Many e-commerce web sites such as online book retailers or specialized information hubs such as online movie databases make use of recommendation systems where users are directed to items of interests based on past user interactions. Keyword-based approaches, collaborative and content filtering techniques have been tried and used over the years each having their own shortcomings. While keyword based approaches are naive and do not take content or context into account collaborative and content filtering techniques suffer from biased ratings, first item and first-rater problems. Recent approaches try to incorporate underlying semantic properties of data by employing ontology based usage mining. This thesis aims to design a recommendation syst...
Web usage mining has become popular in various business areas related with Web site development. In ...
Avoiding digital marketing, surveys, reviews and online users behavior approaches on digital age are...
Collaborative filtering based recommender systems have proven to be extremely successful in settings...
One of the most famous methods for recommendation is user-based Collaborative Filtering (CF). This s...
Traditional collaborative filtering generates recommendations for the active user based solely on ra...
Recommender systems have emerged in the e-commerce domain and have been developed to actively recomm...
Web users are nowadays confronted with the huge variety of available information sources whose conte...
The amount of information and users has been increasing at a remarkable rate in recent years. This i...
Recent technological advances in many networks and applications, particularly the Internet and the W...
Abstract: Problem statement: Every web user has different intent when accessing the information on w...
Currently, for content-based recommendations, semantic analysis of text from webpages seems to be a ...
Ontologies are being successfully used to overcome semantic heterogeneity, and are becoming fundamen...
In this network era, Web Page Recommendation and web page Recommendation systems can take advantage ...
A recommender system captures the user preferences and behaviour to provide a relevant recommendatio...
Tools for filtering the World Wide Web exist, but they are hampered by the difficulty of capturing u...
Web usage mining has become popular in various business areas related with Web site development. In ...
Avoiding digital marketing, surveys, reviews and online users behavior approaches on digital age are...
Collaborative filtering based recommender systems have proven to be extremely successful in settings...
One of the most famous methods for recommendation is user-based Collaborative Filtering (CF). This s...
Traditional collaborative filtering generates recommendations for the active user based solely on ra...
Recommender systems have emerged in the e-commerce domain and have been developed to actively recomm...
Web users are nowadays confronted with the huge variety of available information sources whose conte...
The amount of information and users has been increasing at a remarkable rate in recent years. This i...
Recent technological advances in many networks and applications, particularly the Internet and the W...
Abstract: Problem statement: Every web user has different intent when accessing the information on w...
Currently, for content-based recommendations, semantic analysis of text from webpages seems to be a ...
Ontologies are being successfully used to overcome semantic heterogeneity, and are becoming fundamen...
In this network era, Web Page Recommendation and web page Recommendation systems can take advantage ...
A recommender system captures the user preferences and behaviour to provide a relevant recommendatio...
Tools for filtering the World Wide Web exist, but they are hampered by the difficulty of capturing u...
Web usage mining has become popular in various business areas related with Web site development. In ...
Avoiding digital marketing, surveys, reviews and online users behavior approaches on digital age are...
Collaborative filtering based recommender systems have proven to be extremely successful in settings...