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 3140 of 107 papers

TitleStatusHype
An Evaluation of Graded Sense Disambiguation using Word Sense Induction0
AI-KU: Using Substitute Vectors and Co-Occurrence Modeling For Word Sense Induction and Disambiguation0
Capturing Anomalies in the Choice of Content Words in Compositional Distributional Semantic Space0
BOS at SemEval-2020 Task 1: Word Sense Induction via Lexical Substitution for Lexical Semantic Change Detection0
Finding Individual Word Sense Changes and their Delay in Appearance0
Boosting the Coverage of a Semantic Lexicon by Automatically Extracted Event Nominalizations0
A State of the Art of Word Sense Induction: A Way Towards Word Sense Disambiguation for Under-Resourced Languages (\'Etat de l'art de l'induction de sens: une voie vers la d\'esambigu\" lexicale pour les langues peu dot\'ees) [in French]0
Evaluating Unsupervised Ensembles when applied to Word Sense Induction0
Efficient Graph-based Word Sense Induction by Distributional Inclusion Vector Embeddings0
Efficiency in Ambiguity: Two Models of Probabilistic Semantics for Natural Language0
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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