Efficiency versus Convergence of Boolean Kernels for On-Line Learning Algorithms

Author:

Khardon R.,Roth D.,Servedio R. A.

Abstract

The paper studies machine learning problems where each example is described using a set of Boolean features and where hypotheses are represented by linear threshold elements. One method of increasing the expressiveness of learned hypotheses in this context is to expand the feature set to include conjunctions of basic features. This can be done explicitly or where possible by using a kernel function. Focusing on the well known Perceptron and Winnow algorithms, the paper demonstrates a tradeoff between the computational efficiency with which the algorithm can be run over the expanded feature space and the generalization ability of the corresponding learning algorithm. We first describe several kernel functions which capture either limited forms of conjunctions or all conjunctions. We show that these kernels can be used to efficiently run the Perceptron algorithm over a feature space of exponentially many conjunctions; however we also show that using such kernels, the Perceptron algorithm can provably make an exponential number of mistakes even when learning simple functions. We then consider the question of whether kernel functions can analogously be used to run the multiplicative-update Winnow algorithm over an expanded feature space of exponentially many conjunctions. Known upper bounds imply that the Winnow algorithm can learn Disjunctive Normal Form (DNF) formulae with a polynomial mistake bound in this setting. However, we prove that it is computationally hard to simulate Winnow's behavior for learning DNF over such a feature set. This implies that the kernel functions which correspond to running Winnow for this problem are not efficiently computable, and that there is no general construction that can run Winnow with kernels.

Publisher

AI Access Foundation

Subject

Artificial Intelligence

Cited by 13 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Boolean kernels for collaborative filtering in top-N item recommendation;Neurocomputing;2018-04

2. Classification of Categorical Data in the Feature Space of Monotone DNFs;Artificial Neural Networks and Machine Learning – ICANN 2017;2017

3. Attribute-Efficient Learning;Encyclopedia of Algorithms;2016

4. Attribute-Efficient Learning;Encyclopedia of Algorithms;2015

5. Recognizing Textual Entailment: Models and Applications;Synthesis Lectures on Human Language Technologies;2013-07-19

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