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Editors: Firdaus Janoos, Mehryar Mohri, Karthik Sridharan
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Algorithmic Learning Theory ALT 2018: Preface
; Proceedings of Algorithmic Learning Theory, PMLR 83:1-2
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Pure Exploration in Infinitely-Armed Bandit Models with Fixed-Confidence
Maryam Aziz, Jesse Anderton, Emilie Kaufmann, Javed Aslam; Proceedings of Algorithmic Learning Theory, PMLR 83:3-24
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Learners that Use Little Information
Raef Bassily, Shay Moran, Ido Nachum, Jonathan Shafer, Amir Yehudayoff; Proceedings of Algorithmic Learning Theory, PMLR 83:25-55
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{Multi-Player Bandits Revisited}
Lilian Besson, Emilie Kaufmann; Proceedings of Algorithmic Learning Theory, PMLR 83:56-92
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Adaptive Group Testing Algorithms to Estimate the Number of Defectives
Nader H. Bshouty, Vivian E. Bshouty-Hurani, George Haddad, Thomas Hashem, Fadi Khoury, Omar Sharafy; Proceedings of Algorithmic Learning Theory, PMLR 83:93-110
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Sparsity, variance and curvature in multi-armed bandits
Sébastien Bubeck, Michael Cohen, Yuanzhi Li; Proceedings of Algorithmic Learning Theory, PMLR 83:111-127
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Bandit Regret Scaling with the Effective Loss Range
Nicolò Cesa-Bianchi, Ohad Shamir; Proceedings of Algorithmic Learning Theory, PMLR 83:128-151
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Structure Learning of ${H}$-colorings
Antonio Blanca, Zongchen Chen, Daniel Štefankovič, Eric Vigoda; Proceedings of Algorithmic Learning Theory, PMLR 83:152-185
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Convergence of Langevin MCMC in KL-divergence
Xiang Cheng, Peter Bartlett; Proceedings of Algorithmic Learning Theory, PMLR 83:186-211
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Ranking Median Regression: Learning to Order through Local Consensus
Stephan Clémençon, Anna Korba, Eric Sibony; Proceedings of Algorithmic Learning Theory, PMLR 83:212-245
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Coordinate Descent Faceoff: Primal or Dual?
Dominik Csiba, Peter Richtárik; Proceedings of Algorithmic Learning Theory, PMLR 83:246-267
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A Better Resource Allocation Algorithm with Semi-Bandit Feedback
Yuval Dagan, Crammer Koby; Proceedings of Algorithmic Learning Theory, PMLR 83:268-320
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Unperturbed: spectral analysis beyond Davis-Kahan
Justin Eldridge, Mikhail Belkin, Yusu Wang; Proceedings of Algorithmic Learning Theory, PMLR 83:321-358
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Decision making with limited feedback
Danielle Ensign, Frielder Sorelle, Neville Scott, Scheidegger Carlos, Venkatasubramanian Suresh; Proceedings of Algorithmic Learning Theory, PMLR 83:359-367
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Robust Inference for Multiclass Classification
Uriel Feige, Yishay Mansour, Robert E. Schapire; Proceedings of Algorithmic Learning Theory, PMLR 83:368-386
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Corrupt Bandits for Preserving Local Privacy
Pratik Gajane, Tanguy Urvoy, Emilie Kaufmann; Proceedings of Algorithmic Learning Theory, PMLR 83:387-412
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On the Help of Bounded Shot Verifiers, Comparators and Standardisers for Learnability in Inductive Inference
Ziyuan Gao, Sanjay Jain, Frank Stephan, Thomas Zeugmann; Proceedings of Algorithmic Learning Theory, PMLR 83:413-437
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Smooth Sensitivity Based Approach for Differentially Private PCA
Alon Gonem, Ram Gilad-Bachrach; Proceedings of Algorithmic Learning Theory, PMLR 83:438-450
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Dimension-free Information Concentration via Exp-Concavity
Ya-ping Hsieh, Volkan Cevher; Proceedings of Algorithmic Learning Theory, PMLR 83:451-469
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Minimax Optimal Bayes Mixtures for Memoryless Sources over Large Alphabets
Elias Jääsaari, Janne Leppä-aho, Tomi Silander, Teemu Roos; Proceedings of Algorithmic Learning Theory, PMLR 83:470-488
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Learning Decision Trees with Stochastic Linear Classifiers
Tom Jurgenson, Yishay Mansour; Proceedings of Algorithmic Learning Theory, PMLR 83:489-528
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Instrument-Armed Bandits
Nathan Kallus; Proceedings of Algorithmic Learning Theory, PMLR 83:529-546
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An Adaptive Strategy for Active Learning with Smooth Decision Boundary
Andrea Locatelli, Alexandra Carpentier, Samory Kpotufe; Proceedings of Algorithmic Learning Theory, PMLR 83:547-571
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Learning under $p$-Tampering Attacks
Saeed Mahloujifar, Dimitrios I. Diochnos, Mohammad Mahmoody; Proceedings of Algorithmic Learning Theory, PMLR 83:572-596
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Markov Decision Processes with Continuous Side Information
Aditya Modi, Nan Jiang, Satinder Singh, Ambuj Tewari; Proceedings of Algorithmic Learning Theory, PMLR 83:597-618
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Clustering Algorithms for the Centralized and Local Models
Kobbi Nissim, Uri Stemmer; Proceedings of Algorithmic Learning Theory, PMLR 83:619-653
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On Similarity Prediction and Pairwise Clustering
Stephen Pasteris, Fabio Vitale, Claudio Gentile, Mark Herbster; Proceedings of Algorithmic Learning Theory, PMLR 83:654-681
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Multi-task {K}ernel {L}earning Based on {P}robabilistic {L}ipschitzness
Anastasia Pentina, Shai Ben-David; Proceedings of Algorithmic Learning Theory, PMLR 83:682-701
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Online Learning of Combinatorial Objects via Extended Formulation
Holakou Rahmanian, David P. Helmbold, S. V. N. Vishwanathan; Proceedings of Algorithmic Learning Theory, PMLR 83:702-724
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The K-Nearest Neighbour UCB Algorithm for Multi-Armed Bandits with Covariates
Henry Reeve, Joe Mellor, Gavin Brown; Proceedings of Algorithmic Learning Theory, PMLR 83:725-752
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Sequential prediction with coded side information under logarithmic loss
Yanina Shkel, Maxim Raginsky, Sergio Verdú; Proceedings of Algorithmic Learning Theory, PMLR 83:753-769
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Variance-Aware Regret Bounds for Undiscounted Reinforcement Learning in MDPs
Mohammad Sadegh Talebi, Odalric-Ambrym Maillard; Proceedings of Algorithmic Learning Theory, PMLR 83:770-805
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Efficient coordinate-wise leading eigenvector computation
Jialei Wang, Weiran Wang, Dan Garber, Nathan Srebro; Proceedings of Algorithmic Learning Theory, PMLR 83:806-820
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Minimax Rates and Efficient Algorithms for Noisy Sorting
Cheng Mao, Jonathan Weed, Philippe Rigollet; Proceedings of Algorithmic Learning Theory, PMLR 83:821-847
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