会议专题

Application of Radial Basis Function Neural Network Based on Ant Colony Algorithm in Credit Evaluation of Real Estate Enterprises

The credit evaluation index system is the decisive basis for investment. The existing credit evaluation systems of real estate enterprises mostly adopt the Back Propagation (BP) neural network which increasingly shows its limitations, such as slow convergent speed and easy convergence to the local minimum points. In order to evaluate the credit of real estate enterprises more reasonably and comprehensively, this paper establishes a systematic credit evaluation index system ,in which indexes,such as comprehensive qualities of leaders, loans status, third-party guarantee, have received due attention. And then, this paper proposes a new crediting evaluation model that combined ant colony algorithm (ACA) with radial basis function (RBF) neural network for quantitative evaluation, and take credit status of 30 listed real estate enterprises as samples to train and test the model. It shows not only the extensive mapping ability, but also the exceUent performance of high efficiency, rapid convergence and distributed computation of ant colony algorithm. From the experimental results, it is effective and suitable to apply this method to credit comprehensive evaluation index system of real estate enterprises.

Credit evaluation Neural network Radial basis function (RBF) Ant colony algorithm (ANA) Evaluation index system

WU Yunna SI Zhaomin

School of Business Administration North China Electric Power University,P.R.China,102206

国际会议

2008 International Conference of Management Science and Engineering(2008管理科学与工程国际学术会议)

河南焦作

英文

1322-1329

2008-11-01(万方平台首次上网日期,不代表论文的发表时间)