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Statistically Significant Detection of Linguistic Change

Published: 18 May 2015 Publication History

Abstract

We propose a new computational approach for tracking and detecting statistically significant linguistic shifts in the meaning and usage of words. Such linguistic shifts are especially prevalent on the Internet, where the rapid exchange of ideas can quickly change a word's meaning. Our meta-analysis approach constructs property time series of word usage, and then uses statistically sound change point detection algorithms to identify significant linguistic shifts. We consider and analyze three approaches of increasing complexity to generate such linguistic property time series, the culmination of which uses distributional characteristics inferred from word co-occurrences. Using recently proposed deep neural language models, we first train vector representations of words for each time period. Second, we warp the vector spaces into one unified coordinate system. Finally, we construct a distance-based distributional time series for each word to track its linguistic displacement over time.
We demonstrate that our approach is scalable by tracking linguistic change across years of micro-blogging using Twitter, a decade of product reviews using a corpus of movie reviews from Amazon, and a century of written books using the Google Book Ngrams. Our analysis reveals interesting patterns of language usage change commensurate with each medium.

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    Published In

    cover image ACM Other conferences
    WWW '15: Proceedings of the 24th International Conference on World Wide Web
    May 2015
    1460 pages
    ISBN:9781450334693

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    • IW3C2: International World Wide Web Conference Committee

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    International World Wide Web Conferences Steering Committee

    Republic and Canton of Geneva, Switzerland

    Publication History

    Published: 18 May 2015

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    Author Tags

    1. computational linguistics
    2. web mining

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    • Research-article

    Funding Sources

    • NSF
    • Google Faculty Research Award
    • Renaissance Technologies Fellowship
    • Institute for Computational Science at Stony Brook University

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    WWW '15
    Sponsor:
    • IW3C2

    Acceptance Rates

    WWW '15 Paper Acceptance Rate 131 of 929 submissions, 14%;
    Overall Acceptance Rate 1,899 of 8,196 submissions, 23%

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    • (2024)Evolution of the Moral LexiconOpen Mind10.1162/opmi_a_001648(1153-1169)Online publication date: 15-Sep-2024
    • (2024)Narrative Characteristics in Refugee Discourse: An Analysis of American Public Opinion on the Afghan Refugee Crisis After the Taliban TakeoverProceedings of the ACM on Human-Computer Interaction10.1145/36537038:CSCW1(1-31)Online publication date: 26-Apr-2024
    • (2024)Diachronic Analysis of a Word Concreteness Rating: Impact of Semantic ChangeLobachevskii Journal of Mathematics10.1134/S199508022460055945:3(961-971)Online publication date: 19-Jul-2024
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    • (2024)Natural Language Processing for Ancient GreekDiachronica10.1075/dia.23013.sto41:3(414-435)Online publication date: 2-Jul-2024
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