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1
Analysis and Evaluation of Language Models for Word Sense Disambiguation
In: Computational Linguistics, Vol 47, Iss 2, Pp 387-443 (2021) (2021)
Abstract: AbstractTransformer-based language models have taken many fields in NLP by storm. BERT and its derivatives dominate most of the existing evaluation benchmarks, including those for Word Sense Disambiguation (WSD), thanks to their ability in capturing context-sensitive semantic nuances. However, there is still little knowledge about their capabilities and potential limitations in encoding and recovering word senses. In this article, we provide an in-depth quantitative and qualitative analysis of the celebrated BERT model with respect to lexical ambiguity. One of the main conclusions of our analysis is that BERT can accurately capture high-level sense distinctions, even when a limited number of examples is available for each word sense. Our analysis also reveals that in some cases language models come close to solving coarse-grained noun disambiguation under ideal conditions in terms of availability of training data and computing resources. However, this scenario rarely occurs in real-world settings and, hence, many practical challenges remain even in the coarse-grained setting. We also perform an in-depth comparison of the two main language model-based WSD strategies, namely, fine-tuning and feature extraction, finding that the latter approach is more robust with respect to sense bias and it can better exploit limited available training data. In fact, the simple feature extraction strategy of averaging contextualized embeddings proves robust even using only three training sentences per word sense, with minimal improvements obtained by increasing the size of this training data.
Keyword: Computational linguistics. Natural language processing; P98-98.5
URL: https://doaj.org/article/25330c4093f1409686186b3ff085e795
https://doi.org/10.1162/coli_a_00405
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2
TTCSe: a Vectorial Resource for Computing Conceptual Similarity
Mensa, Enrico; Radicioni, Daniele Paolo; Lieto, Antonio. - : Association for Computational Linguistics, 2017. : country:USA, 2017. : place:New York, USA, 2017
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3
A robust approach to aligning heterogeneous lexical resources.
In: http://acl2014.org/acl2014/P14-1/pdf/P14-1044.pdf (2014)
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4
A Large-Scale Pseudoword-Based Evaluation Framework for State-of-the-Art Word Sense Disambiguation
In: http://www.aclweb.org/anthology/J/J14/J14-4005.pdf
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5
2014. A Robust Approach to Aligning Heterogeneous Lexical Resources
In: http://wwwusers.di.uniroma1.it/%7Enavigli/pubs/ACL_2014_Pilehvar_Navigli.pdf
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6
A Robust Approach to Aligning Heterogeneous Lexical Resources
In: http://aclweb.org/anthology/P/P14/P14-1044.pdf
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7
A Large-scale Pseudoword-based Evaluation Framework for State-of-the-Art Word Sense Disambiguation
In: http://wwwusers.di.uniroma1.it/~navigli/pubs/CL_2014_Pilehvar_Navigli.pdf
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8
Align, Disambiguate and Walk: A Unified Approach for Measuring Semantic Similarity
In: http://aclweb.org/anthology/P/P13/P13-1132.pdf
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9
Align, Disambiguate and Walk: A Unified Approach for Measuring Semantic Similarity
In: http://wwwusers.di.uniroma1.it/~navigli/pubs/ACL_2013_Pilehvar_Jurgens_Navigli.pdf
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