Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
515567 | Information Processing & Management | 2013 | 9 Pages |
We propose a social relation extraction system using dependency-kernel-based support vector machines (SVMs). The proposed system classifies input sentences containing two people’s names on the basis of whether they do or do not describe social relations between two people. The system then extracts relation names (i.e., social-related keywords) from sentences describing social relations. We propose new tree kernels called dependency trigram kernels for effectively implementing these processes using SVMs. Experiments showed that the proposed kernels delivered better performance than the existing dependency kernel. On the basis of the experimental evidence, we suggest that the proposed system can be used as a useful tool for automatically constructing social networks from unstructured texts.
► A social relation extraction system using dependency-kernel-based SVMs. ► A two step model for relational sentence selection and relation-name extraction. ► High improvements of precisions and recall rates.