Baumann, A., Hofmann, K., Marakasova, A., Neidhardt, J., & Wissik, T. (2023). Semantic micro-dynamics as a reflex of occurrence frequency: a semantic networks approach. Cognitive Linguistics, 34(3–4), 533–568. https://doi.org/10.1515/cog-2022-0008
corpus linguistics; diachronic linguistics; German; semantic networks; semantics
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Abstract:
This article correlates fine-grained semantic variability and change with measures of occurrence frequency to investigate whether a word's degree of semantic change is sensitive to how often it is used. We show that this sensitivity can be detected within a short time span (i.e., 20 years), basing our analysis on a large corpus of German allowing for a high temporal resolution (i.e., per month). We measure semantic variability and change with the help of local semantic networks, combining elements of deep learning methodology and graph theory. Our micro-scale analysis complements previous macro-scale studies from the field of natural language processing, corroborating the finding that high token frequency has a negative effect on the degree of semantic change in a lexical item. We relate this relationship to the role of exemplars for establishing form-function pairings between words and their habitual usage contexts.
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Project title:
Diachronic Dynamics of Lexical Networks: GDNG_2018-020_DYLEN (Österr. Akademie der Wissenschaften)