Papers by Martina Galletti

2 papers
Are Your Keywords Like My Queries? A Corpus-Wide Evaluation of Keyword Extractors with Real Searches (2025.coling-main)

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Challenge: Keyword Extraction (KE) is essential in Natural Language Processing (NLP) for identifying key terms that represent the main themes of a text.
Approach: They propose to use real query data from Google Trends to evaluate keywords extracted from a text to capture users' top queries.
Outcome: The proposed method can be used with both supervised and unsupervised KE approaches and shows that KeyBERT is the most effective in capturing users’ top queries.

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