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Analyzing Semantic Change through Lexical Replacements

About

Modern language models are capable of contextualizing words based on their surrounding context. However, this capability is often compromised due to semantic change that leads to words being used in new, unexpected contexts not encountered during pre-training. In this paper, we model \textit{semantic change} by studying the effect of unexpected contexts introduced by \textit{lexical replacements}. We propose a \textit{replacement schema} where a target word is substituted with lexical replacements of varying relatedness, thus simulating different kinds of semantic change. Furthermore, we leverage the replacement schema as a basis for a novel \textit{interpretable} model for semantic change. We are also the first to evaluate the use of LLaMa for semantic change detection.

Francesco Periti, Pierluigi Cassotti, Haim Dubossarsky, Nina Tahmasebi• 2024

Related benchmarks

TaskDatasetResultRank
Lexical Semantic Change DetectionSemEval Task 1 Subtask 2 English 2020
Spearman Correlation0.741
54
Semantic Change DetectionSemEval Task 1 EN Sub-task 2 2020
Spearman Correlation0.731
4
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