TY - GEN
T1 - Applying taxonomic knowledge and semantic collaborative filtering to personalized search
T2 - 12th International Asia Pacific Web Conference, APWeb 2010
AU - Lee, Jae Won
AU - Kim, Han Joon
AU - Lee, Sang Goo
PY - 2010
Y1 - 2010
N2 - Keyword-based search exploits the exact match between the index terms of a query and documents. Thus, some documents, although they are relevant to the given query, may not be returned to users unless the documents include the index terms of the query. Some search engines use the authority of documents, which is derived from the links of documents, to help keyword-based search provide more accurate search results. However, unlike the Web documents, if the links between documents do not exist, it is difficult to exploit the authority for ranking documents. In this paper, our goals are to derive the implicit authority of documents that do not have explicit links through semantic collaborative filtering (SCF), and to retrieve documents that are semantically related to the given query. To achieve these goals, we represent users' preferences, queries and documents with their corresponding concepts by extending a Bayesian belief network. It is because the Bayesian belief network provides a clear formalism for mapping the users' preferences, queries and documents to their corresponding concepts. The concepts are extracted from a taxonomic knowledgebase such as the Open Directory Project Web directory. In our experiment, we have shown that the extended Bayesian belief network using taxonomic knowledge outperforms the conventional approaches for personalized search.
AB - Keyword-based search exploits the exact match between the index terms of a query and documents. Thus, some documents, although they are relevant to the given query, may not be returned to users unless the documents include the index terms of the query. Some search engines use the authority of documents, which is derived from the links of documents, to help keyword-based search provide more accurate search results. However, unlike the Web documents, if the links between documents do not exist, it is difficult to exploit the authority for ranking documents. In this paper, our goals are to derive the implicit authority of documents that do not have explicit links through semantic collaborative filtering (SCF), and to retrieve documents that are semantically related to the given query. To achieve these goals, we represent users' preferences, queries and documents with their corresponding concepts by extending a Bayesian belief network. It is because the Bayesian belief network provides a clear formalism for mapping the users' preferences, queries and documents to their corresponding concepts. The concepts are extracted from a taxonomic knowledgebase such as the Open Directory Project Web directory. In our experiment, we have shown that the extended Bayesian belief network using taxonomic knowledge outperforms the conventional approaches for personalized search.
UR - http://www.scopus.com/inward/record.url?scp=77954282332&partnerID=8YFLogxK
U2 - 10.1109/APWeb.2010.26
DO - 10.1109/APWeb.2010.26
M3 - Conference contribution
AN - SCOPUS:77954282332
SN - 9780769540122
T3 - Advances in Web Technologies and Applications - Proceedings of the 12th Asia-Pacific Web Conference, APWeb 2010
SP - 75
EP - 81
BT - Advances in Web Technologies and Applications - Proceedings of the 12th Asia-Pacific Web Conference, APWeb 2010
Y2 - 6 April 2010 through 8 April 2010
ER -