The Extended Littlestone's Dimension for Learning with Mistakes and Abstentions
April 21, 2016 ยท Declared Dead ยท ๐ Annual Conference Computational Learning Theory
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Authors
Chicheng Zhang, Kamalika Chaudhuri
arXiv ID
1604.06162
Category
cs.LG: Machine Learning
Citations
24
Venue
Annual Conference Computational Learning Theory
Last Checked
3 months ago
Abstract
This paper studies classification with an abstention option in the online setting. In this setting, examples arrive sequentially, the learner is given a hypothesis class $\mathcal H$, and the goal of the learner is to either predict a label on each example or abstain, while ensuring that it does not make more than a pre-specified number of mistakes when it does predict a label. Previous work on this problem has left open two main challenges. First, not much is known about the optimality of algorithms, and in particular, about what an optimal algorithmic strategy is for any individual hypothesis class. Second, while the realizable case has been studied, the more realistic non-realizable scenario is not well-understood. In this paper, we address both challenges. First, we provide a novel measure, called the Extended Littlestone's Dimension, which captures the number of abstentions needed to ensure a certain number of mistakes. Second, we explore the non-realizable case, and provide upper and lower bounds on the number of abstentions required by an algorithm to guarantee a specified number of mistakes.
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