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Estimating the Market Share Attraction Model using Support Vector Regressions

Author

Listed:
  • Georgi Nalbantov
  • Philip Hans Franses
  • Patrick Groenen
  • Jan Bioch

Abstract

We propose to estimate the parameters of the Market Share Attraction Model (Cooper and Nakanishi, 1988; Fok and Franses, 2004) in a novel way by using a nonparametric technique for function estimation called Support Vector Regressions (SVR) (Smola, 1996; Vapnik, 1995). Traditionally, the parameters of the Market Share Attraction Model are estimated via a Maximum Likelihood (ML) procedure, assuming that the data are drawn from a conditional Gaussian distribution. However, if the distribution is unknown, Ordinary Least Squares (OLS) estimation may seriously fail (Vapnik, 1982). One way to tackle this problem is to introduce a linear loss function over the errors and a penalty on the magnitude of model coefficients. This leads to qualities such as robustness to outliers and avoidance of the problem of overfitting. This kind of estimation forms the basis of the SVR technique, which, as we will argue, makes it a good candidate for estimating the Market Share Attraction Model. We test the SVR approach to predict (the evolution of) the market shares of 36 car brands simultaneously and report promising results.

Suggested Citation

  • Georgi Nalbantov & Philip Hans Franses & Patrick Groenen & Jan Bioch, 2010. "Estimating the Market Share Attraction Model using Support Vector Regressions," Econometric Reviews, Taylor & Francis Journals, vol. 29(5-6), pages 688-716.
  • Handle: RePEc:taf:emetrv:v:29:y:2010:i:5-6:p:688-716
    DOI: 10.1080/07474938.2010.481989
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    References listed on IDEAS

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    1. Fernando Perez-cruz & Julio Afonso-rodriguez & Javier Giner, 2003. "Estimating GARCH models using support vector machines," Quantitative Finance, Taylor & Francis Journals, vol. 3(3), pages 163-172.
    2. Tay, Francis E. H. & Cao, Lijuan, 2001. "Application of support vector machines in financial time series forecasting," Omega, Elsevier, vol. 29(4), pages 309-317, August.
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