標題: The Optimal Re-sampling Strategy for a Risk Assessment Model
作者: Tong, L. I.
Wei, W. Y.
Wu, P. Y.
工業工程與管理學系
Department of Industrial Engineering and Management
關鍵字: Risk assessment;Re-sampling strategy;Imbalanced data;Design of Experiments;Dual Response Surface Methodology
公開日期: 2012
摘要: The global economic environment is changing rapidly. Consequently, the financial risks of banks or financial institutions are also increased. Banks or financial institutions often utilize various classification methods to construct risk assessment models to determine whether to grant loans to a corporation or an individual. It is often found that the data used to construct a risk assessment model are imbalanced. That is, the number of default is significantly smaller than the number of non-default. In this case, most classification methods fail to construct an accurate risk assessment model since the classification methods are subjected to the imbalanced data. The try-and-error method is often utilized to balance the sample sizes for default and non-default classes. However, the try-and error method is costly and the sampling strategy determined by the try-and-error method may not effectively classify the imbalanced data. Therefore, this study aims to develop an optimal re-sampling strategy using design of experiments (DOE) and dual response surface methodology (DRS). The proposed method can be employed for any classification method to develop a risk assessment model. The effectiveness of the proposed procedure is verified using a real case from a Taiwanese financial institution.
URI: http://hdl.handle.net/11536/21330
ISBN: 978-0-9763486-8-9
期刊: PROCEEDINGS 18TH ISSAT INTERNATIONAL CONFERENCE ON RELIABILITY & QUALITY IN DESIGN
起始頁: 293
結束頁: 295
顯示於類別:會議論文