Commonsense in Parts: Mining Part-Whole Relations from the Web and Image Tags

Authors

  • Niket Tandon Max Planck Institute for Informatics
  • Charles Hariman Max Planck Institute for Informatics
  • Jacopo Urbani Max Planck Institute for Informatics and VU University Amsterdam
  • Anna Rohrbach Max Planck Institute for Informatics
  • Marcus Rohrbach University of California, Berkeley
  • Gerhard Weikum Max Planck Institute for Informatics

DOI:

https://doi.org/10.1609/aaai.v30i1.9992

Keywords:

part whole knowledge, commonsense knowledge, knowledge bases

Abstract

Commonsense knowledge about part-whole relations (e.g., screen partOf notebook) is important for interpreting user input in web search and question answering, or for object detection in images. Prior work on knowledge base construction has compiled part-whole assertions, but with substantial limitations: i) semantically different kinds of part-whole relations are conflated into a single generic relation, ii) the arguments of a part-whole assertion are merely words with ambiguous meaning, iii) the assertions lack additional attributes like visibility (e.g., a nose is visible but a kidney is not) and cardinality information (e.g., a bird has two legs while a spider eight), iv) limited coverage of only tens of thousands of assertions. This paper presents a new method for automatically acquiring part-whole commonsense from Web contents and image tags at an unprecedented scale, yielding many millions of assertions, while specifically addressing the four shortcomings of prior work. Our method combines pattern-based information extraction methods with logical reasoning. We carefully distinguish different relations: physicalPartOf, memberOf, substanceOf. We consistently map the arguments of all assertions onto WordNet senses, eliminating the ambiguity of word-level assertions. We identify whether the parts can be visually perceived, and infer cardinalities for the assertions. The resulting commonsense knowledge base has very high quality and high coverage, with an accuracy of 89% determined by extensive sampling, and is publicly available.

Downloads

Published

2016-02-21

How to Cite

Tandon, N., Hariman, C., Urbani, J., Rohrbach, A., Rohrbach, M., & Weikum, G. (2016). Commonsense in Parts: Mining Part-Whole Relations from the Web and Image Tags. Proceedings of the AAAI Conference on Artificial Intelligence, 30(1). https://doi.org/10.1609/aaai.v30i1.9992