首页> 外文会议>International Conference on Management Science and Engineering >Study on Commercial Bank Off-site Regulation Based on GSOM Clustering Method
【24h】

Study on Commercial Bank Off-site Regulation Based on GSOM Clustering Method

机译:基于GSOM聚类方法的商业银行非现场监管研究

获取原文

摘要

Bank is an important part of financial system, which plays an important role in changing save to investment and in payment. So every country takes great supervision and regulation on bank both in developed country and developing country. There are two kinds of regulation ways: on-site regulation and off-site regulation. On-site regulation is a method that needs regulators go to the bank spot themselves. It is indispensably, but it is a way wasting cost and time. While off-site regulation use the data submitted to the regulator by bank for checking bank''s risk. As the development of computer and network, off-site regulation is becoming a useful way for regulation. Compared with on-site regulation, off-site regulation is a continuous and forward regulation method. How to identifying the bad bank which has more risk from good bank and risk early-warning is the work of off-site regulation. Clustering is a way of recognition bad bank. SOM (self-organizing feature map) is a useful tool for clustering. It is used widely in many fields for clustering objects into some class, such as management, finance, and etc. In real regulating process, some data may be a fuzz number or a grey number. For example, if the regulator wants to know the capital adequacy ratio of a bank between January and June, the ratio may be change from 7.5 to 8.2. Considered elements of input node and weight vector of SOM are interval grey numbers in SOM, in this paper, normalized these intervals grey numbers, defined the interval grey number Euclidean distance, and proposed GSOM (grey SOM) model which can solve uncertain problems efficiently. In the end, we studied intelligent clustering of commercial bank off-site regulation empirically using this model. The result showed that: compared with traditional SOM model, GSOM is easy for programming, has a strengthened ability of anti-interference and a higher precision of classification
机译:银行是金融体系的重要组成部分,在不断变化为投资和付款方面发挥着重要作用。因此,每个国家都在发达国家和发展中国家的银行对银行进行了极大的监督和监管。监管方式有两种:现场规定和场外监管。现场规定是一种需要监管机构自己的方法。它是必不可少的,但它是一种浪费成本和时间的方式。虽然非现场监管使用银行向监管机构提交给监管机构的风险。作为计算机和网络的发展,非现场规定正在成为监管的有用方式。与现场调节相比,非现场调节是一种连续和正向的调节方法。如何识别良好银行的风险更大的糟糕银行,并提前预警是非现场监管的工作。聚类是一种识别不良银行的方式。 SOM(自组织特征映射)是群集的有用工具。它在许多字段中广泛用于将对象聚类为某些类,例如管理,金融等。在实际调节过程中,一些数据可以是模糊数或灰度。例如,如果监管机构希望在1月和6月之间知道银行的资本充足率,则该比率可能会从7.5到8.2变为8.2。考虑到SOM的输入节点和权重向量的元素是SOM中的间隔灰色数字,本文归一化这些间隔灰度数,定义了间隔灰度数欧几里德距离,以及所提出的GSOM(灰色SOM)模型,可以有效地解决不确定的问题。最后,我们使用该模型对商业银行非现场规范进行了智能聚类。结果表明:与传统的SOM模型相比,GSOM易于编程,具有加强抗干扰能力和更高的分类精度

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号