Web transaction data between Web visitors and Web functionalities usually convey user task-oriented behavior pattern. Mining
such type of clickstream data will lead to capture usage pattern information. Nowadays Web usage mining technique has become
one of most widely used methods for Web recommendation, which customizes Web content to user-preferred style. Traditional
techniques of Web usage mining, such as Web user session or Web page clustering, association rule and frequent navigational
path mining can only discover usage pattern explicitly. They, however, cannot reveal the underlying navigational activities
and identify the latent relationships that are associated with the patterns among Web users as well as Web pages. In this
work, we propose a Web recommendation framework incorporating Web usage mining technique based on Probabilistic Latent Semantic Analysis (PLSA) model. The main advantages of this method are, not only to discover usage-based access pattern, but also to reveal
the underlying latent factor as well. With the discovered user access pattern, we then present user more interested content
via collaborative recommendation. To validate the effectiveness of proposed approach, we conduct experiments on real world
datasets and make comparisons with some existing traditional techniques. The preliminary experimental results demonstrate
the usability of the proposed approach.