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Sparse Embeddings for Scholarly Discovery with Human-Readable Signals

We compare dense and sparse retrieval strategies for scholarly search when operators need interpretable reasons and controllable ranking.

Conference Paper2026SIGIROpen access
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Drag to move the map, use wheel or controls to zoom.Selected work: Sparse Embeddings for Scholarly Discovery with Human-Readable Signals
topicworkauthorcommunitySparse Embeddings for...Conference Pape...Graph Neighborhoods f...Conference Pape...Probabilistic Claim R...Conference Pape...Graph Memory for Lite...Preprint / 2026Dataset Provenance Ac...Journal Article...Literature-Aware Retr...Journal Article...Noah DarziStaff Research ...Mira AlvarezPI, Machine Int...Owen ChenPostdoctoral Re...ETH Machine Intellige...labScientific Knowledge ...11 works
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Sparse Embeddings for Scholarly Discovery with Human-Readable Signals

Conference Paper / 2026

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