Abstract:In this paper, an enhanced algorithm is proposed for page clustering, which considers both the content of web pages and the site topology. By introducing the content-link ratio and the group inter-link degree and modifying the computation of the support of frequently visited page group, the algorithm can increase theinterestingness of the mining result. The experimental results show that the algorithm converges more rapidly and could find out more interesting page groups than the normal algorithm.