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SciRepEval: A Multi-Format Benchmark for Scientific Document Representations

About

Learned representations of scientific documents can serve as valuable input features for downstream tasks without further fine-tuning. However, existing benchmarks for evaluating these representations fail to capture the diversity of relevant tasks. In response, we introduce SciRepEval, the first comprehensive benchmark for training and evaluating scientific document representations. It includes 24 challenging and realistic tasks, 8 of which are new, across four formats: classification, regression, ranking and search. We then use this benchmark to study and improve the generalization ability of scientific document representation models. We show how state-of-the-art models like SPECTER and SciNCL struggle to generalize across the task formats, and that simple multi-task training fails to improve them. However, a new approach that learns multiple embeddings per document, each tailored to a different format, can improve performance. We experiment with task-format-specific control codes and adapters and find they outperform the existing single-embedding state-of-the-art by over 2 points absolute. We release the resulting family of multi-format models, called SPECTER2, for the community to use and build on.

Amanpreet Singh, Mike D'Arcy, Arman Cohan, Doug Downey, Sergey Feldman• 2022

Related benchmarks

TaskDatasetResultRank
Cross-Corpus RankingCross-Corpus Dataset
Avg. RFR1.26
20
Citation RecommendationScientific Paper Domains Natural science (test)
P@30.6
20
Citation RecommendationScientific Paper Domains Social science (test)
P@30.654
20
Citation RecommendationScientific Paper Domains Overall (test)
Precision@360.2
20
Node RetrievalICLR 2025 (500 papers)
Recall @ 90.16
16
Novelty EstimationAI-Researcher (test)
Pearson R0.333
15
Reviewer AssignmentLR-Bench
Loss (LR-PC)0.1902
14
Reviewer Recommendation (Task 2)OmniReview
UCC0.4533
10
Reviewer Recommendation (Task 3)OmniReview
MAP0.6875
10
Reviewer Recommendation (Task 1)OmniReview
RRC84.3
10
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