Hierarchical Agentic Framework
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MIRROR: A Multi-Agent Framework with Iterative Adaptive Revision and Hierarchical Retrieval for Optimization Modeling in Operations Research
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Multi-Agent Framework Leveraging Knowledge Graphs for Virtual Commissioning Models
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AegisTS: A Hierarchical Agent System with Reinforcement Learning for Multivariate Time Series Data Cleaning
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Multi$^2$: Hierarchical Multi-Agent Decision-Making with LLM-Based Agents in Interactive Environments
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Enhancing Human-Likeness in Reinforcement Learning Agents via Hierarchical Macro Action Quantization
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DeliCIR: Deliberative Test-Time Evolutionary Hierarchical Multi-Agents for Composed Image Retrieval
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