A Massive Local Rules Search Approach to the Classification Problem

24 Pages Posted: 25 Jun 2019

See all articles by Vladislav Malyshkin

Vladislav Malyshkin

Ioffe Institute

Ray Bakhramov

Forum Asset Management LLC

Andrey Gorodetsky

affiliation not provided to SSRN

Date Written: July 6, 2001

Abstract

An approach to the classification problem of machine learning, based on building local classification rules, is developed. The local rules are considered as projections of the global classification rules to the event we want to classify. A massive global optimization algorithm is used for optimization of quality criterion. The algorithm, which has polynomial complexity in typical case, is used to find all high--quality local rules. The other distinctive feature of the algorithm is the integration of attributes levels selection (for ordered attributes) with rules searching and original conflicting rules resolution strategy. The algorithm is practical; it was tested on a number of data sets from UCI repository, and a comparison with the other predicting techniques is presented.

Keywords: machine learning, classification problem

JEL Classification: C63

Suggested Citation

Malyshkin, Vladislav and Bakhramov, Ray and Gorodetsky, Andrey, A Massive Local Rules Search Approach to the Classification Problem (July 6, 2001). Available at SSRN: https://ssrn.com/abstract=3405004 or http://dx.doi.org/10.2139/ssrn.3405004

Vladislav Malyshkin (Contact Author)

Ioffe Institute ( email )

Politekhnicheskaya 26
St Petersburg, 194021
Russia

Ray Bakhramov

Forum Asset Management LLC ( email )

733 Third Avenue
New York, NY 10017
United States

Andrey Gorodetsky

affiliation not provided to SSRN

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