WordNet: a lexical database for English
Communications of the ACM
Personalization on the Net using Web mining: introduction
Communications of the ACM
Personalized web search by mapping user queries to categories
Proceedings of the eleventh international conference on Information and knowledge management
Context and Page Analysis for Improved Web Search
IEEE Internet Computing
What Are Ontologies, and Why Do We Need Them?
IEEE Intelligent Systems
OntoSeek: Content-Based Access to the Web
IEEE Intelligent Systems
HELIOS: a General Framework for Ontology-based Knowledge Sharing and Evolution in P2P Systems
DEXA '03 Proceedings of the 14th International Workshop on Database and Expert Systems Applications
SEWeP: using site semantics and a taxonomy to enhance the Web personalization process
Proceedings of the ninth ACM SIGKDD international conference on Knowledge discovery and data mining
Web personalization integrating content semantics and navigational patterns
Proceedings of the 6th annual ACM international workshop on Web information and data management
Wise-integrator: an automatic integrator of web search interfaces for E-commerce
VLDB '03 Proceedings of the 29th international conference on Very large data bases - Volume 29
Efficient indexing technique for XML-based electronic product catalogs
Electronic Commerce Research and Applications
An endorser discovering mechanism for social advertising
Proceedings of the 11th International Conference on Electronic Commerce
Rank B2C e-commerce websites in e-alliance based on AHP and fuzzy TOPSIS
Expert Systems with Applications: An International Journal
A semantic query approach to personalized e-catalogs service system
Journal of Theoretical and Applied Electronic Commerce Research
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In this paper, an e-commerce site recommendation system that integrates multiple e-commerce sites is proposed. This system provides the users with a unified portal through which the users can search individual suppliers' product categories efficiently. The core part of the system is an intelligent product meta-search engine that has the following functions: (1) it provides category-based query, with which a buyer can describe his or her product search intention using superclass/subclass relationship, (2) by using WordNet, the buyer's query is semantically extended in order to increase product search accuracy, and (3) the meta-search engine decides a recommended priority of the suppliers by matching the buyer's query with the suppliers' product categories and computing a semantic relevancy measure. Experiments show that the performance of the meta-search is better than those of general keyword-based search and category-based search.