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Instance-Based Neural Dependency Parsing
Author(s) -
Hiroki Ouchi,
Jun Suzuki,
Sosuke Kobayashi,
Sho Yokoi,
Tatsuki Kuribayashi,
Masashi Yoshikawa,
Kentaro Inui
Publication year - 2021
Publication title -
transactions of the association for computational linguistics
Language(s) - English
Resource type - Journals
ISSN - 2307-387X
DOI - 10.1162/tacl_a_00439
Subject(s) - computer science , inference , dependency (uml) , artificial intelligence , parsing , grasp , dependency grammar , set (abstract data type) , machine learning , process (computing) , enhanced data rates for gsm evolution , artificial neural network , natural language processing , programming language
Interpretable rationales for model predictions are crucial in practical applications. We develop neural models that possess an interpretable inference process for dependency parsing. Our models adopt instance-based inference, where dependency edges are extracted and labeled by comparing them to edges in a training set. The training edges are explicitly used for the predictions; thus, it is easy to grasp the contribution of each edge to the predictions. Our experiments show that our instance-based models achieve competitive accuracy with standard neural models and have the reasonable plausibility of instance-based explanations.

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