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Papers18

AllBeginnerIntermediateAdvanced
All SourcesarXiv
#Retrieval-Augmented Generation

DocDancer: Towards Agentic Document-Grounded Information Seeking

Intermediate
Qintong Zhang, Xinjie Lv et al.Jan 8arXiv

DocDancer is a smart document helper that answers questions by exploring and reading long, mixed-media PDFs using just two tools: Search and Read.

#Document Question Answering#Agentic Information Seeking#ReAct

SmartSearch: Process Reward-Guided Query Refinement for Search Agents

Intermediate
Tongyu Wen, Guanting Dong et al.Jan 8arXiv

SmartSearch teaches search agents to fix their own bad search queries while they are thinking, not just their final answers.

#Search agents#Process rewards#Query refinement

AT$^2$PO: Agentic Turn-based Policy Optimization via Tree Search

Intermediate
Zefang Zong, Dingwei Chen et al.Jan 8arXiv

AT2PO is a new way to train AI agents that work in several turns, like asking the web a question, reading the result, and trying again.

#Agentic Reinforcement Learning#Turn-level Optimization#Tree Search

Multi-hop Reasoning via Early Knowledge Alignment

Intermediate
Yuxin Wang, Shicheng Fang et al.Dec 23arXiv

This paper adds a tiny but powerful step called Early Knowledge Alignment (EKA) to multi-step retrieval systems so the model takes a quick, smart look at relevant information before it starts planning.

#Retrieval-Augmented Generation#Iterative RAG#Multi-hop Reasoning

QuCo-RAG: Quantifying Uncertainty from the Pre-training Corpus for Dynamic Retrieval-Augmented Generation

Intermediate
Dehai Min, Kailin Zhang et al.Dec 22arXiv

QuCo-RAG is a new way to decide when an AI should look things up while it writes, using facts from its training data instead of its own shaky confidence.

#Dynamic RAG#Retrieval-Augmented Generation#Uncertainty Quantification

Mindscape-Aware Retrieval Augmented Generation for Improved Long Context Understanding

Intermediate
Yuqing Li, Jiangnan Li et al.Dec 19arXiv

Humans keep a big-picture memory (a “mindscape”) when reading long things; this paper teaches AI to do the same.

#Retrieval-Augmented Generation#Mindscape#Hierarchical Summarization
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