AIAug 18, 2020

Commonsense Knowledge in Wikidata

arXiv:2008.08114v220 citations
Originality Synthesis-oriented
AI Analysis

This addresses the problem of limited commonsense knowledge sources for natural language applications, though it is incremental as it builds on existing resources like Wikidata and ConceptNet.

The paper investigated whether Wikidata contains commonsense knowledge complementary to existing sources, finding that a small portion can be mapped to 15 ConceptNet relations with low overlap to other sources, indicating its potential value.

Wikidata and Wikipedia have been proven useful for reason-ing in natural language applications, like question answering or entitylinking. Yet, no existing work has studied the potential of Wikidata for commonsense reasoning. This paper investigates whether Wikidata con-tains commonsense knowledge which is complementary to existing commonsense sources. Starting from a definition of common sense, we devise three guiding principles, and apply them to generate a commonsense subgraph of Wikidata (Wikidata-CS). Within our approach, we map the relations of Wikidata to ConceptNet, which we also leverage to integrate Wikidata-CS into an existing consolidated commonsense graph. Our experiments reveal that: 1) albeit Wikidata-CS represents a small portion of Wikidata, it is an indicator that Wikidata contains relevant commonsense knowledge, which can be mapped to 15 ConceptNet relations; 2) the overlap between Wikidata-CS and other commonsense sources is low, motivating the value of knowledge integration; 3) Wikidata-CS has been evolving over time at a slightly slower rate compared to the overall Wikidata, indicating a possible lack of focus on commonsense knowledge. Based on these findings, we propose three recommended actions to improve the coverage and quality of Wikidata-CS further.

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