Literature DB >> 35402902

Beyond the Failure of Direct-Matching in Keyword Evaluation: A Sketch of a Graph Based Solution.

Max Kölbl1, Yuki Kyogoku1, J Nathanael Philipp1, Michael Richter1, Clements Rietdorf1, Tariq Yousef1.   

Abstract

The starting point of this paper is the observation that methods based on the direct match of keywords are inadequate because they do not consider the cognitive ability of concept formation and abstraction. We argue that keyword evaluation needs to be based on a semantic model of language capturing the semantic relatedness of words to satisfy the claim of the human-like ability of concept formation and abstraction and achieve better evaluation results. Evaluation of keywords is difficult since semantic informedness is required for this purpose. This model must be capable of identifying semantic relationships such as synonymy, hypernymy, hyponymy, and location-based abstraction. For example, when gathering texts from online sources, one usually finds a few keywords with each text. Still, these keyword sets are neither complete for the text nor are they in themselves closed, i.e., in most cases, the keywords are a random subset of all possible keywords and not that informative w.r.t. the complete keyword set. Therefore all algorithms based on this cannot achieve good evaluation results and provide good/better keywords or even a complete keyword set for a text. As a solution, we propose a word graph that captures all these semantic relationships for a given language. The problem with the hyponym/hyperonym relationship is that, unlike synonyms, it is not bidirectional. Thus the space of keyword sets requires a metric that is non-symmetric, in other words, a quasi-metric. We sketch such a metric that works on our graph. Since it is nearly impossible to obtain such a complete word graph for a language, we propose for the keyword task a simpler graph based on the base text upon which the keyword sets should be evaluated. This reduction is usually sufficient for evaluating keyword sets.
Copyright © 2022 Kölbl, Kyogoku, Philipp, Richter, Rietdorf and Yousef.

Entities:  

Keywords:  concept formation; direct matching; keyword evaluation; non-symmetric metric; word graph

Year:  2022        PMID: 35402902      PMCID: PMC8988042          DOI: 10.3389/frai.2022.801564

Source DB:  PubMed          Journal:  Front Artif Intell        ISSN: 2624-8212


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