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FastKASSIM: A Fast Tree Kernel-Based Syntactic Similarity Metric

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arxiv 2203.08299 v4 pith:NIFUYZS3 submitted 2022-03-15 cs.CL

FastKASSIM: A Fast Tree Kernel-Based Syntactic Similarity Metric

classification cs.CL
keywords syntacticdocumentsfastkassimsimilaritydocument-levelmetricchangemyviewcorpus
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Syntax is a fundamental component of language, yet few metrics have been employed to capture syntactic similarity or coherence at the utterance- and document-level. The existing standard document-level syntactic similarity metric is computationally expensive and performs inconsistently when faced with syntactically dissimilar documents. To address these challenges, we present FastKASSIM, a metric for utterance- and document-level syntactic similarity which pairs and averages the most similar constituency parse trees between a pair of documents based on tree kernels. FastKASSIM is more robust to syntactic dissimilarities and runs up to to 5.32 times faster than its predecessor over documents in the r/ChangeMyView corpus. FastKASSIM's improvements allow us to examine hypotheses in two settings with large documents. We find that syntactically similar arguments on r/ChangeMyView tend to be more persuasive, and that syntax is predictive of authorship attribution in the Australian High Court Judgment corpus.

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