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  5. The inefficiency of language models in scholarly retrieval: an experimental walk-through
 
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The inefficiency of language models in scholarly retrieval: an experimental walk-through

Source
arXiv
Date Issued
2022-03-01
Abstract
Language models are increasingly becoming popular in AI-powered scientific IR systems. This paper evaluates popular scientific language models in handling (i) short-query texts and (ii) textual neighbors. Our experiments showcase the inability to retrieve relevant documents for a short-query text even under the most relaxed conditions. Additionally, we leverage textual neighbors, generated by small perturbations to the original text, to demonstrate that not all perturbations lead to close neighbors in the embedding space. Further, an exhaustive categorization yields several classes of orthographically and semantically related, partially related, and completely unrelated neighbors. Retrieval performance turns out to be more influenced by the surface form rather than the semantics of the text.
URI
http://arxiv.org/abs/2203.15364
https://d8.irins.org/handle/IITG2025/19823
Subjects
Language models
IR systems
Short-query texts
Retrieval performance
Textual neighbors
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