How to use expert advice

Author:

Cesa-Bianchi Nicolò1,Freund Yoav2,Haussler David3,Helmbold David P.3,Schapire Robert E.2,Warmuth Manfred K.3

Affiliation:

1. Università di Milano, Milan, Italy

2. AT&T Labs, Florham Park, New Jersey

3. University of California, Santa Cruz, Santa Cruz, California

Abstract

We analyze algorithms that predict a binary value by combining the predictions of several prediction strategies, called experts . Our analysis is for worst-case situations, i.e., we make no assumptions about the way the sequence of bits to be predicted is generated. We measure the performance of the algorithm by the difference between the expected number of mistakes it makes on the bit sequence and the expected number of mistakes made by the best expert on this sequence, where the expectation is taken with respect to the randomization in the predictins. We show that the minimum achievable difference is on the order of the square root of the number of mistakes of the best expert, and we give efficient algorithms that achieve this. Our upper and lower bounds have matching leading constants in most cases. We then show how this leads to certain kinds of pattern recognition/learning algorithms with performance bounds that improve on the best results currently know in this context. We also compare our analysis to the case in which log loss is used instead of the expected number of mistakes.

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Hardware and Architecture,Information Systems,Control and Systems Engineering,Software

Reference47 articles.

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3. CESA-BIANCHI N. FREUND Y. HELMBOLD D. P. AND WARMUTH M.K. 1996. On-line prediction and conversion strategies. Mach. Learn. to appear. 10.1023/A:1018348209754 CESA-BIANCHI N. FREUND Y. HELMBOLD D. P. AND WARMUTH M.K. 1996. On-line prediction and conversion strategies. Mach. Learn. to appear. 10.1023/A:1018348209754

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