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Adapting least-square support vector regression models to forecast the outcome of horseraces

Adapting least-square support vector regression models to forecast the outcome of horseraces
Adapting least-square support vector regression models to forecast the outcome of horseraces
This paper introduces an improved approach for forecasting the outcome of horseraces. Building upon previous literature, a state-of-the-art modelling paradigm is developed which integrates least-square support vector regression and conditional logit procedures to predict horses' winning probabilities. In order to adapt the least-square support vector regression model to this task, some free parameters have to be determined within a model selection step. Traditionally, this is accomplished by assessing candidate settings in terms of mean-squared error between estimated and actual finishing positions. This paper proposes an augmented approach to organise model selection for horserace forecasting using the concept of ranking borrowed from internet search engine evaluation. In particular, it is shown that the performance of forecasting models can be improved significantly if parameter settings are chosen on the basis of their normalised discounted cumulative gain (i.e. their ability to accurately rank the first few finishers of a race), rather than according to general purpose performance indicators which weight the ability to predict the rank order finish position of all horses equally.
forecasting, horseracing, support vector machines
1750-6751
169-187
Lessmann, Stefan
3b9f8133-67bb-4bcc-9183-e1a5db294b01
Sung, M.
2114f823-bc7f-4306-a775-67aee413aa03
Johnson, Johnnie E.V.
6d9f1a51-38a8-4011-a792-bfc82040fac4
Lessmann, Stefan
3b9f8133-67bb-4bcc-9183-e1a5db294b01
Sung, M.
2114f823-bc7f-4306-a775-67aee413aa03
Johnson, Johnnie E.V.
6d9f1a51-38a8-4011-a792-bfc82040fac4

Lessmann, Stefan, Sung, M. and Johnson, Johnnie E.V. (2007) Adapting least-square support vector regression models to forecast the outcome of horseraces. Journal of Prediction Markets, 1 (3), 169-187.

Record type: Article

Abstract

This paper introduces an improved approach for forecasting the outcome of horseraces. Building upon previous literature, a state-of-the-art modelling paradigm is developed which integrates least-square support vector regression and conditional logit procedures to predict horses' winning probabilities. In order to adapt the least-square support vector regression model to this task, some free parameters have to be determined within a model selection step. Traditionally, this is accomplished by assessing candidate settings in terms of mean-squared error between estimated and actual finishing positions. This paper proposes an augmented approach to organise model selection for horserace forecasting using the concept of ranking borrowed from internet search engine evaluation. In particular, it is shown that the performance of forecasting models can be improved significantly if parameter settings are chosen on the basis of their normalised discounted cumulative gain (i.e. their ability to accurately rank the first few finishers of a race), rather than according to general purpose performance indicators which weight the ability to predict the rank order finish position of all horses equally.

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More information

Published date: December 2007
Keywords: forecasting, horseracing, support vector machines

Identifiers

Local EPrints ID: 51320
URI: http://eprints.soton.ac.uk/id/eprint/51320
ISSN: 1750-6751
PURE UUID: 460bead0-76ba-4c0c-99d2-6a9abfdab0b3
ORCID for M. Sung: ORCID iD orcid.org/0000-0002-2278-6185

Catalogue record

Date deposited: 05 Jun 2008
Last modified: 12 Dec 2021 03:27

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Contributors

Author: Stefan Lessmann
Author: M. Sung ORCID iD
Author: Johnnie E.V. Johnson

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