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학술논문경영과학2002.05 발행KCI 피인용 2

자료융합방법의 성과에 대체수준이 미치는 영향에 관한 연구:몬테카를로 시뮬레이션 접근방법

Exploring the Effect of Replacement Levels on Data Fusion Methods:A Monte Carlo Simulation Approach

김성호(한양대학교); 조성빈(건국대학교); 백승익(한양대학교)

19권 1호, 129~141쪽

초록

Data fusion is a technique used for creating an integrated database by combining two or more databases that include a different set of variables or attributes. This paper attempts to apply data fusion technique to customer relationships management (CRM), in that we can not only plan a database structure but also collect and manage customer data in a more efficient way. In particular, our study is useful when no single database is complete, i.e., each and every subject in the pre-integrated database contains somewhat missing observations. According to the way of treating the common variables, donors can be differently selected for the substitution of the missing attributes of recipients. One way is to find the donor that has the highest correlation coefficient with the recipient by treating common variables metrically. The other is based on the closest distance by the correspondence analysis in case of treating common variables nominally. The predictability of data fusion for CRM can be evaluated by measuring the correlation of the original database and the substituted one. A Monte Carlo Simulation analysis is used to examine the stability of the two substitution methods in building an integrated database.

Abstract

Data fusion is a technique used for creating an integrated database by combining two or more databases that include a different set of variables or attributes. This paper attempts to apply data fusion technique to customer relationships management (CRM), in that we can not only plan a database structure but also collect and manage customer data in a more efficient way. In particular, our study is useful when no single database is complete, i.e., each and every subject in the pre-integrated database contains somewhat missing observations. According to the way of treating the common variables, donors can be differently selected for the substitution of the missing attributes of recipients. One way is to find the donor that has the highest correlation coefficient with the recipient by treating common variables metrically. The other is based on the closest distance by the correspondence analysis in case of treating common variables nominally. The predictability of data fusion for CRM can be evaluated by measuring the correlation of the original database and the substituted one. A Monte Carlo Simulation analysis is used to examine the stability of the two substitution methods in building an integrated database.

발행기관:
한국경영과학회
분류:
경영학

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자료융합방법의 성과에 대체수준이 미치는 영향에 관한 연구:몬테카를로 시뮬레이션 접근방법 | 경영과학 2002 | AskLaw | 애스크로 AI