Discovery of Fuzzy Multiple-Level Web Browsing Patterns
نویسندگان
چکیده
Web usage mining is the application of data mining techniques to discover usage patterns from web data. It can be used to better understand web usage and better serve the needs of rapidly growing web-based applications. Discovery of browsing patterns, page clusters, user clusters, association rules and usage statistics are some usage patterns in the web domain. Web mining of browsing patterns including simple sequential patterns and sequential patterns with browsing times has been studied recently. However, most of these works focus on mining browsing patterns of web pages directly. In this work, we introduce the problem of mining browsing patterns on multiple levels of a taxonomy comprised of web pages. The browsing time on each web page is used to analyze the retrieval behavior. Since the data collected are numeric, fuzzy concepts are used to process them and to form linguistic terms. A web usage-mining algorithm to discover multiple-level browsing patterns from linguistic data is thus proposed. Each page uses only the linguistic term with maximum cardinality in later mining processes, thus making the number of fuzzy regions to be processed the same as the number of pages. Computation time can thus be greatly reduced. In addition, the inclusion of concept hierarchy (taxonomy) of web pages produces browsing patterns of different granularity. This allows the views of users’ browsing behavior from various levels of perspectives.
منابع مشابه
A top-down fuzzy cross-level Web-mining approach
Web mining of browsing patterns including simple sequential patterns and sequential patterns with browsing times has been studied recently. However, most of these works focus on mining browsing patterns of web pages directly. In this work, we introduce the problem of mining browsing patterns on cross-levels of a taxonomy comprised of web pages. In addition, browsing time is considered and proce...
متن کاملTop-Down Discovery of Cross-Level Web Browsing Sequences on Taxonomy
Web mining has been studied extensively in recent years due to the fact that the discovered information can be used to improve web site design and services, among 2 others. In particular, many techniques for mining user browsing patterns have been proposed in recent years. However, most of these works focus on mining browsing patterns of web pages directly. In this work, we consider the problem...
متن کاملHigh Fuzzy Utility Based Frequent Patterns Mining Approach for Mobile Web Services Sequences
Nowadays high fuzzy utility based pattern mining is an emerging topic in data mining. It refers to discover all patterns having a high utility meeting a user-specified minimum high utility threshold. It comprises extracting patterns which are highly accessed in mobile web service sequences. Different from the traditional fuzzy approach, high fuzzy utility mining considers not only counts of mob...
متن کاملClustering of Web Usage Data Using Fuzzy Tolerance Rough Set Similarity and Table Filling Algorithm
Web Usage Mining is the application of data mining techniques to learn usage patterns from Web server log file in order to understand and better serve the requirements of web based applications. Web Usage Mining includes three most important steps namely Data Preprocessing, Pattern discovery and Analysis of the discovered patterns. One of the most important tasks in Web usage mining is to find ...
متن کاملWeb Page Access Prediction Using Fuzzy Clustering by Local Approximation Memberships (flame) Algorithm
Web page prediction is a technique of web usage mining used to predict the next set of web pages that a user may visit based on the knowledge of previously visited web pages. The World Wide Web (WWW) is a popular and interactive medium for publishing the information. While browsing the web, users are visiting many unwanted pages instead of targeted page. The web usage mining techniques are used...
متن کامل