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- Title
Interpreting and predicting social commerce intention based on knowledge graph analysis.
- Authors
Yuan, Liu; Huang, Zhao; Zhao, Wei; Stakhiyevich, Pavel
- Abstract
There have been significant efforts to understand, describe, and predict the social commerce intention of users in the areas of social commerce and web data management. Based on recent developments in knowledge graph and inductive logic programming in artificial intelligence, in this paper, we propose a knowledge-graph-based social commerce intention analysis method. In particular, a knowledge base is constructed to represent the social commerce environment by integrating information related to social relationships, social commerce factors, and domain background knowledge. In this study, knowledge graphs are used to represent and visualize the entities and relationships related to social commerce, while inductive logic programming techniques are used to discover implicit information that can be used to interpret the information behaviors and intentions of the users. Evaluation tests confirmed the effectiveness of the proposed method. In addition, the feasibility of using knowledge graphs and knowledge-based data mining techniques in the social commerce environment is also confirmed.
- Subjects
KNOWLEDGE base; ELECTRONIC commerce; INDUCTION (Logic); LOGIC programming; COMMERCE
- Publication
Electronic Commerce Research, 2020, Vol 20, Issue 1, p197
- ISSN
1389-5753
- Publication type
Article
- DOI
10.1007/s10660-019-09392-1