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2011
Conference Paper
Title

General sales forecast models for automobile markets based on time series analysis and data mining techniques

Abstract
In this paper, various enhanced sales forecast methodologies and models for the automobile market are presented. The methods used deliver highly accurate predictions while maintaining the ability to explain the underlying model at the same time. The representation of the economic training data is discussed, as well as its effects on the newly registered automobiles to be predicted. The methodology mainly consists of time series analysis and classical Data Mining algorithms, whereas the data is composed of absolute and/or relative market-specific exogenous parameters on a yearly, quarterly, or monthly base. It can be concluded that the monthly forecasts were especially improved by this enhanced methodology using absolute, normalized exogenous parameters. Decision Trees are considered as the most suitable method in this case, being both accurate and explicable. The German and the US-American automobile market are presented for the evaluation of the forecast models.
Author(s)
Hülsmann, M.
Borscheid, D.
Friedrich, C.M.
Reith, Dirk  orcid-logo
Mainwork
Advances in data mining. Proceedings  
Conference
Industrial Conference on Data Mining (ICDM) 2011  
DOI
10.1007/978-3-642-23184-1_20
Language
English
Fraunhofer-Institut für Algorithmen und Wissenschaftliches Rechnen SCAI  
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