Frame instance extraction and clustering for default knowledge building

Thumbnail Image

Date

2017

Authors

Shah, A.
Basile, V.
Cabrio, E.
Sowmya, Kamath S.

Journal Title

Journal ISSN

Volume Title

Publisher

Abstract

Obtaining and representing common-sense knowledge, useful in a robotics scenario for planning and making inference about the robots' surroundings, is a challenging problem, because such knowledge is typically found in unstructured repositories such as text corpora or small handmade resources. The work described in this paper presents a methodology for automatically creating a default knowledge base about real-world objects for the robotics domain. The proposed method relies on clustering frame instances extracted from natural language text as a way of distilling default knowledge. We collect and parse a natural language corpus using the Web as a source, then perform an agglomerative clustering of frame instances according to an appropriately defined similarity measure, and finally extract prototypical frame instances from each cluster and publish them in LOD-complaint format to promote reuse and interoperability.

Description

Keywords

Citation

CEUR Workshop Proceedings, 2017, Vol.1935, , pp.1-10

Endorsement

Review

Supplemented By

Referenced By