Keywords

value difference metric, heterogeneous distance functions

Abstract

Instance-based learning techniques typically handle continuous and linear input values well, but often do not handle nominal input attributes appropriately. The Value Difference Metric (VDM) was designed to find reasonable distance values between nominal attribute values, but it largely ignores continuous attributes, requiring discretization to map continuous values into nominal values. This paper proposes three new heterogeneous distance functions, called the Heterogeneous Value Difference Metric (HVDM), the Interpolated Value Difference Metric (IVDM), and the Windowed Value Difference Metric (WVDM). These new distance functions are designed to handle applications with nominal attributes, continuous attributes, or both. In experiments on 48 applications the new distance metrics achieve higher classification accuracy on average than three previous distance functions on those datasets that have both nominal and continuous attributes.

Original Publication Citation

Wilson, D. R. and Martinez, T. R., "Improved Heterogeneous Distance Functions", Journal of Artificial Intelligence Research, vol. 6, no. 1, pp. 1-34, 1997.

Document Type

Peer-Reviewed Article

Publication Date

1997-01-01

Permanent URL

http://hdl.lib.byu.edu/1877/2425

Publisher

IEEE

Language

English

College

Physical and Mathematical Sciences

Department

Computer Science

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