Currently, for content-based recommendations, semantic analysis of text from webpages seems to be a major problem. In this research, we present a semantic web content mining approach for recommender systems in online shopping. The methodology is based on two major phases. The first phase is the semantic preprocessing of textual data using the combination of a developed ontology and an existing ontology. The second phase uses the Naïve Bayes algorithm to make the recommendations. The output of the system is evaluated using precision, recall and f-measure. The results from the system showed that the semantic preprocessing improved the recommendation accuracy of the recommender system by 5.2% over the existing approach. Also, the developed...
With the paradigm shift in business strategy in terms of online marketing and e-commerce and to comp...
International audienceThis paper is interested in a recommender system of economic news articles. Mo...
Current Data Mining techniques usually do not have a mechanism to automatically infer semantic featu...
News-papers, blogs, and web-pages are a rich and diverse source of textual information. However, the...
In this network era, Web Page Recommendation and web page Recommendation systems can take advantage ...
Many e-commerce web sites such as online book retailers or specialized information hubs such as onli...
The semantic web is considered to be an extension of the present web. In the semantic web, informati...
Abstract: Problem statement: Every web user has different intent when accessing the information on w...
Today’sworld the growth of the Web has created a big challenge for directing the user to the web pag...
The semantic web is considered to be an extension of the present web. In the semantic web, informati...
Recent technological advances in many networks and applications, particularly the Internet and the W...
With the ever increasing information overload on the internet, recommender systems have long become ...
This paper describes about Semantic Web Mining . The Purpose of this paper is to focus on how semant...
Tools for filtering the World Wide Web exist, but they are hampered by the difficulty of capturing u...
The amount of information and users has been increasing at a remarkable rate in recent years. This i...
With the paradigm shift in business strategy in terms of online marketing and e-commerce and to comp...
International audienceThis paper is interested in a recommender system of economic news articles. Mo...
Current Data Mining techniques usually do not have a mechanism to automatically infer semantic featu...
News-papers, blogs, and web-pages are a rich and diverse source of textual information. However, the...
In this network era, Web Page Recommendation and web page Recommendation systems can take advantage ...
Many e-commerce web sites such as online book retailers or specialized information hubs such as onli...
The semantic web is considered to be an extension of the present web. In the semantic web, informati...
Abstract: Problem statement: Every web user has different intent when accessing the information on w...
Today’sworld the growth of the Web has created a big challenge for directing the user to the web pag...
The semantic web is considered to be an extension of the present web. In the semantic web, informati...
Recent technological advances in many networks and applications, particularly the Internet and the W...
With the ever increasing information overload on the internet, recommender systems have long become ...
This paper describes about Semantic Web Mining . The Purpose of this paper is to focus on how semant...
Tools for filtering the World Wide Web exist, but they are hampered by the difficulty of capturing u...
The amount of information and users has been increasing at a remarkable rate in recent years. This i...
With the paradigm shift in business strategy in terms of online marketing and e-commerce and to comp...
International audienceThis paper is interested in a recommender system of economic news articles. Mo...
Current Data Mining techniques usually do not have a mechanism to automatically infer semantic featu...