Improving prediction performance of customer behavior : applied to customer relationship management and credit risk management고객행동예측 성과개선에 관한 연구 : 고객관계관리 및 신용위험관리에의 적용

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Increasing competition in business and newly emerging information technology have led to the development of concepts that focus on nurturing the relationship with customers. The challenge of achieving a good relationship with customers is based on service which is individualized for each customer’s preference, and this naturally requires obtaining “customer information” and developing information-based business strategies. The quality of customer information is a very important factor for developing such customer-related strategies. ‘Completeness’ is one of the fundamental data quality components. Incomplete data can yield biased analysis results and undermine the accuracy of predictive models for customer behavior, which may lead to inappropriate decision-making processes and the development of wrong marketing or risk strategies. This study is organized in two parts and investigates the incomplete data problem and suggests a methodology to improve the prediction performance of customer behavior in two customer-related strategies: Customer Relation Management (CRM) in Part I and Credit Risk Management in Part II. In Part I, we examine the incomplete data problem caused by missing values. To solve the problem, we suggest a novel approach to integrate multiple-imputation (MI) and bootstrap-imputation methods into the conventional methodology. Two experimental works are applied to real cases in electronic customer relationship management (e-CRM) domain. The first predicts the customer purchase likelihood in an online shopping mall with missing covariates and the second builds a collaborative filtering system in the case of missing target values. According to the results, the MI-based predictive models perform better than the traditional approach in both of the case studies, especially in the dataset with a high missing rate compared to the one with a low missing rate. Bootstrap-based approaches also produce better results than the traditional approach. However, t...
Advisors
Han, In-Gooresearcher한인구researcher
Description
한국과학기술원 : 경영공학전공,
Publisher
한국과학기술원
Issue Date
2005
Identifier
244465/325007  / 000959036
Language
eng
Description

학위논문(박사) - 한국과학기술원 : 경영공학전공, 2005.2, [ viii, 127 p. ]

Keywords

생존분석; 다중대치; 신용위험관리; 고객관계관리; 불완전 자료기; Incomplete dataisplacement; Survival Analysis; Multiple Imputation; Credit Risk Management; Customer Relationship Management; 감산변위유지방안

URI
http://hdl.handle.net/10203/53439
Link
http://library.kaist.ac.kr/search/detail/view.do?bibCtrlNo=244465&flag=dissertation
Appears in Collection
KGSM-Theses_Ph.D.(박사논문)
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