Title of article :
A new class of information complexity (ICOMP) criteria with anapplication to customer profiling and segmentation
Author/Authors :
Bozdogan, Hamparsum University of Tennessee - Department of Statistics,Operations and Management Science, USA
From page :
370
To page :
398
Abstract :
This paper introduces several forms of a new class of information-theoretic measure of complexity criterion called ICOMP as a decision rule for model selection in statistical modeling to help provide new approaches relevant to statistical inference. The practical utility and the importance of ICOMP is illustrated by providing a real numerical example in data mining of mobile phone data for customer profiling and segmentation of mobile phone customers using a novel multi-class support vector machine-recursive feature elimination (MSVM-RFE) method. The approach proposed in this paper outperforms the classical discriminant analysis techniques over 32% in terms of misclassification error rate. This is a remarkable achievement due to using MSVM-RFE hybridized with ICOMP that was not possible using other methods to classify the mobile phone customer data base as a new micro-marketing analytics. This should capture the attention of the mobile phone industry for more refined analysis of their data bases for customer management and retention.
Keywords :
ICOMP class of criteria , covariance complexity , estimated inverse , Fisher information matrix (FIM) , model selection , multi , class support vector machine , recursive feature elimination (MSVM , RFE) , customer profiling and segmentation
Journal title :
Istanbul Business Research (IBR)
Journal title :
Istanbul Business Research (IBR)
Record number :
2700480
Link To Document :
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