earticle

논문검색

Research Articles

Multi-Class SVM+MTL for the Prediction of Corporate Credit Rating with Structured Data

원문정보

Gang Ren, Taeho Hong, YoungKi Park

피인용수 : 0(자료제공 : 네이버학술정보)

초록

영어

Many studies have focused on the prediction of corporate credit rating using various data mining techniques. One of the most frequently used algorithms is support vector machines (SVM), and recently, novel techniques such as SVM+ and SVM+MTL have emerged. This paper intends to show the applicability of such new techniques to multi-classification and corporate credit rating and compare them with conventional SVM regarding prediction performance. We solve multi-class SVM+ and SVM+MTL problems by constructing several binary classifiers. Furthermore, to demonstrate the robustness and outstanding performance of SVM+MTL algorithm over other techniques, we utilized four typical multi-class processing methods in our experiments. The results show that SVM+MTL outperforms both conventional SVM and novel SVM+ in predicting corporate credit rating. This study contributes to the literature by showing the applicability of new techniques such as SVM+ and SVM+MTL and the outperformance of SVM+MTL over conventional techniques. Thus, this study enriches solving techniques for addressing multi-class problems such as corporate credit rating prediction.

목차

ABSTRACT
 Ⅰ. Introduction
 Ⅱ. Literature Review
  2.1. Support Vector Machine (SVM)
  2.2. SVM+
  2.3. SVM+MTL (Multi-Task Learning)
  2.4. Corporate Credit Rating
  2.5. Multi-Classification Methods
 Ⅲ. Research Framework
 Ⅳ. Experiments and Analysis
  4.1. Datasets
  4.2. Experimental Design
  4.3. Results Analysis
 Ⅴ. Conclusion
 

저자정보

  • Gang Ren Doctoral Candidate, Department of Business Administration, Pusan National University, Korea
  • Taeho Hong Professor, Department of Business Administration, Pusan National University, Korea
  • YoungKi Park Assistant Professor, Department of Information Systems and Technology Management, George Washington University, USA

참고문헌

자료제공 : 네이버학술정보

    함께 이용한 논문

      ※ 기관로그인 시 무료 이용이 가능합니다.

      • 5,200원

      0개의 논문이 장바구니에 담겼습니다.