4.7 Article

ASER: Towards large-scale commonsense knowledge acquisition via higher-order selectional preference over eventualities

期刊

ARTIFICIAL INTELLIGENCE
卷 309, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.artint.2022.103740

关键词

Commonsense acquisition; Selectional preference; Eventualities

资金

  1. RGC of Hong Kong [16211520, R602019, R602120]
  2. NSFC of China [U20B2053]
  3. ITC of Hong Kong [MHP/001/19]
  4. National Key R&D Program of China [2019YFE0198200]
  5. UGC [RMGS20EG01-D, RMGS20CR11, RMGS20CR12, RMGS20EG19, RMGS20EG21]

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This paper proposes principles for collecting commonsense knowledge based on selectional preference and develops a large-scale knowledge graph called ASER. By collecting higher-order selectional preferences from linguistic graphs, various kinds of commonsense knowledge are reflected. Conceptualization with Probase significantly boosts the coverage of ASER.
Commonsense knowledge acquisition and reasoning have long been a core artificial intelligence problem. However, in the past, there has been a lack of scalable methods to collect commonsense knowledge. In this paper, we propose to develop principles for collecting commonsense knowledge based on selectional preference, which is a common phenomenon in human languages that has been shown to be related to semantics. We generalize the definition of selectional preference from one-hop linguistic syntactic relations to higher-order relations over linguistic graphs. Unlike previous commonsense knowledge definitions (e.g., ConceptNet), the selectional preference (SP) knowledge only relies on statistical distributions over linguistic graphs, which can be efficiently and accurately acquired from the unlabeled corpora with modern tools, rather than human-defined relations. As a result, acquiring SP knowledge is a much more scalable way of acquiring commonsense knowledge. Following this principle, we develop a large-scale eventuality (a linguistic term covering activity, state, and event)-based knowledge graph ASER, where each eventuality is represented as a dependency graph, and the relation between them is a discourse relation defined in shallow discourse parsing. The higher-order selectional preference over collected linguistic graphs reflects various kinds of commonsense knowledge. For example, dogs are more likely to bark than cats as the eventuality dog barks appears 14,998 times in ASER while cat barks only appears 6 times. Be hungry is more likely to be the reason rather than result of eat food as the edge ( be hungry, Cause, eat food ) appears in ASER while ( eat food, Cause, be hungry ) does not. Moreover, motivated by the observation that humans understand events by abstracting the observed events to a higher level and can thus transfer their knowledge to new events, we propose a conceptualization module on top of the collected knowledge to significantly boost the coverage of ASER. In total, ASER contains 648 million edges between 438 million eventualities. After conceptualization with Probase, a selectional preference based concept-instance relational knowledge base, our concept graph contains 15 million conceptualized eventualities and 224 million edges between them. Detailed analysis is provided to demonstrate its quality. (C) 2022 Elsevier B.V. All rights reserved.

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