandits without Prior Knowledge
    Hong, Kihyuk; Li, Yuhang; Tewari, Ambuj

  • Multi-armed Bandit Experimental Design: Online Decision-making and Adaptive Inference
    Simchi-Levi, David; Wang, Chonghuan

  • Squeeze All: Novel Estimator and Self-Normalized Bound for Linear Contextual Bandits
    Kim, Wonyoung; Paik, Myunghee Cho; Oh, Min-hwan

  • Noisy Low-rank Matrix Optimization: Geometry of Local Minima and Convergence Rate
    Ma, Ziye; Sojoudi, Somayeh

  • Byzantine-Robust Federated Learning with Optimal Statistical Rates
    Zhu, Banghua; Wang, Lun; Pang, Qi; Wang, Shuai; Jiao, Jiantao; Song, Dawn; Jordan, Michael

  • An Unpooling Layer for Graph Generation
    Guo, Yinglong; Zou, Dongmian; Lerman, Gilad

  • Online Learning for Traffic Routing under Unknown Preferences
    Jalota, Devansh; Gopalakrishnan, Karthik; Azizan, Navid; Johari, Ramesh ; Pavone, Marco

  • Byzantine-Robust Online and Offline Distributed Reinforcement Learning
    Chen, Yiding; Zhang, Xuezhou; Zhang, Kaiqing; Wang, Mengdi; Zhu, Xiaojin

  • No-Regret Learning in Two-Echelon Supply Chain with Unknown Demand Distribution
    Zhang, Mengxiao; Chen, Shi; Luo, Haipeng; Wang, Yingfei

  • Mode Constrained Model-Based Reinforcement Learning via Gaussian Processes
    Scannell, Aidan; Ek, Carl Henrik; Richards, Arthur

  • Generative Oversampling for Imbalanced Data via Majority-Guided VAE
    Ai, Qingzhong; Wang, Pengyun; He, Lirong; Wen, liangjian; Pan, Lujia; Xu, Zenglin

  • The Lie-Group Bayesian Learning Rule
    Kiral, Eren Mehmet; Moellenhoff, Thomas; Emtiyaz, Khan Mohammad

  • Singular Value Representation: A New Graph Perspective On Neural Networks
    Berkouk, Nicolas; Meller, Dan

  • A Finite Sample Complexity Bound for Distributionally Robust Q-learning
    Wang, Shengbo; Si, Nian; Blanchet, Jose; Zhou, Zhengyuan

  • Connectivity-contrastive learning: Combining causal discovery and representation learning for multimodal data
    Morioka, Hiroshi; Hyvarinen, Aapo

  • A Bregman Divergence View on the Difference-of-Convex Algorithm
    Faust, Oisin; Fawzi, Hamza; Saunderson, James

  • Minority Oversampling for Imbalanced Data via Class-Preserving Regularized Auto-Encoders
    Mondal, Arnab K; Singhal, Lakshya; Tiwary, Piyush; Singla, Parag; A P, Prathosh

  • T-Phenotype: Discovering Phenotypes of Predictive Temporal Patterns in Disease Progression
    Qin, Yuchao; van der Schaar, Mihaela; Lee, Changhee

  • Membership Inference Attacks against Synthetic Data through Overfitting Detection
    van Breugel, Boris; Sun, Hao; Qian, Zhaozhi; van der Schaar, Mihaela

  • Online Learning for Non-monotone DR-Submodular Maximization: From Full Information to Bandit Feedback
    Zhang, Qixin; Deng, Zengde; Chen, Zaiyi; Zhou, Kuangqi; Hu, Haoyuan; Yang, Yu

  • Robust Variational Autoencoding with Wasserstein Penalty for Novelty Detection
    Lai, Chieh-Hsin; Zou, Dongmian; Lerman, Gilad

  • To Impute or not to Impute? Missing Data in Treatment Effect Estimation
    Berrevoets, Jeroen; Imrie, Fergus; Kyono, Trent M; Jordon, James; van der Schaar, Mihaela

  • No-regret Sample-efficient Bayesian Optimization for Finding Nash Equilibria with Unknown Utilities
    Tay, Sebastian Shenghong; Nguyen, Quoc Phong; Foo, Chuan Sheng; Low, Bryan Kian Hsiang

  • Noise-Aware Statistical Inference with Differentially Private Synthetic Data
    Räisä, Ossi; Jälkö, Joonas; Kaski, Samuel; Honkela, Antti

  • ASkewSGD : An Annealed interval-constrained Optimisation method to train Quantized Neural Networks
    Leconte, Louis; Schechtman, Sholom; Moulines, Eric

  • Transport Elliptical Slice Sampling
    Cabezas Gonzalez, Alberto ; Nemeth, Christopher

  • Towards Balanced Representation Learning for Credit Policy Evaluation
    Huang, Yiyan; Leung, Cheuk Hang; Ma, Shumin; Yuan, Zhiri; Wu, Qi; WANG, SIYI; Wang, Dongdong; Huang, Zhixiang

  • Convergence of Stein Variational Gradient Descent under a Weaker Smoothness Condition
    Sun, Lukang; Karagulyan, Avetik ; Richtarik, Peter

  • MARS: Masked Automatic Ranks Selection in Tensor Decompositions
    Kodryan, Maxim; Kropotov, Dmitry; Vetrov, Dmitry P

  • Learning from Multiple Sources for Data-to-Text and Text-to-Data
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  • Complex-to-Real Random Features for Polynomial Kernels
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  • Inducing Point Allocation for Sparse Gaussian Processes in High-Throughput Bayesian Optimisation
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  • Nonmyopic Multiclass Active Search with Diminishing Returns for Diverse Discovery
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    Plassier, Vincent; Moulines, Eric; Durmus, Alain

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    Watson, David; Blesch, Kristin; Kapar, Jan; Wright, Marvin N

  • Smoothly Giving up: Robustness for Simple Models
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    Patil, Gandharv; L.A., Prashanth; Nagaraj, Dheeraj M; Precup, Doina

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    Sansford, Hannah J; Modell, Alexander; Whiteley, Nick; Rubin-Delanchy, Patrick

  • Asymptotically Unbiased Off-Policy Policy Evaluation when Reusing Old Data in Nonstationary Environments
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  • Boosted Off-Policy Learning
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  • A Contrastive Approach to Online Change Point Detection
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  • Active Membership Inference Attack under Local Differential Privacy in Federated Learning
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  • Differentially Private Matrix Completion through Low-rank Matrix Factorization
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  • Private Non-Convex Federated Learning Without a Trusted Server
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  • The Schrödinger Bridge between Gaussian Measures has a Closed Form
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  • Federated Learning under Distributed Concept Drift
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  • Cooperative Inverse Decision Theory for Uncertain Preferences
    Robertson, Zachary; Zhang, Hantao; Koyejo, Sanmi

  • Falsification of Internal and External Validity in Observational Studies via Conditional Moment Restrictions
    Hussain, Zeshan M; Shih, Ming-Chieh; Oberst, Michael; Demirel, Ilker; Sontag, David

  • Adaptive Dimension Reduction and Variational Inference for Transductive Few-Shot Classification
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    Cheema, Fasil T; Urner, Ruth

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    Cong, Weilin; Mahdavi, Mehrdad

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    Raj, Vishnu; Cui, Tianyu; Heinonen, Markus; Marttinen, Pekka

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    Liu, Ning; Yu, Yue; You, Huaiqian; Tatikola, Neeraj K

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    Wei, Dennis; Wu, Haoze; Wu, Min; Chen, Pin-Yu; Barrett, Clark; Farchi, Eitan

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    Xi, Quanhan; Bloem-Reddy, Benjamin

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    Bishop, Adrian; Bonilla, Edwin V.

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  • Bayesian Optimization over High-Dimensional Combinatorial Spaces via Dictionary based Randomized Continuous Embeddings
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  • Unifying local and global model explanations by functional decomposition of low dimensional structures
    Hiabu, Munir; Meyer, Joseph T.; Wright, Marvin N

  • SMCP3: SMC with Probabilistic Program Proposals
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  • Learning Treatment Effects from Observational and Experimental Data
    Triantafillou, Sofia; Jabbari, Fattaneh; Cooper, Gregory F

  • On the Accelerated Noise-Tolerant Power Method
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  • Clustering High-dimensional Data with Ordered Weighted L1 Regularization
    Chakraborty, Chandramauli; Paul, Sayan; Chakraborty, Saptarshi; Das, Swagatam

  • Flexible and Efficient Contextual Bandits with Heterogeneous Treatment Effect Oracles
    Carranza, Aldo G; Krishnamurthy, Sanath Kumar; Athey, Susan

  • Faster Projection-Free Augmented Lagrangian Methods via Weak Proximal Oracle
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  • Meta-Learning with Adjoint Methods
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  • Combining Graphical and Algebraic Approaches for Parameter Identification in Latent Variable Structural Equation Models
    Ankan, Ankur; Wortel, Inge; Bollen, Kenneth; Textor, Johannes

  • Explicit Regularization in Overparametrized Models via Noise Injection
    Orvieto, Antonio; Raj, Anant; Kersting, Hans; Bach, Francis

  • Efficient Informed Proposals for Discrete Distributions via Newton’s Series Approximation
    Xiang, Yue; Zhu, Dongyao; Lei, Bowen; Xu, Dongkuan; Zhang, Ruqi

  • An Homogeneous Unbalanced Regularized Optimal Transport model with applications to Optimal Transport with Boundary
    Lacombe, Theo

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  • Active Exploration via Experiment Design in Markov Chains
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  • But Are You Sure? An Uncertainty-Aware Perspective on Explainable AI
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  • Identification of Blackwell Optimal Policies for Deterministic MDPs
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  • Multi-Fidelity Bayesian Optimization with Unreliable Information Sources
    Mikkola, Petrus; Martinelli, Julien; Filstroff, Louis; Kaski, Samuel

  • Randomized Greedy Learning for Non-monotone Stochastic Submodular Maximization Under Full-bandit Feedback
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  • Protecting Global Properties of Datasets with Distribution Privacy Mechanisms
    Chen, Michelle G; Ohrimenko, Olga

  • Incremental Aggregated Riemannian Gradient Method for Distributed PCA
    Wang, Xiaolu; Jiao, Yuchen; Wai, Hoi-To; Gu, Yuantao

  • Minimax-Bayes Reinforcement Learning
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  • Retrospective Uncertainties for Deep Models using Vine Copulas
    Tagasovska, Natasa; Ozdemir, Firat; Brando, Axel

  • Optimal Algorithms for Latent Bandits with Cluster Structure
    Pal, Soumyabrata ; Suggala, Arun Sai ; Shanmugam, Karthikeyan; Jain, Prateek

  • Improved Bound on Generalization Error of Compressed KNN Estimator
    zhang, hang; Li, Ping

  • Streaming Sparse Linear Regression
    Yang, Shuoguang; Yan, Yuhao; Zhu, Xiuneng; Sun, Qiang

  • Multi-Agent congestion cost minimization with linear function approximation
    Trivedi, Prashant; Hemachandra, Nandyala

  • Global-Local Regularization Via Distributional Robustness
    Phan, Hoang; Le, Trung; Phung, Trung Q; Bui, Anh Tuan; Ho, Nhat; Phung, Dinh

  • Vector Quantized Time Series Modeling with a Bidirectional Prior Model
    Lee, Daesoo; Malacarne, Sara; Aune, Erlend

  • Do Bayesian Neural Networks Need to be Fully Stochastic?
    Sharma, Mrinank; Farquhar, Sebastian; Nalisnick, Eric; Rainforth, Tom

  • Risk-aware linear bandits with convex loss
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  • One Arrow, Two Kills: An Unified Framework for Achieving Optimal Regret Guarantees for Sleeping Bandits
    Saha, Aadirupa; Gaillard, Pierre; Dan, Soham

  • Data Augmentation for Imbalanced Regression
    Stocksieker, Samuel; Pommeret, Denys; Charpentier, Arthur

  • Fast Feature Selection with Fairness Constraints
    Quinzan, Francesco; Khanna, Rajiv; Hershcovitch, Moshik; Cohen, Sarel; Waddington, Daniel G; Friedrich, Tobias; Mahoney, Michael

  • On the Consistency Rate of Decision Tree Learning Algorithms
    Zheng, Qin-Cheng; Lyu, Shen-Huan; Zhang, Shao-Qun; Jiang, Yuan; Zhou, Zhi-Hua

  • Ranked-Based Causal Discovery for Post-Nonlinear Models
    Keropyan, Grigor; Strieder, David; Drton, Mathias

  • On the Complexity of Representation Learning in Contextual Linear Bandits
    Tirinzoni, Andrea; Pirotta, Matteo; Lazaric, Alessandro

  • Hierarchical-Hyperplane Kernels for Actively Learning Gaussian Process Models of Nonstationary Systems
    Bitzer, Matthias; Meister, Mona; Zimmer, Christoph

  • Revisiting Weighted Strategy for Non-stationary Parametric Bandits
    Wang, Jing; Zhao, Peng; Zhou, Zhi-Hua

  • No time to waste: practical statistical contact tracing with few low-bit messages
    Romijnders, Rob; Asano, Yuki M; Louizos, Christos; Welling, Max

  • Understanding the Impact of Competing Risks on Heterogeneous Treatment Effect Estimation from Time-to-Event Data
    Curth, Alicia; van der Schaar, Mihaela

  • Performative Prediction in the Presence of Corruptions
    Shan, Jia-Wei; Zhao, Peng; Zhou, Zhi-Hua

  • Last-Iterate Convergence with Full- and Noisy-Information Feedback in Two-Player Zero-Sum Games
    Abe, Kenshi; Ariu, Kaito; Sakamoto, Mitsuki; Toyoshima, Kentaro; Iwasaki, Atsushi

  • Model-Based Uncertainty in Value Functions
    Luis, Carlos E.; Bottero, Alessandro G; Vinogradska, Julia; Berkenkamp, Felix; Peters, Jan

  • The Role of Codeword-to-Class Assignments in Error Correcting Codes: An Empirical Study
    Onn, Ophir; Weiss, Tamar; Azeroual, Hai; Soudry, Daniel; Evron, Itay

  • Online Algorithms with Costly Predictions
    Drygala, Marina R; Nagarajan, Sai Ganesh; Svensson, Ola

  • Adaptive Tuning for Metropolis Adjusted Langevin Trajectories
    Riou-Durand, Lionel; Sountsov, Pavel; Vogrinc, Jure; Margossian, Charles; Power, Sam

  • Further Adaptive Best-of-Both-Worlds Algorithm for Combinatorial Semi-Bandits
    Tsuchiya, Taira; Ito, Shinji; Honda, Junya

  • PAC-Bayesian Learning of Optimization Algorithms
    Sucker, Michael; Ochs, Peter

  • Tighter PAC-Bayes Generalisation Bounds by Leveraging Example Difficulty
    Biggs, Felix; Guedj, Benjamin

  • Bures-Wasserstein Barycenters and Low-Rank Matrix Recovery
    Maunu, Tyler; Le Gouic, Thibaut; Rigollet, Philippe

  • Sampling uncertainties on the Precision-Recall curve
    Baak, Max; Collot, Stéphane; Fridman Rojas, Ilan; Urlus, Ralph E.Q.

  • Exploration in Linear Bandits with Rich Action Sets and its Implications for Inference
    Banerjee, Debangshu; Ghosh, Avishek; Ray Chowdhury, Sayak; Gopalan, Aditya

  • Nothing but Regrets --- Privacy-Preserving Federated Causal Discovery
    Mian, Osman A; Kaltenpoth, David; Kamp, Michael; Vreeken, Jilles

  • Nonparametric Gaussian Process Covariances via Multidimensional Convolutions
    McDonald, Thomas M; Ross, Magnus ; Smith, Michael T; Álvarez, Mauricio A

  • Improved Representation Learning Through Tensorized Autoencoders
    Esser, Pascal M; Mukherjee, Satyaki; Sabanayagam, Mahalakshmi; Ghoshdastidar, Debarghya

  • Tensor-based Kernel Machines with Structured Inducing Points for Large and High-Dimensional Data
    Wesel, Frederiek; Batselier, Kim

  • Mode-Seeking Divergences: Theory and Applications to GANs
    Li, Cheuk Ting; Farnia, Farzan

  • A Targeted Accuracy Diagnostic for Variational Approximations
    Wang, Yu; Kasprzak, Mikolaj J; Huggins, Jonathan H

  • Fix-A-Step: Semi-supervised Learning From Uncurated Unlabeled Data
    Huang, Zhe; Sidhom, Mary-Joy; Wessler, Benjamin; Hughes, Michael C

  • Root Cause Identification for Collective Anomalies given a Summary Causal Graph and Time Series
    ASSAAD, Charles K.; Ez-zejjari, Imad; ZAN, Lei

  • Principled Approaches for Private Adaptation from a Public Source
    Bassily, Raef; Mohri, Mehryar; Suresh, Ananda Theertha

  • CLIP-Lite: Information Efficient Visual Representation Learning with Language Supervision
    Shrivastava, Aman; R. Selvaraju, Ramprasaath; Naik, Nikhil; Ordonez, Vicente

  • Surveillance Evasion Through Bayesian Reinforcement Learning
    Qi, Dongping; Bindel, David; Vladimirsky, Alexander

  • Random feature ridge regression in the overparameterized regime with a general dataset
    Wang, Zhichao; Zhu, Yizhe

  • How Does Pseudo-Labeling Affect the Generalization Error of the Semi-Supervised Gibbs Algorithm?
    He, Haiyun; Aminian, Gholamali; Bu, Yuheng; Rodrigues, Miguel; Tan, Vincent

  • Scalable Unbalanced Sobolev Transport for Measures on a Graph
    Le, Tam; Nguyen, Truyen; Fukumizu, Kenji

  • Discrete Distribution Estimation under User-level Local Differential Privacy
    Acharya, Jayadev; Liu, Yuhan; Sun, Ziteng

  • Causal Entropy Optimization
    Branchini, Nicola; Aglietti, Virginia; Dhir, Neil; Damoulas, Theodoros

  • Loss Curvature Matching for Dataset Selection and Condensation
    Shin, Seungjae; BAE, HeeSun; Shin, DongHyeok; Joo, Weonyoung; Moon, Il-Chul

  • Wasserstein Distributionally Robust Linear-Quadratic Estimation under Martingale Constraints
    Lotidis, Kyriakos; Bambos, Nicholas; Blanchet, Jose; Li, Jiajin

  • Density Ratio Estimation and Neyman Pearson Classification with Missing Data
    Givens, Josh L; Reeve, Henry W. J. ; Liu, Song

  • Rethinking Initialization of the Sinkhorn Algorithm
    Thornton, James; Cuturi, marco

  • Representation Learning in Deep RL via Discrete Information Bottleneck
    Islam, Riashat; Zang, Hongyu; Tomar, Manan; Didolkar, Aniket Rajiv; Islam, Md Mofijul; Goyal, Anirudh; Arnob, Samin Yeasar; Li, Xin; Iqbal, Tariq; Heess, Nicolas; Lamb, Alex

  • Learning Robust Graph Neural Networks with Limited Supervision
    Alchihabi, Abdullah; Guo, Yuhong

  • Consistent Complementary-Label Learning via Order-Preserving Losses
    Liu, Shuqi; Cao, Yuzhou; Zhang, Qiaozhen; Feng, Lei; An, Bo

  • Tight Regret and Complexity Bounds for Thompson Sampling via Langevin Monte Carlo
    Huix, Tom tom; Zhang, Shunshi; Durmus, Alain

  • Nonstochastic Contextual Combinatorial Bandits
    Zierahn, Lukas; van der Hoeven, Dirk; Cesa-Bianchi, Nicolò; Neu, Gergely

  • Probabilistic Conformal Prediction Using Conditional Random Samples
    Wang, Zhendong; Gao, Ruijiang; Yin, Mingzhang; Zhou, Mingyuan; Blei, David

  • Preferential Subsampling for Stochastic Gradient Langevin Dynamics
    Putcha, Srshti; Nemeth, Christopher; Fearnhead, Paul

  • Calibration of Probabilistic Classifier Sets
    Mortier, Thomas; Bengs, Viktor; Hüllermeier, Eyke; Luca, Stijn; Waegeman, Willem

  • Context-Specific Causal Discovery for Categorical Data Using Staged Trees
    Leonelli, Manuele; Varando, Gherardo

  • Federated Learning for Data Streams
    Marfoq, Othmane; Vidal, Richard; Neglia, Giovanni; Kameni, Laetitia

  • Combating label-leaking explanations
    Jethani, Neil; Saporta, Adriel; Ranganath, Rajesh

  • Adversarial robustness of VAEs through the lens of local geometry
    Khan, Asif; Storkey, Amos

  • Freeze then Train: Towards Provable Representation Learning under Spurious Correlations and Feature Noise
    Ye, Haotian; Zou, James; Zhang, Linjun

  • Learning to Optimize for Stochastic Dominance Constraints
    Dai, Hanjun; Xue, Yuan; He, Niao; Wang, Yixin; Li, Na; Schuurmans, Dale; Dai, Bo

  • SoundSynp: Sound Source Detection from Raw Waveforms with Multi-Scale Synperiodic Filterbanks
    He, Yuhang; Markham, Andrew

  • Second Order Path Variationals in Non-Stationary Online Learning
    Baby, Dheeraj; Wang, Yu-Xiang

  • Bayesian Optimization Over Iterative Learners with Structured Responses: A Budget-aware Planning Approach
    Belakaria, Syrine; Doppa, Janardhan Rao; Fusi, Nicolo; Sheth, Rishit

  • Knowledge Sheaves: A Sheaf-Theoretic Framework for Knowledge Graph Embedding
    Gebhart, Thomas; Hansen, Jakob; Schrater, Paul

  • Active Cost-aware Labeling of Streaming Data
    Cai, Ting; Kandasamy, Kirthevasan

  • Krylov--Bellman boosting: Super-linear policy evaluation in general state spaces
    Xia, Eric; Wainwright, Martin

  • SwAMP: Swapped Assignment of Multi-Modal Pairs for Cross-Modal Retrieval
    Kim, Minyoung

  • A Mini-Block Fisher Method for Deep Neural Networks
    Bahamou, Achraf; Goldfarb, Donald; Ren, Yi

  • Origins of Low-Dimensional Adversarial Perturbations
    Dohmatob, Elvis; Guo, Chuan; Goibert, Morgane

  • On the Convergence of Distributed Stochastic Bilevel Optimization Algorithms over a Network
    Gao, Hongchang; Gu, Bin; Thai, My T.

  • Pricing against a Budget and ROI Constrained Buyer
    Golrezaei, Negin; Jaillet , Patrick; Liang, Jason Cheuk Nam; Mirrokni, Vahab

  • Improving Dual-Encoder Training Through Dynamic Indexes for Negative Mining
    Monath, Nicholas; Zaheer, Manzil; Allen, Kelsey; McCallum, Andrew

  • Incentive-aware Contextual Pricing with Non-parametric Market Noise
    Golrezaei, Negin; Jaillet , Patrick; Liang, Jason Cheuk Nam

  • Coherent Probabilistic Forecasting of Temporal Hierarchies
    Rangapuram, Syama Sundar; Kapoor, Shubham; Nirwan, Rajbir S; Mercado, Pedro; Januschowski, Tim ; Wang, Yuyang; Bohlke-Schneider, Michael

  • Optimal robustness-consistency tradeoffs for learning-augmented metrical task systems
    Christianson, Nicolas; Shen, Junxuan; Wierman, Adam

  • Randomized geometric tools for anomaly detection in stock markets
    Bachelard, Cyril; Chalkis, Apostolos; Fisikopoulos, Vissarion; Tsigaridas, Elias

  • ForestPrune: Compact Depth-Pruned Tree Ensembles
    Liu, Brian; Mazumder, Rahul

  • Instance-dependent Bounds for Zero-sum Matrix Games
    Maiti, Arnab; Jamieson, Kevin; Ratliff, Lillian

  • Multiple-policy High-confidence Policy Evaluation
    Dann, Chris; Ghavamzadeh, Mohammad; Marinov, Teodor Vanislavov

  • Scalable Probabilistic and Causal Inference using Tractable Circuit Models
    Wang, Benjie; Kwiatkowska, Marta

  • Improved Approximation for Fair Correlation Clustering
    Ahmadian, Sara; Negahbani, Maryam

  • Scalable Bicriteria Algorithms for Non-Monotone Submodular Cover
    Crawford, Victoria

  • Diffusion Generative Models in Infinite Dimensions
    Kerrigan, Gavin; Ley, Justin S; Smyth, Padhraic

  • MMD-B-Fair: Learning Fair Representations with Statistical Testing
    Deka, Namrata; Sutherland, Danica J.

  • Domain Adaptation under Missingness Shift---Tackling Underreporting
    Zhou, Helen; Balakrishnan, Sivaraman; Lipton, Zachary

  • Nash Equilibria and Pitfalls of Adversarial Training in Adversarial Robustness Games
    Balcan, Maria-Florina; Pukdee, Rattana; Ravikumar, Pradeep ; Zhang, Hongyang

  • Adapting to Latent Subgroup Shifts via Concepts and Proxies
    Alabdulmohsin, Ibrahim; Chiou, Nicole; D'Amour, Alexander; Gretton, Arthur; Koyejo, Sanmi; Kusner, Matt J; Pfohl, Stephen R; Salaudeen, Olawale; Schrouff, Jessica; Tsai, Katherine

  • Huber-robust confidence sequences
    Wang, Hongjian; Ramdas, Aaditya

  • On the Privacy Risks of Algorithmic Recourse
    Pawelczyk, Martin; Lakkaraju, Himabindu; Neel, Seth

  • Reducing Discretization Error in the Frank-Wolfe Method
    Chen, Zhaoyue; Sun, Yifan

  • Improved Sample Complexity Bounds for Distributionally Robust Reinforcement Learning
    Xu, Zaiyan; Panaganti, Kishan; Kalathil, Dileep

  • Factorial SDE for Multi-Output Gaussian Process Regression
    Jeong, Daniel P; Kim, Seyoung

  • Interactive Learning with Pricing for Optimal and Stable Allocations in Markets
    Erginbas, Yigit Efe; Phade, Soham; Ramchandran, Kannan

  • Learning to Generalize Provably in Learning to Optimize
    Yang, Junjie; Chen, Tianlong; Zhu, Mingkang; He, Fengxiang; Tao, Dacheng; Liang, Yingbin; Wang, Zhangyang

  • Theory and Algorithm for Batch Distribution Drift Problems
    Awasthi, Pranjal; Cortes, Corinna; Mohri, Christopher

  • On The Convergence Of Policy Iteration-Based Reinforcement Learning With Monte Carlo Policy Evaluation
    Winnicki, Anna; Srikant, R

  • Precision/Recall on Imbalanced Test Data
    Shang, Hongwei; Langlois, Jean-Marc; Tsioutsiouliklis, Kostas; Kang, Changsung

  • Iterative Teaching by Data Hallucination
    Qiu, Zeju; Liu, Weiyang; Xiao, Tim Z; Liu, Zhen; Bhatt, Umang; Luo, Yucen; Weller, Adrian; Schölkopf, Bernhard

  • Near-Optimal Differentially Private Reinforcement Learning
    Qiao, Dan; Wang, Yu-Xiang

  • Doubly Fair Dynamic Pricing
    Xu, Jianyu; Qiao, Dan; Wang, Yu-Xiang

  • Hedging against Complexity: Distributionally Robust Optimization with Parametric Approximation
    Iyengar, Garud; Lam, Henry; Wang, Tianyu

  • Probabilities of Causation: Role of Observational Data
    Li, Ang; Pearl, Judea

  • Influence Diagnostics under Self-concordance
    Fisher, Jillian R; Liu, Lang; Pillutla, Krishna; Choi, Yejin; Harchaoui, Zaid

  • Theoretically Grounded Loss Functions and Algorithms for Adversarial Robustness
    Awasthi, Pranjal; Mao, Anqi; Mohri, Mehryar; Zhong, Yutao

  • Large deviations rates for stochastic gradient descent with strongly convex functions
    Bajovic, Dragana; Jakovetic, Dusan; Kar, Soummya

  • Stochastic Optimization for Spectral Risk Measures
    Mehta, Ronak; Liu, Lang; Pillutla, Krishna; Roulet, Vincent; Harchaoui, Zaid

  • Improving adaptive conformal prediction using self-supervised learning
    Seedat, Nabeel; Jeffares, Alan; Imrie, Fergus; van der Schaar, Mihaela

  • Oracle-free Reinforcement Learning in Mean-Field Games along a Single Sample Path
    ZAMAN, MUHAMMAD ANEEQ UZ; Koppel, Alec; Bhatt, Sujay; Basar, Tamer

  • Sparsity-Inducing Categorical Prior Improves Robustness of the Information Bottleneck
    Samaddar, Anirban; Madireddy, Sandeep; Balaprakash, Prasanna; Maiti, Taps; de los Campos, Gustavo; Fischer, Ian

  • Ideal Abstractions for Decision-Focused Learning
    Poli, Michael; Massaroli, Stefano; Ermon, Stefano ; Wilder, Bryan; Horvitz, Eric

  • Probabilistic Querying of Continuous-Time Event Sequences
    Boyd, Alex J; Chang, Yuxin; Mandt, Stephan; Smyth, Padhraic

  • Semantic Strengthening of Neuro-Symbolic Learning
    Ahmed, Kareem; Chang, Kai-Wei; Van den Broeck, Guy

  • Fast Variational Estimation of Mutual Information for Implicit and Explicit Likelihood Models
    Dahlke, Caleb; Zheng, Sue; Pacheco, Jason

  • SurvivalGAN: Generating time-to-event Data for Survival Analysis
    Norcliffe, Alexander LI; Cebere, Bogdan C; Imrie, Fergus; Lió, Pietro; van der Schaar, Mihaela

  • A Conditional Gradient-based Method for Simple Bilevel Optimization with Convex Lower-level Problem
    Jiang, Ruichen; Abolfazli, Nazanin; Mokhtari, Aryan; Yazdandoost Hamedani, Erfan

  • Stochastic Methods for AUC Optimization subject to AUC-based Fairness Constraints
    Yao, Yao; Lin, Qihang; Yang, Tianbao

  • DIET: Conditional independence testing with marginal dependence measures of residual information
    Sudarshan, Mukund; Puli, Aahlad; Tansey, Wesley; Ranganath, Rajesh

  • Algorithm-Dependent Bounds for Representation Learning of Multi-Source Domain Adaptation
    CHEN, QI; Marchand, Mario

  • Actually Sparse Variational Gaussian Processes
    Cunningham, Harry J; de Souza, Daniel A; Takao, So; van der Wilk, Mark; Deisenroth, Marc

  • Competing against Adaptive Strategies in Online Learning via Hints
    Bhaskara, Aditya; Munagala, Kamesh

  • ProbNeRF: Uncertainty-Aware Inference of 3D Shapes from 2D Images
    Hoffman, Matthew D; Sountsov, Pavel; Le, Tuan Anh; Lee, Ben; Suter, Christopher; Mansinghka, Vikash; A. Saurous, Rif

  • Minimum-Entropy Coupling Approximation Guarantees Beyond the Majorization Barrier
    Compton, Spencer; Katz, Dmitriy A; Qi, Benjamin; Greenewald, Kristjan; Kocaoglu, Murat

  • Automatic Attention Pruning: Improving and Automating Model Pruning using Attentions
    zhao, kaiqi; Jain, Animesh; Zhao, Ming

  • Sample Complexity of Distinguishing Cause from Effect
    Acharya, Jayadev; Bhadane, Sourbh; Bhattacharyya, Arnab; Kandasamy, Saravanan; Sun, Ziteng

  • Graph Spectral Embedding using the Geodesic Betweenness Centrality
    Deutsch, Shay; Soatto, Stefano

  • Who Should Predict? Exact Algorithms For Learning to Defer to Humans
    Mozannar, Hussein; Lang, Hunter; Wei, Dennis; Sattigeri, Prasanna; Das, Subhro; Sontag, David

  • Score-based Change Point Detection for Unnormalized Models
    Wu, Suya; Diao, Enmao; Banerjee, Taposh; Ding, Jie; Tarokh, Vahid

  • Dropout-Resilient Secure Multi-Party Collaborative Learning with Linear Communication Complexity
    Lu, Xingyu XL; Sami, Hasin Us; Guler, Basak

  • Reinforcement Learning with Step-wise Fairness Constraints
    Deng, Zhun; Sun, He; Wu, Steven; Zhang, Linjun; Parkes, David

  • Implicit Graphon Neural Representation
    Xia, Xinyue; Mishne, Gal; Wang, Yusu

  • Fitting low-rank models on egocentrically sampled partial networks
    Chan, Ga Ming Angus; Li, Tianxi

  • Federated Asymptotics: a model to compare federated learning algorithms
    Cheng, Gary; Chadha, Karan; Duchi, John

  • Conformalized Unconditional Quantile Regression
    Alaa, Ahmed; Hussain, Zeshan M; Sontag, David

  • Wasserstein Distributional Learning via Majorization-Minimization
    Tang, Chengliang; Lenssen, Nathan; Wei, Ying; Zheng, Tian

  • HeteRSGD: Tackling Heterogeneous Sampling Costs via Optimal Reweighted Stochastic Gradient Descent
    Chen, Ziang; Lu, Jianfeng; Qian, Huajie; Wang, XInshang; Yin, Wotao

  • Ultra-marginal Feature Importance: Learning from Data with Causal Guarantees
    Janssen, Joseph; Guan, Vincent; Robeva, Elina

  • On the Implicit Geometry of Cross-Entropy Parameterizations for Label-Imbalanced Data
    Behnia, Tina; Kini, Ganesh Ramachandra; Vakilian, Vala; Thrampoulidis, Christos

  • Convolutional Persistence as a Remedy to Neural Model Analysis
    Khramtsova, Ekaterina; Zuccon, Guido; Wang, Xi; Baktashmotlagh, Mahsa

  • Uniformly Conservative Exploration in Reinforcement Learning
    Xu, Wanqiao; Ma, Yecheng; Xu, Kan; Bastani, Hamsa; Bastani, Osbert

  • Provable Safe Reinforcement Learning with Binary Feedback
    Bennett, Andrew; Misra, Dipendra; Kallus, Nathan

  • Balanced Off-Policy Evaluation for Personalized Pricing
    Elmachtoub, Adam; Gupta, Vishal; ZHAO, YUNFAN

  • Provable Hierarchy-Based Meta-Reinforcement Learning
    Chua, Kurtland; Lei, Qi; Lee, Jason

  • A Blessing of Dimensionality in Membership Inference through Regularization
    Tan, Jasper T; LeJeune, Daniel; Mason, Blake; Javadi, Hamid; Baraniuk, Richard

  • Posterior Tracking Algorithm for Classification Bandits
    Tabata, Koji; Komiyama, Junpei; Nakamura, Atsuyoshi; Komatsuzaki, Tamiki

  • The Power of Recursion in Graph Neural Networks for Counting Substructures
    Tahmasebi, Behrooz; Lim, Derek; Jegelka, Stefanie

  • Mixtures of All Trees
    Selvam, Nikil R; Zhang, Honghua; Van den Broeck, Guy

  • Improving Adversarial Robustness via Joint Classification and Multiple Explicit Detection Classes
    Baharlouei, Sina; Sheikholeslami, Fatemeh; Razaviyayn, Meisam; Kolter, Zico

  • Performative Prediction with Neural Networks
    Mofakhami, Mehrnaz; Mitliagkas, Ioannis; Gidel, Gauthier

  • Benign overfitting of non-smooth neural networks beyond lazy training
    Xu, Xingyu; Gu, Yuantao

  • A New Modeling Framework for Continuous, Sequential Domains
    Dong, Hailiang; Amato, James C; Gogate, Vibhav; Ruozzi, Nicholas

  • TS-UCB: Improving on Thompson Sampling With Little to No Additional Computation
    Baek, Jackie; Farias, Vivek

  • Reward Learning as Doubly Nonparametric Bandits: Optimal Design and Scaling Laws
    Bhatia, Kush; Guo, Wenshuo; Steinhardt, Jacob

  • Approximate Regions of Attraction in Learning with Decision-Dependent Distributions
    Dong, Roy; Ratliff, Lillian ; Zhang, Heling

  • Randomized Primal-Dual Methods with Line-Search for Saddle Point Problems
    Yazdandoost Hamedani, Erfan; Jalilzadeh, Afrooz; Aybat, Necdet Serhat

  • Spectral Augmentations for Graph Contrastive Learning
    Ghose, Amur; Zhang, Yingxue; Hao, Jianye; Coates, Mark

  • Deep Value Function Networks for Large-Scale Multistage Stochastic Programming Problems
    Bae, Hyunglip; Lee, Jinkyu; Kim, Woo Chang; Lee, Yongjae

  • Optimal Sketching Bounds for Sparse Linear Regression
    Mai, Tung; Munteanu, Alexander; Musco, Cameron; Rao, Anup; Schwiegelshohn, Chris; Woodruff, David

  • Average case analysis of Lasso under ultra sparse conditions
    Okajima, Koki; Meng, Xiangming; Takahashi, Takashi; Kabashima, Yoshiyuki

  • Uncertainty Estimates of Predictions via a General Bias-Variance Decomposition
    Gruber, Sebastian; Buettner, Florian

  • Collision Probability Matching Loss for Disentangling Epistemic Uncertainty from Aleatoric Uncertainty
    Narimatsu, Hiromi; Ozawa, Mayuko; Kumano, Shiro

  • Random Features Model with General Convex Regularization: A Fine Grained Analysis with Precise Asymptotic Learning Curves
    Bosch, David; Panahi, Ashkan; Ozcelikkale, Ayca; Dubhashi, Devdatt

  • Learning to Defer to Multiple Experts: Consistent Surrogate Losses, Confidence Calibration, and Conformal Ensembles
    Verma, Rajeev; Barrejon, Daniel; Nalisnick, Eric

  • Spread Flows for Manifold Modelling
    Zhang, Mingtian; Sun, Yitong; Zhang, Chen; McDonagh, Steven

  • Breaking a Classical Barrier for Classifying Arbitrary Test Examples in the Quantum Model
    Gluch, Grzegorz; Barooti, Khashayar; Urbanke, Rüdiger

  • Characterizing Polarization in Social Networks using the Signed Relational Latent Distance Model
    Nakis, Nikolaos; Celikkanat, Abdulkadir; Boucherie, Louis; Djurhuus, Christian V; Burmester, Felix B; Mathias Holmelund, Daniel ; Frolcová, Monika; Mørup, Morten

  • Algorithm for Constrained Markov Decision Process with Linear Convergence
    Gladin, Egor; Lavrik-Karmazin, Maksim ; Zainullina, Karina; Rudenko, Varvara; Gasnikov, Alexander; Takac, Martin

  • Inducing Neural Collapse in Deep Long-tailed Learning
    LIU, Xuantong; Zhang, Jianfeng; Hu, Tianyang; CAO, He; Yao, Yuan; Pan, Lujia

  • Encoding Domain Knowledge in Multi-view Latent Variable Models: A Bayesian Approach with Structured Sparsity
    Qoku, Arber; Buettner, Florian

  • Regression as Classification: Influence of Task Formulation on Neural Network Features
    Stewart, Lawrence; Bach, Francis; Berthet, Quentin; Vert, Jean-Philippe

  • Robust Linear Regression: Gradient-descent, Early-stopping, and Beyond
    Scetbon, Meyer; Dohmatob, Elvis

  • Using Sliced Mutual Information to Study Memorization and Generalization in Deep Neural Networks
    Wongso, Shelvia; Ghosh, Rohan; Motani, Mehul

  • Probing Graph Representations
    Akhondzadeh, Mohammad Sadegh; Lingam, Vijay; Bojchevski, Aleksandar

  • Efficient SAGE Estimation via Causal Structure Learning
    Luther, Christoph; König, Gunnar; Grosse-Wentrup, Moritz

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