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Substitution-based Semantic Change Detection using Contextual Embeddings

About

Measuring semantic change has thus far remained a task where methods using contextual embeddings have struggled to improve upon simpler techniques relying only on static word vectors. Moreover, many of the previously proposed approaches suffer from downsides related to scalability and ease of interpretation. We present a simplified approach to measuring semantic change using contextual embeddings, relying only on the most probable substitutes for masked terms. Not only is this approach directly interpretable, it is also far more efficient in terms of storage, achieves superior average performance across the most frequently cited datasets for this task, and allows for more nuanced investigation of change than is possible with static word vectors.

Dallas Card• 2023

Related benchmarks

TaskDatasetResultRank
Lexical Semantic Change DetectionSemEval Task 1 Subtask 2 English 2020
Spearman Correlation0.547
54
Lexical Semantic Change DetectionSemEval (test)
Accuracy (En)54.7
8
Semantic Change DetectionSemEval Task 1 EN Sub-task 2 2020
Spearman Correlation0.547
4
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