会议专题

Deep Web Sources Classifier Based on DSOM-EACO Clustering Model

There are many deep web sources providing the services, but we may not be aware of their existence, and not know which sources can satisfy our demands. So that there is a great significant to build a system to integrate the myriad deep web sources in the Internet, and the classification of deep web sources is very important in the integration. In this paper, a clustering model based on dynamic selforganizing maps (DSOM) and enhanced ant colony optimization (EACO) is systematically proposed for deep web sources classification. The basic idea of the model is to produce the cluster by DSOM and EACO. With the classified data instances, the classifier can be established. And then the classifier can be used in real deep web sources classification, and it is observed that the proposed approach gives better performance over some traditional approaches for deep web sources classification problems.

deep web sources classification classifier dynamic self-organizing maps ant colony optimization clustering

Yong Feng Xianyong Chen Zhen Chen

College of Computer Science Chongqing University Chongqing 400030 China

国际会议

6th International Conference on Advanced Data Mining and Applications(第六届先进数据挖掘及应用国际会议 ADMA 2010)

重庆

英文

238-245

2010-11-19(万方平台首次上网日期,不代表论文的发表时间)