Papers by Yunzhu Li

3 papers
EscapeBench: Towards Advancing Creative Intelligence of Language Model Agents (2025.acl-long)

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Challenge: Existing language model agents excel in planning and reasoning, but lack creativity in unfamiliar environments.
Approach: They propose a benchmark suite of room escape game environments to challenge agents with creative reasoning, unconventional tool use and iterative problem-solving to uncover implicit goals.
Outcome: The proposed framework can perform with 40% fewer steps and hints and performs robustly across difficulty levels.
Current Agents Fail to Leverage World Model as Tool for Foresight (2026.acl-long)

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Challenge: Generative world models could be used to enhance agents' cognition . agents are expected to operate in settings where tasks unfold over long horizons and involve intricate chains of interdependent decisions.
Approach: They propose to use vision-language models as external simulators to enhance cognition . they find that agents rarely invoke simulation and misuse predicted rollouts .
Outcome: The proposed model could be used to predict future states rather than short-horizon reasoning . the model could also be used for real-world planning and robotics .
Foundation Models Meet Embodied Agents (2025.naacl-tutorial)

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Challenge: This tutorial will present a systematic overview of recent advances in foundation models for embodied agents .
Approach: This tutorial will present a systematic overview of recent advances in foundation models for embodied agents.
Outcome: This tutorial covers three types of foundation models for embodied agents .

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