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Sort articles by: Volume | Date | Most Rates | Most Views | Reviews | Alphabet
1.

A fuzzy method for improving the functionality of search engines based on user & quot; s web interactions Pages 377-386 Right click to download the paper Download PDF

Authors: Farzaneh Kabirbeyk, Ali Harounabadi, Mostafa Sabzekar

DOI: 10.5267/j.msl.2015.2.008

Keywords: Fuzzy clustering, Recommender System, Web Personalization, Web Usage Mining

Abstract:
Web mining has been widely used to discover knowledge from various sources in the web. One of the important tools in web mining is mining of web user’s behavior that is considered as a way to discover the potential knowledge of web user’s interaction. Nowadays, Website personalization is regarded as a popular phenomenon among web users and it plays an important role in facilitating user access and provides information of users’ requirements based on their own interests. Extracting important features about web user behavior plays a significant role in web usage mining. Such features are page visit frequency in each session, visit duration, and dates of visiting a certain pages. This paper presents a method to predict user’s interest and to propose a list of pages based on their interests by identifying user’s behavior based on fuzzy techniques called fuzzy clustering method. Due to the user’s different interests and use of one or more interest at a time, user’s interest may belong to several clusters and fuzzy clustering provide a possible overlap. Using the resulted cluster helps extract fuzzy rules. This helps detecting user’s movement pattern and using neural network a list of suggested pages to the users is provided.
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Journal: MSL | Year: 2015 | Volume: 5 | Issue: 4 | Views: 2443 | Reviews: 0

 
2.

Constructing a web recommender system using web usage mining and user’s profiles Pages 2479-2486 Right click to download the paper Download PDF

Authors: T. Mombeini, A. Harounabadi, J. Rezaeian Sheshdeh

Keywords: Fuzzy Clustering, Neural Network, Recommender System, User Profiling, Web Personalization, Web Usage Mining

Abstract:
The World Wide Web is a great source of information, which is nowadays being widely used due to the availability of useful information changing, dynamically. However, the large number of webpages often confuses many users and it is hard for them to find information on their interests. Therefore, it is necessary to provide a system capable of guiding users towards their desired choices and services. Recommender systems search among a large collection of user interests and recommend those, which are likely to be favored the most by the user. Web usage mining was designed to function on web server records, which are included in user search results. Therefore, recommender servers use the web usage mining technique to predict users’ browsing patterns and recommend those patterns in the form of a suggestion list. In this article, a recommender system based on web usage mining phases (online and offline) was proposed. In the offline phase, the first step is to analyze user access records to identify user sessions. Next, user profiles are built using data from server records based on the frequency of access to pages, the time spent by the user on each page and the date of page view. Date is of importance since it is more possible for users to request new pages more than old ones and old pages are less probable to be viewed, as users mostly look for new information. Following the creation of user profiles, users are categorized in clusters using the Fuzzy C-means clustering algorithm and S(c) criterion based on their similarities. In the online phase, a neural network is offered to identify the suggested model while online suggestions are generated using the suggestion module for the active user. Search engines analyze suggestion lists based on rate of user interest in pages and page rank and finally suggest appropriate pages to the active user. Experiments show that the proposed method of predicting user recent requested pages has more accuracy and cover than other methods.
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Journal: MSL | Year: 2014 | Volume: 4 | Issue: 12 | Views: 2799 | Reviews: 0

 

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