WisPaper: Your AI Scholar Search Engine
Abstract
We present WisPaper, an end-to-end agent system that transforms how researchers discover, organize, and track academic literature. The system addresses two fundamental challenges. (1)~Semantic search limitations: existing academic search engines match keywords but cannot verify whether papers truly address complex research questions; and (2)~Workflow fragmentation: researchers must manually stitch together separate tools for discovery, organization, and monitoring. WisPaper tackles these through three integrated modules. Scholar Search combines rapid keyword retrieval with Deep Search, in which an agentic model, WisModel, validates candidate papers against user queries through structured reasoning. Discovered papers flow seamlessly into Library with one click, where systematic organization progressively builds a user profile that sharpens the recommendations of AI Feeds, which continuously surfaces relevant new publications and in turn guides subsequent exploration, closing the loop from discovery to long-term awareness. On TaxoBench, WisPaper achieves 22.26\% recall, surpassing the O3 baseline (20.92\%). Furthermore, WisModel attains 93.70\% validation accuracy, effectively mitigating retrieval hallucinations.
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