Sequential Pattern Discovery from Web Log Data
نویسندگان
چکیده
Pattern mining from the web log data leads to discovery of usage patterns of the user who navigate the web. Patterns which appear frequently in the web log data are item-sets and sequences. In this paper, a novel algorithm Intelligent Generalized Sequential pattern (IGSP) is designed which shows better results than the Generalized Sequential Pattern (GSP) algorithm. Experiment is conducted with respect to running time and number of patterns discovered from the log data and results has shown that IGSP outperforms the well-known algorithms (GSP) algorithm.
منابع مشابه
Sequential Pattern Mining from Web Log Data
Sequential Pattern Mining involves applying data mining methods to large web data repositories to extract usage patterns. The growing popularity of the World Wide Web, many websites typically experience thousands of visitors every day. Analysis of who browsed what, can give important insight into the buying pattern of existing customers. Correct and timely decisions made based on this knowledge...
متن کاملA Neoteric Web Recommender System based on Approach of Mining Frequent Sequential Pattern from Customized Web Log Preprocessing
A real world challenging task of the web master of an organization is to match the needs of user and keep their attention in their web site. So, only option is to capture the intuition of the user and provide them with the recommendation list. Web usage mining is a kind of data mining method that provide intelligent personalized online services such as web recommendations, it is usually necessa...
متن کاملAn Efficient System Based On Closed Sequential Patterns for Web Recommendations
Sequential pattern mining, since its introduction has received considerable attention among the researchers with broad applications. The sequential pattern algorithms generally face problems when mining long sequential patterns or while using very low support threshold. One possible solution of such problems is by mining the closed sequential patterns, which is a condensed representation of seq...
متن کاملAccess Patterns in Web Log Data: A Review
The traffic on World Wide Web is increasing rapidly and huge amount of information is generated due to users interactions with web sites. To utilize this information, identifying usage pattern of users is very important. Web Usage Mining is the application of data mining techniques to discover the useful, hidden information about the users and interesting patterns from data extracted from Web L...
متن کاملDiscovery of Frequent Patterns from Web Log Data by using FP-Growth algorithm for Web Usage Mining
Web usage mining refers to the automatic discovery and analysis of patterns in click stream and associated data collected or generated as a result of user interactions with web resources on one or more web sites. It consists of three phases which are data Preprocessing, pattern discovery and pattern analysis. In the pattern discovery phase, frequent pattern discovery algorithms applied on raw d...
متن کامل