SOTAVerified

Word Sense Induction

Word sense induction (WSI) is widely known as the “unsupervised version” of WSD. The problem states as: Given a target word (e.g., “cold”) and a collection of sentences (e.g., “I caught a cold”, “The weather is cold”) that use the word, cluster the sentences according to their different senses/meanings. We do not need to know the sense/meaning of each cluster, but sentences inside a cluster should have used the target words with the same sense.

Description from NLP Progress

Papers

Showing 2130 of 107 papers

TitleStatusHype
Combining Neural Language Models for WordSense Induction0
A Comparative Study of Lexical Substitution Approaches based on Neural Language Models0
Combining Lexical Substitutes in Neural Word Sense Induction0
Towards better substitution-based word sense inductionCode0
Using Wiktionary as a resource for WSD : the case of French verbs0
Vector representations of text data in deep learning0
AutoSense Model for Word Sense InductionCode0
Word Sense Induction using Knowledge Embeddings0
Disambiguated skip-gram model0
Word Sense Induction with Neural biLM and Symmetric PatternsCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1BERT+DPF-Score71.3Unverified
2AutoSenseF-Score61.7Unverified
3LDAF-Score60.7Unverified
4SE-WSI-fixF-Score55.1Unverified
5BNP-HCF-Score23.1Unverified