An eager regression method based on best feature projections

Date

2001

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Source Title

Engineering of Intelligent Systems

Print ISSN

0302-9743

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Springer, Berlin, Heidelberg

Volume

2070

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Pages

217 - 226

Language

English

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Abstract

This paper describes a machine learning method, called Regression by Selecting Best Feature Projections (RSBFP). In the training phase, RSBFP projects the training data on each feature dimension and aims to find the predictive power of each feature attribute by constructing simple linear regression lines, one per each continuous feature and number of categories per each categorical feature. Because, although the predictive power of a continuous feature is constant, it varies for each distinct value of categorical features. Then the simple linear regression lines are sorted according to their predictive power. In the querying phase of learning, the best linear regression line and thus the best feature projection are selected to make predictions. © Springer-Verlag Berlin Heidelberg 2001.

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