원문정보
An Application of Case-Based Reasoning in Forecasting a Successful Implementation of Enterprise Resource Planning Systems : Focus on Small and Medium sized Enterprises Implementing ERP
초록
영어
Case-based Reasoning (CBR) is widely used in business and industry prediction. It is suitable to solve complex and unstructured business problems. Recently, the prediction accuracy of CBR has been enhanced by not only various machine learning algorithms such as genetic algorithms, relative weighting of Artificial Neural Network (ANN) input variable but also data mining technique such as feature selection, feature weighting, feature transformation, and instance selection As a result, CBR is even more widely used today in business area. In this study, we investigated the usefulness of the CBR method in forecasting success in implementing ERP systems. We used a CBR method based on the feature weighting technique to compare the performance of three different models:MDA (Multiple Discriminant Analysis), GECBR (GEneral CBR), FWCBR (CBR with Feature Weighting supported by Analytic Hierarchy Process). The study suggests that the FWCBR approach is a promising method for forecasting of successful ERP implementation in Small and Medium sized Enterprises.
목차
1. 서론
2. 이론적 배경
2.1 ERP 시스템 관련 연구
2.2 CBR과 경영학 분야에서의 응용 연구
2.3 CBR의 속성가중 기법으로써의 AHP 적용
3. 연구모델 및 실험
3.1 연구모델
3.2 연구변수의 조작화
3.3 표본설정 및 자료수집
4. 분석결과
4.1 기초통계분석
4.2 ERP 시스템 구축 및 성과요인의 분석
4.3 ERP 시스템 구축요인의 상대적 중요도측정
4.4 실험결과
5. 결론
참고문헌
