Citation:
Shaomin Wu, and Artur Akbarov. Support vector regression for warranty claim forecasting. European Journal of Operational Research. Vol. 213, Issue 1, 16 August 2011, Pages 196-204
Abstract:
Forecasting the number of warranty claims is vitally important for
manufacturers/warranty providers in preparing fiscal plans. In existing
literature, a number of techniques such as log-linear Poisson models, Kalman
filter, time series models, and artificial neural network models have been
developed. Nevertheless, one might find two weaknesses existing in these
approaches: (1) they do not consider the fact that warranty claims reported in
the recent months might be more important in forecasting future warranty claims
than those reported in the earlier months, and (2) they are developed based on
repair rates (i.e, the total number of claims divided by the total number of
products in service), which can cause information loss through such an
arithmetic-mean operation. To overcome the above two weaknesses, this paper
introduces two different approaches to forecasting warranty claims: the first is
a weighted support vector regression (SVR) model and the second is a weighted
SVR-based time series model. These two approaches can be applied to two
scenarios: when only claim rate data are available and when original claim data
are available. Two case studies are conducted to validate the two modelling
approaches. On the basis of model evaluation over six months ahead forecasting,
the results show that the proposed models exhibit superior performance compared
to that of multilayer perceptrons, radial basis function networks and ordinary
support vector regression models.