RT - Journal Article T1 - Designing a System for Trend Analysis of Users in Website Surfing in Iran Using Data Mining and Text Mining Algorithms JF - hii YR - 2017 JO - hii VO - 4 IS - 2 UR - http://hii.khu.ac.ir/article-1-2683-en.html SP - 71 EP - 87 K1 - Web Page Categorization K1 - Action Clustering K1 - Web Surfing K1 - Trend Analysis AB - Background and Aim: As of the entrance of web surfing to the lifestyle of a vast majority of people in the society and the need for a more accurate social and cultural policy making in the field, authors intended to analyze the behavior of the society users in viewing different websites so as to help politicians and practitioners. Methods: Design science research method is used in this research. The data sample of research consists of all available users that surf Iranian and foreign websites. For gathering data from various active users, some add-ons were designed and published over browsers so as to gather sufficient data. Results: Through the utilization of text mining algorithms, the browsed webpages were differentiated and using data mining algorithms, the pages were categorized and interpreted. Conclusion: Finally, a comprehensive system was designed for the analysis of internet users’ web browsing trends which contains the data gathering phase and innovative report preparation that can be used as an effective sample for analysis, design, and implementation of web-based analytical systems. LA eng UL http://hii.khu.ac.ir/article-1-2683-en.html M3 ER -