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Published April 25, 2001 | Submitted
Report Open

A Generalization Model and Learning in Hardware

Abstract

We study two problems in the field of machine learning. First, we propose a novel theoretical framework for understanding learning and generalization which we call the bin model. Using the bin model, a closed form is derived for the generalization error that estimates the out-of-sample performance in terms of the in-sample performance. We address the problem of overfitting, and show that using a simple exhaustive learning algorithm it does not arise. This is independent of the target function, input distribution and learning model, and remains true even with noisy data sets. We apply our analysis to both classification and regression problems and give an example of how it may be used efficiently in practice. Second, we investigate the use of learning and evolution in hardware for digital circuit design. Using the reactive tabu search for discrete optimization, we show that we can learn a multiplier circuit from a set of examples. The learned circuit makes less than 2% error and uses fewer chip resources than the standard digital design. We compare use of a genetic algorithm and the reactive tabu search for fitness optimization and show that the reactive tabu search performs significantly better on a 2-bit adder design problem for a similar execution time.

Additional Information

© 2000 California Institute of Technology. This work was supported in part by the Center for Neuromorphic Systems Engineering (a National Science Foundation supported Engineering Research Center) under National Science Foundation Cooperative Agreement EEC 9402726.

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Submitted - CSTR2000.pdf

Submitted - postscript.ps

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Created:
August 19, 2023
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October 24, 2023