Title of article :
Document recommendations based on knowledge flows: A hybrid of personalized and group-based approaches
Author/Authors :
Duen-Ren Liu1، نويسنده , , Chin-Hui Lai2، نويسنده , , Ya-Ting Chen3، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2012
Pages :
18
From page :
2100
To page :
2117
Abstract :
Recommender systems can mitigate the information overload problem and help workers retrieve knowledge based on their preferences. In a knowledge-intensive environment, knowledge workers need to access task-related codified knowledge (documents) to perform tasks. A workerʹs document referencing behavior can be modeled as a knowledge flow (KF) to represent the evolution of his or her information needs over time. Document recommendation methods can proactively support knowledge workers in the performance of tasks by recommending appropriate documents to meet their information needs. However, most traditional recommendation methods do not consider workers’ KFs or the information needs of the majority of a group of workers with similar KFs. A groupʹs needs may partially reflect the needs of an individual worker that cannot be inferred from his or her past referencing behavior. In other words, the groupʹs knowledge complements that of the individual worker. Thus, we leverage the group perspective to complement the personal perspective by using hybrid approaches, which combine the KF-based group recommendation method (KFGR) with traditional personalized-recommendation methods. The proposed hybrid methods achieve a trade-off between the group-based and personalized methods by exploiting the strengths of both. The results of our experiment show that the proposed methods can enhance the quality of recommendations made by traditional methods.
Keywords :
Data mining , collaborative filtering
Journal title :
Journal of the American Society for Information Science and Technology
Serial Year :
2012
Journal title :
Journal of the American Society for Information Science and Technology
Record number :
994744
Link To Document :
بازگشت