Applied Sciences (Dec 2021)

Achieving Semantic Consistency for Multilingual Sentence Representation Using an Explainable Machine Natural Language <i>Parser</i> (<i>MParser</i>)

  • Peng Qin,
  • Weiming Tan,
  • Jingzhi Guo,
  • Bingqing Shen,
  • Qian Tang

DOI
https://doi.org/10.3390/app112411699
Journal volume & issue
Vol. 11, no. 24
p. 11699

Abstract

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In multilingual semantic representation, the interaction between humans and computers faces the challenge of understanding meaning or semantics, which causes ambiguity and inconsistency in heterogeneous information. This paper proposes a Machine Natural Language Parser (MParser) to address the semantic interoperability problem between users and computers. By leveraging a semantic input method for sharing common atomic concepts, MParser represents any simple English sentence as a bag of unique and universal concepts via case grammar of an explainable machine natural language. In addition, it provides a human and computer-readable and -understandable interaction concept to resolve the semantic shift problems and guarantees consistent information understanding among heterogeneous sentence-level contexts. To evaluate the annotator agreement of MParser outputs that generates a list of English sentences under a common multilingual word sense, three expert participants manually and semantically annotated 75 sentences (505 words in total) in English. In addition, 154 non-expert participants evaluated the sentences’ semantic expressiveness. The evaluation results demonstrate that the proposed MParser shows higher compatibility with human intuitions.

Keywords