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ITER: an algorithm for Predictive Regression Rule extraction

ITER: an algorithm for Predictive Regression Rule extraction
ITER: an algorithm for Predictive Regression Rule extraction
Various benchmarking studies have shown that artificial neural networks and support vector machines have a superior performance when compared to more traditional machine learning techniques. The main resistance against these newer techniques is based on their lack of interpretability: it is difficult for the human analyst to understand the motivation behind these models’ decisions. Various rule extraction techniques have been proposed to overcome this opacity restriction. However, most of these extraction techniques are devised for classification and only few algorithms can deal with regression problems.

In this paper, we present ITER, a new algorithm for pedagogical regression rule extraction. Based on a trained ‘black box’ model, ITER is able to extract human-understandable regression rules. Experiments show that the extracted model performs well in comparison with CART regression trees and various other techniques.
3540377360
4081
270-279
Springer
Huysmans, J.
4926c4a3-4dd3-477f-a352-de2a432f2d61
Baesens, B.
f7c6496b-aa7f-4026-8616-ca61d9e216f0
Vanthienen, J.
808131f1-b77b-4dee-bdda-90a94124c999
Tjoa, M.
Trujillo, J.
Huysmans, J.
4926c4a3-4dd3-477f-a352-de2a432f2d61
Baesens, B.
f7c6496b-aa7f-4026-8616-ca61d9e216f0
Vanthienen, J.
808131f1-b77b-4dee-bdda-90a94124c999
Tjoa, M.
Trujillo, J.

Huysmans, J., Baesens, B. and Vanthienen, J. (2006) ITER: an algorithm for Predictive Regression Rule extraction. Tjoa, M. and Trujillo, J. (eds.) In Data Warehousing and Knowledge Discovery: 8th International Conference, Dawak 2006, Krakow, Poland, September 4-8, 2006, Proceedings. Springer. pp. 270-279 . (doi:10.1007/11823728_26).

Record type: Conference or Workshop Item (Paper)

Abstract

Various benchmarking studies have shown that artificial neural networks and support vector machines have a superior performance when compared to more traditional machine learning techniques. The main resistance against these newer techniques is based on their lack of interpretability: it is difficult for the human analyst to understand the motivation behind these models’ decisions. Various rule extraction techniques have been proposed to overcome this opacity restriction. However, most of these extraction techniques are devised for classification and only few algorithms can deal with regression problems.

In this paper, we present ITER, a new algorithm for pedagogical regression rule extraction. Based on a trained ‘black box’ model, ITER is able to extract human-understandable regression rules. Experiments show that the extracted model performs well in comparison with CART regression trees and various other techniques.

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More information

Published date: 2006
Venue - Dates: Data Warehousing and Knowledge Discovery: 8th International Conference, Krakow, Poland, 2006-09-04 - 2006-09-08

Identifiers

Local EPrints ID: 42646
URI: http://eprints.soton.ac.uk/id/eprint/42646
ISBN: 3540377360
PURE UUID: 71bd454d-de3b-40cd-a6f1-1e425709d582
ORCID for B. Baesens: ORCID iD orcid.org/0000-0002-5831-5668

Catalogue record

Date deposited: 18 Jan 2007
Last modified: 28 Apr 2026 16:44

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Contributors

Author: J. Huysmans
Author: B. Baesens ORCID iD
Author: J. Vanthienen
Editor: M. Tjoa
Editor: J. Trujillo

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