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Knowledge discovery using least squares support vector machine classifiers: a direct marketing case

Knowledge discovery using least squares support vector machine classifiers: a direct marketing case
Knowledge discovery using least squares support vector machine classifiers: a direct marketing case
The case involves the detection and qualification of the most relevant predictors for repeat-purchase modelling in a direct marketing setting. Analysis is based on a wrapped form of feature selection using a sensitivity based pruning heuristic to guide a greedy, step-wise and backward traversal of the input space. For this purpose, we make use of a powerful and promising least squares version (LS-SVM) for support vector machine classification. The set-up is based upon the standard R(ecency) F(requency) M(onetary) modelling semantics. Results indicate that elimination of redundant/irrelevant features allows to significantly reduce model complexity. The empirical findings also highlight the importance of Frequency and Monetary variables, whilst the Recency variable category seems to be of lesser importance. Results also point to the added value of including non-RFM variables for improving customer profiling.
354041066X
657-664
Springer
Viaene, S.
68e01ebc-8a4d-4460-86bf-18711fcee8d6
Baesens, B.
f7c6496b-aa7f-4026-8616-ca61d9e216f0
Van Gestel, T.
ebd266da-f429-4493-a4e1-1f9a45c4c1c9
Suykens, J.A.K.
92d856e9-f04f-4430-bb3c-0b300d9302cb
Van den Poel, D.
956e522c-3a91-4885-ac2d-4eee48b27353
Vanthienen, J.
808131f1-b77b-4dee-bdda-90a94124c999
De Moor, B.
f25df85a-5050-448e-bd50-a278455f5b47
Dedene, G.
8afb894b-10b1-48d9-8751-4fab7a71b8ca
Viaene, S.
68e01ebc-8a4d-4460-86bf-18711fcee8d6
Baesens, B.
f7c6496b-aa7f-4026-8616-ca61d9e216f0
Van Gestel, T.
ebd266da-f429-4493-a4e1-1f9a45c4c1c9
Suykens, J.A.K.
92d856e9-f04f-4430-bb3c-0b300d9302cb
Van den Poel, D.
956e522c-3a91-4885-ac2d-4eee48b27353
Vanthienen, J.
808131f1-b77b-4dee-bdda-90a94124c999
De Moor, B.
f25df85a-5050-448e-bd50-a278455f5b47
Dedene, G.
8afb894b-10b1-48d9-8751-4fab7a71b8ca

Viaene, S., Baesens, B., Van Gestel, T., Suykens, J.A.K., Van den Poel, D., Vanthienen, J., De Moor, B. and Dedene, G. (2000) Knowledge discovery using least squares support vector machine classifiers: a direct marketing case. In Principles of Data Mining and Knowledge Discovery: Proceedings of the Fourth European Conference on Principles and Practice of Knowledge Discovery in Databases (PKDD 2000). vol. 1910, Springer. pp. 657-664 .

Record type: Conference or Workshop Item (Paper)

Abstract

The case involves the detection and qualification of the most relevant predictors for repeat-purchase modelling in a direct marketing setting. Analysis is based on a wrapped form of feature selection using a sensitivity based pruning heuristic to guide a greedy, step-wise and backward traversal of the input space. For this purpose, we make use of a powerful and promising least squares version (LS-SVM) for support vector machine classification. The set-up is based upon the standard R(ecency) F(requency) M(onetary) modelling semantics. Results indicate that elimination of redundant/irrelevant features allows to significantly reduce model complexity. The empirical findings also highlight the importance of Frequency and Monetary variables, whilst the Recency variable category seems to be of lesser importance. Results also point to the added value of including non-RFM variables for improving customer profiling.

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More information

Published date: 2000
Venue - Dates: The Fourth European Conference on Principles and Practice of Knowledge Discovery in Databases (PKDD'2000), Lyon, France, 2000-09-12 - 2000-09-15

Identifiers

Local EPrints ID: 36757
URI: http://eprints.soton.ac.uk/id/eprint/36757
ISBN: 354041066X
PURE UUID: d598ed69-480e-4390-b21e-d3cf3668fff2
ORCID for B. Baesens: ORCID iD orcid.org/0000-0002-5831-5668

Catalogue record

Date deposited: 31 Jul 2006
Last modified: 09 Jan 2022 03:16

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Contributors

Author: S. Viaene
Author: B. Baesens ORCID iD
Author: T. Van Gestel
Author: J.A.K. Suykens
Author: D. Van den Poel
Author: J. Vanthienen
Author: B. De Moor
Author: G. Dedene

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