Abstract

The requirement of online users in the website varies dynamically. The recommendation of web pages consisting of user expected information and data is performed by the online recommendation system. The recommendation engine must be self-adaptive and accurate. The existing algorithm uses Depth First Search (DFS) and bee’s foraging approach to create navigation profiles by categorizing the current user activity. The prediction of navigations that are most expected to be visited by online users is also performed. In this study, the recommendation engine formation with optimized resource such as memory, CPU usage and minimum time consumption is proposed using DFS and Genetic Approach (GA). Here, initially the cluster formation is achieved using DFS approach. The method creates an eminent browsing pattern for each user using live session window. The performance of the approach is compared with the existing forager agent. The experimental results show that the proposed approach outperforms the existing methods in accomplishing accurate classification and anticipation of future navigation for the current online user.

Highlights

  • Web Usage Mining (WUM) is the process of determining what the users are looking for on the internet

  • The analysis describes that the proposed Genetic Approach (GA) requires less memory usage when compared to Bee’s Foraging (BF)

  • Depth First Search (DFS) approach is applied to group the similar navigation patterns of users into clusters

Read more

Summary

Introduction

Web Usage Mining (WUM) is the process of determining what the users are looking for on the internet. The online recommendation system is used to recommend the navigations that are most likely to be searched or visited by the online users in the future This is performed by the categorization of the current user activity into navigation profiles. The existing algorithm uses Depth First Search (DFS) for the formation of clusters along with the bee’s foraging approach. It chooses the more profitable, efficient navigation profile for the current user activity. The recommendation engine formation with optimized resources such as memory, CPU usage and minimum time consumption is proposed. It uses DFS and genetic approach for the creation of eminent browsing pattern for each user.

Related Work
Conclusion
Funding Information
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call