A folksonomy-based collaborative filtering method for crowdsourcing knowledge-sharing communities
Kangqu Zhou, C. H. Yang, Lvcheng Li, Cong Miao, Lijun Song, Peng Jiang, Jiafu Su
Abstract
Purpose This paper proposes a recommendation method that mines the semantic relationship between resources and combine it with collaborative filtering (CF) algorithm for crowdsourcing knowledge-sharing communities. Design/methodology/approach First, structured tag trees are constructed based on tag co-occurrence to overcome the tags' lack of semantic structure. Then, the semantic similarity between tags is determined based on tag co-occurrence and the tag-tree structure, and the semantic similarity between resources is calculated based on the semantic similarity of the tags. Finally, the user-resource evaluation matrix is filled based on the resource semantic similarity, and the user-based CF is used to predict the user's evaluation of the resources. Findings Folksonomy is a knowledge classification method that is suitable for crowdsourcing knowledge-sharing communities. The semantic similarity between resources can be obtained according to the tags in the folksonomy system, which can be used to alleviate the data sparsity and cold-start problems of CF. Experimental results show that compared with other algorithms, the algorithm in this paper performs better in mean absolute error (MAE) and F 1, which indicates that the proposed algorithm yields better performance. Originality/value The proposed folksonomy-based CF method can help users in crowdsourcing knowledge-sharing communities to better find the resources they need.