Facebook Instagram Twitter RSS Feed PodBean Back to top on side

Integration of Link and Semantic Relations for Information Recommendation

In: Computing and Informatics, vol. 35, no. 1
Q. Zhao - Y. He - C. Jiang - P. Wang - M. Qi - M. Li

Details:

Year, pages: 2016, 30 - 54
Keywords:
Information retrieval, data mining, link similarity, information recommendation
About article:
Information services on the Internet are being used as an important tool to facilitate discovery of the information that is of user interests. Many approaches have been proposed to discover the information on the Internet, while the search engines are the most common ones. However, most of the current approaches of information discovery can discover the keyword-matching information only but cannot recommend the most recent and relative information to users automatically. Sometimes users can give only a fuzzy keyword instead of an accurate one. Thus, some desired information would be ignored by the search engines. Moreover, the current search engines cannot discover the latent but logically relevant information or services for users. This paper measures the semantic-similarity and link-similarity between keywords. Based on that, it introduces the concept of similarity of web pages, and presents a method for information recommendation. The experimental evaluation and comparisons with the existing studies are finally performed.
How to cite:
ISO 690:
Zhao, Q., He, Y., Jiang, C., Wang, P., Qi, M., Li, M. 2016. Integration of Link and Semantic Relations for Information Recommendation. In Computing and Informatics, vol. 35, no.1, pp. 30-54. 1335-9150.

APA:
Zhao, Q., He, Y., Jiang, C., Wang, P., Qi, M., Li, M. (2016). Integration of Link and Semantic Relations for Information Recommendation. Computing and Informatics, 35(1), 30-54. 1335-9150.