Using Self-organizing Maps for Analyzing Credit Rating and Financial Ratio Data
Credit rating granting in rating agencies is a complex decision making process for outside rating information users. The data these rating agencies required for making rating decision cover many facets, including financial data, operations data, the data regarding interview with top managers of issuers, etc. The systematic rating process, such as how each data item contributes to each specific rating granting, is still blind to the outsiders. Therefore, this study proposes an easy analytical tool for visualizing the relationships between credit rating information and financial ratio data. Selforganizing maps (SOMs) have been effectively used for visualizing and clustering tasks in numerous applications, such as financial statement analysis and document analysis, and thus this study applies SOMs on analyzing the relationship patterns. Banking industry data arc used as the test bed. The study results demonstrate that the SOM could be a feasible tool for uncovering the relationships between those rating symbols and the data referred by rating agencies.
credit ratings self-organizing maps data mining financial ratio.
Jen-Ying Shih
Graduate Institute of Global Business and Strategy Taiwan Normal University Chinese Taipei
国际会议
大连
英文
109-112
2011-07-10(万方平台首次上网日期,不代表论文的发表时间)