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All SourcesarXiv
#Tool-Integrated Reasoning

MatchTIR: Fine-Grained Supervision for Tool-Integrated Reasoning via Bipartite Matching

Intermediate
Changle Qu, Sunhao Dai et al.Jan 15arXiv

MatchTIR teaches AI agents to judge each tool call step-by-step instead of giving the same reward to every step.

#Tool-Integrated Reasoning#Credit Assignment#Bipartite Matching

ET-Agent: Incentivizing Effective Tool-Integrated Reasoning Agent via Behavior Calibration

Intermediate
Yifei Chen, Guanting Dong et al.Jan 11arXiv

ET-Agent is a training framework that teaches AI agents to use tools (like search and code) more wisely, not just to get the right answer.

#Tool-Integrated Reasoning#Behavior Calibration#Self-evolving Data Flywheel

MindWatcher: Toward Smarter Multimodal Tool-Integrated Reasoning

Intermediate
Jiawei Chen, Xintian Shen et al.Dec 29arXiv

MindWatcher is a smart AI agent that can think step by step and decide when to use tools like web search, image zooming, and a code calculator to solve tough, multi-step problems.

#Tool-Integrated Reasoning#Interleaved Thinking#Multimodal Chain-of-Thought