JMLR Volume 21
- A Low Complexity Algorithm with O(√T) Regret and O(1) Constraint Violations for Online Convex Optimization with Long Term Constraints
- Hao Yu, Michael J. Neely; (1):1−24, 2020.
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- A Statistical Learning Approach to Modal Regression
- Yunlong Feng, Jun Fan, Johan A.K. Suykens; (2):1−35, 2020.
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- A Model of Fake Data in Data-driven Analysis
- Xiaofan Li, Andrew B. Whinston; (3):1−26, 2020.
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- Universal Latent Space Model Fitting for Large Networks with Edge Covariates
- Zhuang Ma, Zongming Ma, Hongsong Yuan; (4):1−67, 2020.
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- Lower Bounds for Parallel and Randomized Convex Optimization
- Jelena Diakonikolas, Cristóbal Guzmán; (5):1−31, 2020.
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- Path-Based Spectral Clustering: Guarantees, Robustness to Outliers, and Fast Algorithms
- Anna Little, Mauro Maggioni, James M. Murphy; (6):1−66, 2020.
[abs][pdf][bib] [code]
- Target Propagation in Recurrent Neural Networks
- Nikolay Manchev, Michael Spratling; (7):1−33, 2020.
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- DESlib: A Dynamic ensemble selection library in Python
- Rafael M. O. Cruz, Luiz G. Hafemann, Robert Sabourin, George D. C. Cavalcanti; (8):1−5, 2020.
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- On Mahalanobis Distance in Functional Settings
- José R. Berrendero, Beatriz Bueno-Larraz, Antonio Cuevas; (9):1−33, 2020.
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- Online Sufficient Dimension Reduction Through Sliced Inverse Regression
- Zhanrui Cai, Runze Li, Liping Zhu; (10):1−25, 2020.
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- Weighted Message Passing and Minimum Energy Flow for Heterogeneous Stochastic Block Models with Side Information
- T. Tony Cai, Tengyuan Liang, Alexander Rakhlin; (11):1−34, 2020.
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- Neyman-Pearson classification: parametrics and sample size requirement
- Xin Tong, Lucy Xia, Jiacheng Wang, Yang Feng; (12):1−48, 2020.
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- Generalized probabilistic principal component analysis of correlated data
- Mengyang Gu, Weining Shen; (13):1−41, 2020.
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- On lp-Support Vector Machines and Multidimensional Kernels
- Victor Blanco, Justo Puerto, Antonio M. Rodriguez-Chia; (14):1−29, 2020.
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- Perturbation Bounds for Procrustes, Classical Scaling, and Trilateration, with Applications to Manifold Learning
- Ery Arias-Castro, Adel Javanmard, Bruno Pelletier; (15):1−37, 2020.
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- Practical Locally Private Heavy Hitters
- Raef Bassily, Kobbi Nissim, Uri Stemmer, Abhradeep Thakurta; (16):1−42, 2020.
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- Expectation Propagation as a Way of Life: A Framework for Bayesian Inference on Partitioned Data
- Aki Vehtari, Andrew Gelman, Tuomas Sivula, Pasi Jylänki, Dustin Tran, Swupnil Sahai, Paul Blomstedt, John P. Cunningham, David Schiminovich, Christian P. Robert; (17):1−53, 2020.
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- Connecting Spectral Clustering to Maximum Margins and Level Sets
- David P. Hofmeyr; (18):1−35, 2020.
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- High-Dimensional Interactions Detection with Sparse Principal Hessian Matrix
- Cheng Yong Tang, Ethan X. Fang, Yuexiao Dong; (19):1−25, 2020.
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- Convergences of Regularized Algorithms and Stochastic Gradient Methods with Random Projections
- Junhong Lin, Volkan Cevher; (20):1−44, 2020.
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- Derivative-Free Methods for Policy Optimization: Guarantees for Linear Quadratic Systems
- Dhruv Malik, Ashwin Pananjady, Kush Bhatia, Koulik Khamaru, Peter L. Bartlett, Martin J. Wainwright; (21):1−51, 2020.
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- A Unified Framework for Structured Graph Learning via Spectral Constraints
- Sandeep Kumar, Jiaxi Ying, José Vinícius de M. Cardoso, Daniel P. Palomar; (22):1−60, 2020.
[abs][pdf][bib] [code]
- GluonCV and GluonNLP: Deep Learning in Computer Vision and Natural Language Processing
- Jian Guo, He He, Tong He, Leonard Lausen, Mu Li, Haibin Lin, Xingjian Shi, Chenguang Wang, Junyuan Xie, Sheng Zha, Aston Zhang, Hang Zhang, Zhi Zhang, Zhongyue Zhang, Shuai Zheng, Yi Zhu; (23):1−7, 2020.
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- Distributed Feature Screening via Componentwise Debiasing
- Xingxiang Li, Runze Li, Zhiming Xia, Chen Xu; (24):1−32, 2020.
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- Lower Bounds for Testing Graphical Models: Colorings and Antiferromagnetic Ising Models
- Ivona Bezáková, Antonio Blanca, Zongchen Chen, Daniel Štefankovič, Eric Vigoda; (25):1−62, 2020.
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- Targeted Fused Ridge Estimation of Inverse Covariance Matrices from Multiple High-Dimensional Data Classes
- Anders Ellern Bilgrau, Carel F.W. Peeters, Poul Svante Eriksen, Martin Boegsted, Wessel N. van Wieringen; (26):1−52, 2020.
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- A New Class of Time Dependent Latent Factor Models with Applications
- Sinead A. Williamson, Michael Minyi Zhang, Paul Damien; (27):1−24, 2020.
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- On the consistency of graph-based Bayesian semi-supervised learning and the scalability of sampling algorithms
- Nicolas Garcia Trillos, Zachary Kaplan, Thabo Samakhoana, Daniel Sanz-Alonso; (28):1−47, 2020.
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- The Maximum Separation Subspace in Sufficient Dimension Reduction with Categorical Response
- Xin Zhang, Qing Mai, Hui Zou; (29):1−36, 2020.
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- Tensor Train Decomposition on TensorFlow (T3F)
- Alexander Novikov, Pavel Izmailov, Valentin Khrulkov, Michael Figurnov, Ivan Oseledets; (30):1−7, 2020. (Machine Learning Open Source Software Paper)
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- Generalized Nonbacktracking Bounds on the Influence
- Emmanuel Abbe, Sanjeev Kulkarni, Eun Jee Lee; (31):1−36, 2020.
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- Provably robust estimation of modulo 1 samples of a smooth function with applications to phase unwrapping
- Mihai Cucuringu, Hemant Tyagi; (32):1−77, 2020.
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- On the Complexity Analysis of the Primal Solutions for the Accelerated Randomized Dual Coordinate Ascent
- Huan Li, Zhouchen Lin; (33):1−45, 2020.
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- Graph-Dependent Implicit Regularisation for Distributed Stochastic Subgradient Descent
- Dominic Richards, Patrick Rebeschini; (34):1−44, 2020.
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- Learning with Fenchel-Young losses
- Mathieu Blondel, André F.T. Martins, Vlad Niculae; (35):1−69, 2020.
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- Noise Accumulation in High Dimensional Classification and Total Signal Index
- Miriam R. Elman, Jessica Minnier, Xiaohui Chang, Dongseok Choi; (36):1−23, 2020.
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- Causal Discovery Toolbox: Uncovering causal relationships in Python
- Diviyan Kalainathan, Olivier Goudet, Ritik Dutta; (37):1−5, 2020.
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- Latent Simplex Position Model: High Dimensional Multi-view Clustering with Uncertainty Quantification
- Leo L. Duan; (38):1−25, 2020.
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- Learning Linear Non-Gaussian Causal Models in the Presence of Latent Variables
- Saber Salehkaleybar, AmirEmad Ghassami, Negar Kiyavash, Kun Zhang; (39):1−24, 2020.
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- Switching Regression Models and Causal Inference in the Presence of Discrete Latent Variables
- Rune Christiansen, Jonas Peters; (41):1−46, 2020.
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- Branch and Bound for Piecewise Linear Neural Network Verification
- Rudy Bunel, Jingyue Lu, Ilker Turkaslan, Philip H.S. Torr, Pushmeet Kohli, M. Pawan Kumar; (42):1−39, 2020.
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- Greedy Attack and Gumbel Attack: Generating Adversarial Examples for Discrete Data
- Puyudi Yang, Jianbo Chen, Cho-Jui Hsieh, Jane-Ling Wang, Michael I. Jordan; (43):1−36, 2020.
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- A Convex Parametrization of a New Class of Universal Kernel Functions
- Brendon K. Colbert, Matthew M. Peet; (45):1−29, 2020.
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- pyts: A Python Package for Time Series Classification
- Johann Faouzi, Hicham Janati; (46):1−6, 2020. (Machine Learning Open Source Software Paper)
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- Ancestral Gumbel-Top-k Sampling for Sampling Without Replacement
- Wouter Kool, Herke van Hoof, Max Welling; (47):1−36, 2020.
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- Skill Rating for Multiplayer Games. Introducing Hypernode Graphs and their Spectral Theory
- Thomas Ricatte, Rémi Gilleron, Marc Tommasi; (48):1−18, 2020.
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- Ensemble Learning for Relational Data
- Hoda Eldardiry, Jennifer Neville, Ryan A. Rossi; (49):1−37, 2020.
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- Sparse and low-rank multivariate Hawkes processes
- Emmanuel Bacry, Martin Bompaire, Stéphane Gaïffas, Jean-Francois Muzy; (50):1−32, 2020.
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- Learning Causal Networks via Additive Faithfulness
- Kuang-Yao Lee, Tianqi Liu, Bing Li, Hongyu Zhao; (51):1−38, 2020.
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- Expected Policy Gradients for Reinforcement Learning
- Kamil Ciosek, Shimon Whiteson; (52):1−51, 2020.
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- High-Dimensional Inference for Cluster-Based Graphical Models
- Carson Eisenach, Florentina Bunea, Yang Ning, Claudiu Dinicu; (53):1−55, 2020.
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- GraKeL: A Graph Kernel Library in Python
- Giannis Siglidis, Giannis Nikolentzos, Stratis Limnios, Christos Giatsidis, Konstantinos Skianis, Michalis Vazirgiannis; (54):1−5, 2020. (Machine Learning Open Source Software Paper)
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- Conjugate Gradients for Kernel Machines
- Simon Bartels, Philipp Hennig; (55):1−42, 2020.
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- Fast Rates for General Unbounded Loss Functions: From ERM to Generalized Bayes
- Peter D. Grünwald, Nishant A. Mehta; (56):1−80, 2020.
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- Self-paced Multi-view Co-training
- Fan Ma, Deyu Meng, Xuanyi Dong, Yi Yang; (57):1−38, 2020.
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- Robust Asynchronous Stochastic Gradient-Push: Asymptotically Optimal and Network-Independent Performance for Strongly Convex Functions
- Artin Spiridonoff, Alex Olshevsky, Ioannis Ch. Paschalidis; (58):1−47, 2020.
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- Exact Guarantees on the Absence of Spurious Local Minima for Non-negative Rank-1 Robust Principal Component Analysis
- Salar Fattahi, Somayeh Sojoudi; (59):1−51, 2020.
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- Kymatio: Scattering Transforms in Python
- Mathieu Andreux, Tomás Angles, Georgios Exarchakis, Roberto Leonarduzzi, Gaspar Rochette, Louis Thiry, John Zarka, Stéphane Mallat, Joakim Andén, Eugene Belilovsky, Joan Bruna, Vincent Lostanlen, Muawiz Chaudhary, Matthew J. Hirn, Edouard Oyallon, Sixin Zhang, Carmine Cella, Michael Eickenberg; (60):1−6, 2020. (Machine Learning Open Source Software Paper)
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- Generalized Optimal Matching Methods for Causal Inference
- Nathan Kallus; (62):1−54, 2020.
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- Unique Sharp Local Minimum in L1-minimization Complete Dictionary Learning
- Yu Wang, Siqi Wu, Bin Yu; (63):1−52, 2020.
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- Community-Based Group Graphical Lasso
- Eugen Pircalabelu, Gerda Claeskens; (64):1−32, 2020.
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- Smoothed Nonparametric Derivative Estimation using Weighted Difference Quotients
- Yu Liu, Kris De Brabanter; (65):1−45, 2020.
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- WONDER: Weighted One-shot Distributed Ridge Regression in High Dimensions
- Edgar Dobriban, Yue Sheng; (66):1−52, 2020.
[abs][pdf][bib] [code]
- The weight function in the subtree kernel is decisive
- Romain Azaïs, Florian Ingels; (67):1−36, 2020.
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- On Stationary-Point Hitting Time and Ergodicity of Stochastic Gradient Langevin Dynamics
- Xi Chen, Simon S. Du, Xin T. Tong; (68):1−41, 2020.
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- Union of Low-Rank Tensor Spaces: Clustering and Completion
- Morteza Ashraphijuo, Xiaodong Wang; (69):1−36, 2020.
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- Representation Learning for Dynamic Graphs: A Survey
- Seyed Mehran Kazemi, Rishab Goel, Kshitij Jain, Ivan Kobyzev, Akshay Sethi, Peter Forsyth, Pascal Poupart; (70):1−73, 2020.
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- Estimation of a Low-rank Topic-Based Model for Information Cascades
- Ming Yu, Varun Gupta, Mladen Kolar; (71):1−47, 2020.
[abs][pdf][bib] [code]
- (1 + epsilon)-class Classification: an Anomaly Detection Method for Highly Imbalanced or Incomplete Data Sets
- Maxim Borisyak, Artem Ryzhikov, Andrey Ustyuzhanin, Denis Derkach, Fedor Ratnikov, Olga Mineeva; (72):1−22, 2020.
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- Scalable Approximate MCMC Algorithms for the Horseshoe Prior
- James Johndrow, Paulo Orenstein, Anirban Bhattacharya; (73):1−61, 2020.
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- High-dimensional Gaussian graphical models on network-linked data
- Tianxi Li, Cheng Qian, Elizaveta Levina, Ji Zhu; (74):1−45, 2020.
[abs][pdf][bib] [code]
- Identifiability of Additive Noise Models Using Conditional Variances
- Gunwoong Park; (75):1−34, 2020.
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- GADMM: Fast and Communication Efficient Framework for Distributed Machine Learning
- Anis Elgabli, Jihong Park, Amrit S. Bedi, Mehdi Bennis, Vaneet Aggarwal; (76):1−39, 2020.
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- Multi-Player Bandits: The Adversarial Case
- Pragnya Alatur, Kfir Y. Levy, Andreas Krause; (77):1−23, 2020.
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- Harmless Overfitting: Using Denoising Autoencoders in Estimation of Distribution Algorithms
- Malte Probst, Franz Rothlauf; (78):1−31, 2020.
[abs][pdf][bib] [code]
- Quantile Graphical Models: a Bayesian Approach
- Nilabja Guha, Veera Baladandayuthapani, Bani K. Mallick; (79):1−47, 2020.
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- Memoryless Sequences for General Losses
- Rafael Frongillo, Andrew Nobel; (80):1−28, 2020.
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- Tuning Hyperparameters without Grad Students: Scalable and Robust Bayesian Optimisation with Dragonfly
- Kirthevasan Kandasamy, Karun Raju Vysyaraju, Willie Neiswanger, Biswajit Paria, Christopher R. Collins, Jeff Schneider, Barnabas Poczos, Eric P. Xing; (81):1−27, 2020.
[abs][pdf][bib] [code]
- Sequential change-point detection in high-dimensional Gaussian graphical models
- Hossein Keshavarz, George Michaildiis, Yves Atchade; (82):1−57, 2020.
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- Discerning the Linear Convergence of ADMM for Structured Convex Optimization through the Lens of Variational Analysis
- Xiaoming Yuan, Shangzhi Zeng, Jin Zhang; (83):1−75, 2020.
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- Model-Preserving Sensitivity Analysis for Families of Gaussian Distributions
- Christiane Görgen, Manuele Leonelli; (84):1−32, 2020.
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- Effective Ways to Build and Evaluate Individual Survival Distributions
- Humza Haider, Bret Hoehn, Sarah Davis, Russell Greiner; (85):1−63, 2020.
[abs][pdf][bib] [code]
- Convergence Rate of Optimal Quantization and Application to the Clustering Performance of the Empirical Measure
- Yating Liu, Gilles Pagès; (86):1−36, 2020.
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- Constrained Dynamic Programming and Supervised Penalty Learning Algorithms for Peak Detection in Genomic Data
- Toby Dylan Hocking, Guillem Rigaill, Paul Fearnhead, Guillaume Bourque; (87):1−40, 2020.
[abs][pdf][bib] [code]
- Target–Aware Bayesian Inference: How to Beat Optimal Conventional Estimators
- Tom Rainforth, Adam Golinski, Frank Wood, Sheheryar Zaidi; (88):1−54, 2020.
[abs][pdf][bib] [code]
- Causal Discovery from Heterogeneous/Nonstationary Data
- Biwei Huang, Kun Zhang, Jiji Zhang, Joseph Ramsey, Ruben Sanchez-Romero, Clark Glymour, Bernhard Schölkopf; (89):1−53, 2020.
[abs][pdf][bib] [code]
- Probabilistic Symmetries and Invariant Neural Networks
- Benjamin Bloem-Reddy, Yee Whye Teh; (90):1−61, 2020.
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- Simultaneous Inference for Pairwise Graphical Models with Generalized Score Matching
- Ming Yu, Varun Gupta, Mladen Kolar; (91):1−51, 2020.
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- Fast mixing of Metropolized Hamiltonian Monte Carlo: Benefits of multi-step gradients
- Yuansi Chen, Raaz Dwivedi, Martin J. Wainwright, Bin Yu; (92):1−72, 2020.
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- Distributed Kernel Ridge Regression with Communications
- Shao-Bo Lin, Di Wang, Ding-Xuan Zhou; (93):1−38, 2020.
[abs][pdf][bib] [code]
- Minimax Nonparametric Parallelism Test
- Xin Xing, Meimei Liu, Ping Ma, Wenxuan Zhong; (94):1−47, 2020.
[abs][pdf][bib] [code]
- Cornac: A Comparative Framework for Multimodal Recommender Systems
- Aghiles Salah, Quoc-Tuan Truong, Hady W. Lauw; (95):1−5, 2020. (Machine Learning Open Source Software Paper)
[abs][pdf][bib] [code]
- pyDML: A Python Library for Distance Metric Learning
- Juan Luis Suárez, Salvador García, Francisco Herrera; (96):1−7, 2020. (Machine Learning Open Source Software Paper)
[abs][pdf][bib] [code]
- Loss Control with Rank-one Covariance Estimate for Short-term Portfolio Optimization
- Zhao-Rong Lai, Liming Tan, Xiaotian Wu, Liangda Fang; (97):1−37, 2020.
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- A General Framework for Consistent Structured Prediction with Implicit Loss Embeddings
- Carlo Ciliberto, Lorenzo Rosasco, Alessandro Rudi; (98):1−67, 2020.
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- Joint Causal Inference from Multiple Contexts
- Joris M. Mooij, Sara Magliacane, Tom Claassen; (99):1−108, 2020.
[abs][pdf][bib] [code]
- General Latent Feature Models for Heterogeneous Datasets
- Isabel Valera, Melanie F. Pradier, Maria Lomeli, Zoubin Ghahramani; (100):1−49, 2020.
[abs][pdf][bib] [code]
- Regularized Gaussian Belief Propagation with Nodes of Arbitrary Size
- Francois Kamper, Sarel J. Steel, Johan A. du Preez; (101):1−42, 2020.
[abs][pdf][bib]
- AI-Toolbox: A C++ library for Reinforcement Learning and Planning (with Python Bindings)
- Eugenio Bargiacchi, Diederik M. Roijers, Ann Nowé; (102):1−12, 2020. (Machine Learning Open Source Software Paper)
[abs][pdf][bib] [code]
- Stochastic Nested Variance Reduction for Nonconvex Optimization
- Dongruo Zhou, Pan Xu, Quanquan Gu; (103):1−63, 2020.
[abs][pdf][bib]
- Sparse Projection Oblique Randomer Forests
- Tyler M. Tomita, James Browne, Cencheng Shen, Jaewon Chung, Jesse L. Patsolic, Benjamin Falk, Carey E. Priebe, Jason Yim, Randal Burns, Mauro Maggioni, Joshua T. Vogelstein; (104):1−39, 2020.
[abs][pdf][bib] [code]
- Stochastic Conditional Gradient Methods: From Convex Minimization to Submodular Maximization
- Aryan Mokhtari, Hamed Hassani, Amin Karbasi; (105):1−49, 2020.
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- Quadratic Decomposable Submodular Function Minimization: Theory and Practice
- Pan Li, Niao He, Olgica Milenkovic; (106):1−49, 2020.
[abs][pdf][bib] [code]
- Change Point Estimation in a Dynamic Stochastic Block Model
- Monika Bhattacharjee, Moulinath Banerjee, George Michailidis; (107):1−59, 2020.
[abs][pdf][bib]
- ThunderGBM: Fast GBDTs and Random Forests on GPUs
- Zeyi Wen, Hanfeng Liu, Jiashuai Shi, Qinbin Li, Bingsheng He, Jian Chen; (108):1−5, 2020. (Machine Learning Open Source Software Paper)
[abs][pdf][bib] [code]
- Bayesian Model Selection with Graph Structured Sparsity
- Youngseok Kim, Chao Gao; (109):1−61, 2020.
[abs][pdf][bib]
- ProxSARAH: An Efficient Algorithmic Framework for Stochastic Composite Nonconvex Optimization
- Nhan H. Pham, Lam M. Nguyen, Dzung T. Phan, Quoc Tran-Dinh; (110):1−48, 2020.
[abs][pdf][bib] [code]
- MFE: Towards reproducible meta-feature extraction
- Edesio Alcobaça, Felipe Siqueira, Adriano Rivolli, Luís P. F. Garcia, Jefferson T. Oliva, André C. P. L. F. de Carvalho; (111):1−5, 2020. (Machine Learning Open Source Software Paper)
[abs][pdf][bib] [code]
- High-dimensional Linear Discriminant Analysis Classifier for Spiked Covariance Model
- Houssem Sifaou, Abla Kammoun, Mohamed-Slim Alouini; (112):1−24, 2020.
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- Prediction regions through Inverse Regression
- Emilie Devijver, Emeline Perthame; (113):1−24, 2020.
[abs][pdf][bib] [code]
- NEVAE: A Deep Generative Model for Molecular Graphs
- Bidisha Samanta, Abir De, Gourhari Jana, Vicenç Gómez, Pratim Chattaraj, Niloy Ganguly, Manuel Gomez-Rodriguez; (114):1−33, 2020.
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- Identifiability and Consistent Estimation of Nonparametric Translation Hidden Markov Models with General State Space
- Elisabeth Gassiat, Sylvain Le Corff, Luc Lehéricy; (115):1−40, 2020.
[abs][pdf][bib]
- GluonTS: Probabilistic and Neural Time Series Modeling in Python
- Alexander Alexandrov, Konstantinos Benidis, Michael Bohlke-Schneider, Valentin Flunkert, Jan Gasthaus, Tim Januschowski, Danielle C. Maddix, Syama Rangapuram, David Salinas, Jasper Schulz, Lorenzo Stella, Ali Caner Türkmen, Yuyang Wang; (116):1−6, 2020. (Machine Learning Open Source Software Paper)
[abs][pdf][bib] [code]
- Regularized Estimation of High-dimensional Factor-Augmented Vector Autoregressive (FAVAR) Models
- Jiahe Lin, George Michailidis; (117):1−51, 2020.
[abs][pdf][bib] [code]
- Tslearn, A Machine Learning Toolkit for Time Series Data
- Romain Tavenard, Johann Faouzi, Gilles Vandewiele, Felix Divo, Guillaume Androz, Chester Holtz, Marie Payne, Roman Yurchak, Marc Rußwurm, Kushal Kolar, Eli Woods; (118):1−6, 2020. (Machine Learning Open Source Software Paper)
[abs][pdf][bib] [code]
- Bayesian Closed Surface Fitting Through Tensor Products
- Olivier Binette, Debdeep Pati, David B. Dunson; (119):1−26, 2020.
[abs][pdf][bib]
- A Class of Parallel Doubly Stochastic Algorithms for Large-Scale Learning
- Aryan Mokhtari, Alec Koppel, Martin Takac, Alejandro Ribeiro; (120):1−51, 2020.
[abs][pdf][bib]
- Agnostic Estimation for Phase Retrieval
- Matey Neykov, Zhaoran Wang, Han Liu; (121):1−39, 2020.
[abs][pdf][bib]
- Kernel-estimated Nonparametric Overlap-Based Syncytial Clustering
- Israel A. Almodóvar-Rivera, Ranjan Maitra; (122):1−54, 2020.
[abs][pdf][bib] [code]
- Tensor Regression Networks
- Jean Kossaifi, Zachary C. Lipton, Arinbjorn Kolbeinsson, Aran Khanna, Tommaso Furlanello, Anima Anandkumar; (123):1−21, 2020.
[abs][pdf][bib]
- Fast Bayesian Inference of Sparse Networks with Automatic Sparsity Determination
- Hang Yu, Songwei Wu, Luyin Xin, Justin Dauwels; (124):1−54, 2020.
[abs][pdf][bib] [code]
- Optimal Algorithms for Continuous Non-monotone Submodular and DR-Submodular Maximization
- Rad Niazadeh, Tim Roughgarden, Joshua R. Wang; (125):1−31, 2020.
[abs][pdf][bib]
- Distributed Minimum Error Entropy Algorithms
- Xin Guo, Ting Hu, Qiang Wu; (126):1−31, 2020.
[abs][pdf][bib]
- Apache Mahout: Machine Learning on Distributed Dataflow Systems
- Robin Anil, Gokhan Capan, Isabel Drost-Fromm, Ted Dunning, Ellen Friedman, Trevor Grant, Shannon Quinn, Paritosh Ranjan, Sebastian Schelter, Özgür Yılmazel; (127):1−6, 2020. (Machine Learning Open Source Software Paper)
[abs][pdf][bib] [code]
- A Regularization-Based Adaptive Test for High-Dimensional GLMs
- Chong Wu, Gongjun Xu, Xiaotong Shen, Wei Pan; (128):1−67, 2020.
[abs][pdf][bib] [code]
- A General System of Differential Equations to Model First-Order Adaptive Algorithms
- Andre Belotto da Silva, Maxime Gazeau; (129):1−42, 2020.
[abs][pdf][bib]
- AI Explainability 360: An Extensible Toolkit for Understanding Data and Machine Learning Models
- Vijay Arya, Rachel K. E. Bellamy, Pin-Yu Chen, Amit Dhurandhar, Michael Hind, Samuel C. Hoffman, Stephanie Houde, Q. Vera Liao, Ronny Luss, Aleksandra Mojsilović, Sami Mourad, Pablo Pedemonte, Ramya Raghavendra, John T. Richards, Prasanna Sattigeri, Karthikeyan Shanmugam, Moninder Singh, Kush R. Varshney, Dennis Wei, Yunfeng Zhang; (130):1−6, 2020. (Machine Learning Open Source Software Paper)
[abs][pdf][bib] [code]
- Convergence of Sparse Variational Inference in Gaussian Processes Regression
- David R. Burt, Carl Edward Rasmussen, Mark van der Wilk; (131):1−63, 2020.
[abs][pdf][bib] [code]
- Monte Carlo Gradient Estimation in Machine Learning
- Shakir Mohamed, Mihaela Rosca, Michael Figurnov, Andriy Mnih; (132):1−62, 2020.
[abs][pdf][bib] [code]
- Gradient Descent for Sparse Rank-One Matrix Completion for Crowd-Sourced Aggregation of Sparsely Interacting Workers
- Yao Ma, Alex Olshevsky, Csaba Szepesvari, Venkatesh Saligrama; (133):1−36, 2020.
[abs][pdf][bib]
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- metric-learn: Metric Learning Algorithms in Python
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- Asymptotic Consistency of $\alpha$-{R}\'enyi-Approximate Posteriors
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- Generating Weighted MAX-2-SAT Instances with Frustrated Loops: an RBM Case Study
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- Regression with Comparisons: Escaping the Curse of Dimensionality with Ordinal Information
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- Cramer-Wold Auto-Encoder
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- Complete Dictionary Learning via L4-Norm Maximization over the Orthogonal Group
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- High Dimensional Forecasting via Interpretable Vector Autoregression
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- Double Reinforcement Learning for Efficient Off-Policy Evaluation in Markov Decision Processes
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- Convex and Non-Convex Approaches for Statistical Inference with Class-Conditional Noisy Labels
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- The Optimal Ridge Penalty for Real-world High-dimensional Data Can Be Zero or Negative due to the Implicit Ridge Regularization
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[abs][pdf][bib]
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- Doubly Distributed Supervised Learning and Inference with High-Dimensional Correlated Outcomes
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- Wide Neural Networks with Bottlenecks are Deep Gaussian Processes
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- Breaking the Curse of Nonregularity with Subagging --- Inference of the Mean Outcome under Optimal Treatment Regimes
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- Optimal Estimation of Sparse Topic Models
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- Monotonic Value Function Factorisation for Deep Multi-Agent Reinforcement Learning
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- Variational Inference for Computational Imaging Inverse Problems
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- Curriculum Learning for Reinforcement Learning Domains: A Framework and Survey
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- Distributed High-dimensional Regression Under a Quantile Loss Function
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- Topology of Deep Neural Networks
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- Scikit-network: Graph Analysis in Python
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- Consistency of Semi-Supervised Learning Algorithms on Graphs: Probit and One-Hot Methods
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- Functional Martingale Residual Process for High-Dimensional Cox Regression with Model Averaging
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- ProtoAttend: Attention-Based Prototypical Learning
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- Multiclass Anomaly Detector: the CS++ Support Vector Machine
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- Provable Convex Co-clustering of Tensors
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- On the Theoretical Guarantees for Parameter Estimation of Gaussian Random Field Models: A Sparse Precision Matrix Approach
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- Spectral bandits
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- Theory of Curriculum Learning, with Convex Loss Functions
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- Geomstats: A Python Package for Riemannian Geometry in Machine Learning
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- Ultra-High Dimensional Single-Index Quantile Regression
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- Significance Tests for Neural Networks
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- Nonparametric graphical model for counts
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- Convex Programming for Estimation in Nonlinear Recurrent Models
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- Lower Bounds for Learning Distributions under Communication Constraints via Fisher Information
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- algcomparison: Comparing the Performance of Graphical Structure Learning Algorithms with TETRAD
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- Minimal Learning Machine: Theoretical Results and Clustering-Based Reference Point Selection
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- Risk Bounds for Reservoir Computing
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- Efficient Inference for Nonparametric Hawkes Processes Using Auxiliary Latent Variables
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- Fair Data Adaptation with Quantile Preservation
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- On Efficient Adjustment in Causal Graphs
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- Towards the Systematic Reporting of the Energy and Carbon Footprints of Machine Learning
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- Learning Mixed Latent Tree Models
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- High-dimensional quantile tensor regression
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- Online matrix factorization for Markovian data and applications to Network Dictionary Learning
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- Traces of Class/Cross-Class Structure Pervade Deep Learning Spectra
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