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arxiv 2109.07231 v1 pith:N6YK3QZK submitted 2021-09-15 cs.CL

SWEAT: Scoring Polarization of Topics across Different Corpora

classification cs.CL
keywords acrosssweatcorporadifferentmeasurepolarizationadditionalapproach
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Understanding differences of viewpoints across corpora is a fundamental task for computational social sciences. In this paper, we propose the Sliced Word Embedding Association Test (SWEAT), a novel statistical measure to compute the relative polarization of a topical wordset across two distributional representations. To this end, SWEAT uses two additional wordsets, deemed to have opposite valence, to represent two different poles. We validate our approach and illustrate a case study to show the usefulness of the introduced measure.

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