Cog-RAG: Cognitive-Inspired Dual-Hypergraph with Theme Alignment Retrieval-Augmented Generation
Hao Hu, Yifan Feng, Ruoxue Li, Rundong Xue ยท arXiv
Query conditions: topic=rag, and publish_at in 202511
Hao Hu, Yifan Feng, Ruoxue Li, Rundong Xue ยท arXiv
This page ranks RAG content by topic match, content-type filter, checkout momentum, and freshness. The ranking is recalculated as new items and engagement signals arrive, so the top results stay practical for current workflows instead of remaining static or purely chronological.
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