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A new methodology for generating and combining statistical forecasting models to enhance competitive event prediction

A new methodology for generating and combining statistical forecasting models to enhance competitive event prediction
A new methodology for generating and combining statistical forecasting models to enhance competitive event prediction
Forecasting methods are routinely employed to predict the outcome of competitive events (CEs) and to shed light on the factors that influence participants’ winning prospects (e.g., in sports events, political elections). Combining statistical models’ forecasts, shown to be highly successful in other settings, has been neglected in CE prediction. Two particular difficulties arise when developing model-based composite forecasts of CE outcomes: the intensity of rivalry among contestants, and the strength/diversity trade-off among individual models. To overcome these challenges we propose a range of surrogate measures of event outcome to construct a heterogeneous set of base forecasts. To effectively extract the complementary information concealed within these predictions, we develop a novel pooling mechanism which accounts for competition among contestants: a stacking paradigm integrating conditional logit regression and log-likelihood-ratio-based forecast selection. Empirical results using data related to horseracing events demonstrate that: (i) base model strength and diversity are important when combining model-based predictions for CEs; (ii) average-based pooling, commonly employed elsewhere, may not be appropriate for CEs (because average-based pooling exclusively focuses on strength); and (iii) the proposed stacking ensemble provides statistically and economically accurate forecasts. These results have important implications for regulators of betting markets associated with CEs and in particular for the accurate assessment of market efficiency.
forecasting, forecast combination, competitive event prediction
0377-2217
163-174
Lessmann, Stefan
3b9f8133-67bb-4bcc-9183-e1a5db294b01
Sung, M.
2114f823-bc7f-4306-a775-67aee413aa03
Johnson, J.E.V.
6d9f1a51-38a8-4011-a792-bfc82040fac4
Ma, Tiejun
1f591849-f17c-4209-9f42-e6587b499bae
Lessmann, Stefan
3b9f8133-67bb-4bcc-9183-e1a5db294b01
Sung, M.
2114f823-bc7f-4306-a775-67aee413aa03
Johnson, J.E.V.
6d9f1a51-38a8-4011-a792-bfc82040fac4
Ma, Tiejun
1f591849-f17c-4209-9f42-e6587b499bae

Lessmann, Stefan, Sung, M., Johnson, J.E.V. and Ma, Tiejun (2012) A new methodology for generating and combining statistical forecasting models to enhance competitive event prediction. European Journal of Operational Research, 218 (1), 163-174. (doi:10.1016/j.ejor.2011.10.032).

Record type: Article

Abstract

Forecasting methods are routinely employed to predict the outcome of competitive events (CEs) and to shed light on the factors that influence participants’ winning prospects (e.g., in sports events, political elections). Combining statistical models’ forecasts, shown to be highly successful in other settings, has been neglected in CE prediction. Two particular difficulties arise when developing model-based composite forecasts of CE outcomes: the intensity of rivalry among contestants, and the strength/diversity trade-off among individual models. To overcome these challenges we propose a range of surrogate measures of event outcome to construct a heterogeneous set of base forecasts. To effectively extract the complementary information concealed within these predictions, we develop a novel pooling mechanism which accounts for competition among contestants: a stacking paradigm integrating conditional logit regression and log-likelihood-ratio-based forecast selection. Empirical results using data related to horseracing events demonstrate that: (i) base model strength and diversity are important when combining model-based predictions for CEs; (ii) average-based pooling, commonly employed elsewhere, may not be appropriate for CEs (because average-based pooling exclusively focuses on strength); and (iii) the proposed stacking ensemble provides statistically and economically accurate forecasts. These results have important implications for regulators of betting markets associated with CEs and in particular for the accurate assessment of market efficiency.

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More information

e-pub ahead of print date: 6 November 2011
Published date: 1 April 2012
Keywords: forecasting, forecast combination, competitive event prediction
Organisations: Centre of Excellence for International Banking, Finance & Accounting

Identifiers

Local EPrints ID: 201409
URI: http://eprints.soton.ac.uk/id/eprint/201409
ISSN: 0377-2217
PURE UUID: 062dc7e4-eed5-44e6-a92d-926eb9385e66
ORCID for M. Sung: ORCID iD orcid.org/0000-0002-2278-6185

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Date deposited: 28 Oct 2011 14:09
Last modified: 15 Mar 2024 03:20

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Contributors

Author: Stefan Lessmann
Author: M. Sung ORCID iD
Author: J.E.V. Johnson
Author: Tiejun Ma

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