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calendar icon Dec 16, 2011 videos icon 8 videos
New Frontiers in Model Order Selection

New Frontiers in Model Order Selection

Model order selection, which is a trade-off between model resolution and its statistical reliability, is one of the fundamental questions in machine learning. It was studied in detail in the context of supervised learning with i.i.d. samples, but received relatively little attention beyond this domain. The goal of our workshop is to raise attention to the question of model order selection in other domains, share ideas and approaches between the domains, and identify perspective directions for future research. Our interest covers ways of defining model complexity in different domains, examples of practical problems, where intelligent model order selection yields advantage over simplistic approaches, and new theoretical tools for analysis of model order selection. The domains of interest span over all problems that cannot be directly mapped to supervised learning with i.i.d. samples, including, but not limited to, reinforcement learning, active learning, learning with delayed, partial, or indirect feedback, and learning with submodular functions.

An example of first steps in defining complexity of models in reinforcement learning, applying trade-off between model complexity and empirical performance, and analyzing it can be found in [1-4]. An intriguing research direction coming out of these works is simultaneous analysis of exploration-exploitation and model order selection trade-offs. Such an analysis enables to design and analyze models that adapt their complexity as they continue to explore and observe new data. Potential practical applications of such models include contextual bandits (for example, in personalization of recommendations on the web [5]) and Markov decision processes.

Workshop homepage: http://people.kyb.tuebingen.mpg.de/seldin/fimos.html

Invited Talks

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49:38

Model Selection in Markovian Processes

Shie Mannor

calendar icon Jan 25, 2012 4254 views

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52:35

Model Selection in Exploration

John Langford

calendar icon Jan 25, 2012 4082 views

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44:21

Autonomous Exploration in Reinforcement Learning

Peter Auer

calendar icon Jan 25, 2012 4439 views

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48:05

Future Information Minimization as PAC Bayes regularization in Reinforcement Lea...

Naftali Tishby

calendar icon Jan 25, 2012 4834 views

Lectures

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20:38

BErMin: A Model Selection Algorithm for Reinforcement Learning Problems

Amir-massoud Farahmand

calendar icon Jan 25, 2012 4104 views

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18:27

Selecting the state representation in reinforcement Learning

Odalric-Ambrym Maillard

calendar icon Jan 25, 2012 4047 views

Poster Spotlights

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11:33

Poster session

Yuri Grinberg,

Aurélie Boisbunon,

Alexandre Lacoste,

Marina Sapir,

Nicolas Baskiotis,

Stefan Kremer,

Morteza Haghir Chehreghani,

Yevgeny Seldin,

Amir-massoud Farahmand,

Mohammad Ghavamzadeh

calendar icon Jan 25, 2012 4412 views

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02:18

Introduction

Yevgeny Seldin

calendar icon Jan 25, 2012 3117 views

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