Generating Natural Language Queries for More Effective Systematic Review Screening Prioritisation

September 11, 2023 Β· Declared Dead Β· πŸ› SIGIR-AP

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Authors Shuai Wang, Harrisen Scells, Martin Potthast, Bevan Koopman, Guido Zuccon arXiv ID 2309.05238 Category cs.IR: Information Retrieval Cross-listed cs.AI Citations 13 Venue SIGIR-AP Last Checked 3 months ago
Abstract
Screening prioritisation in medical systematic reviews aims to rank the set of documents retrieved by complex Boolean queries. Prioritising the most important documents ensures that subsequent review steps can be carried out more efficiently and effectively. The current state of the art uses the final title of the review as a query to rank the documents using BERT-based neural rankers. However, the final title is only formulated at the end of the review process, which makes this approach impractical as it relies on ex post facto information. At the time of screening, only a rough working title is available, with which the BERT-based ranker performs significantly worse than with the final title. In this paper, we explore alternative sources of queries for prioritising screening, such as the Boolean query used to retrieve the documents to be screened and queries generated by instruction-based generative large-scale language models such as ChatGPT and Alpaca. Our best approach is not only viable based on the information available at the time of screening, but also has similar effectiveness to the final title.
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