AIFeb 23

TAPE: Tool-Guided Adaptive Planning and Constrained Execution in Language Model Agents

arXiv:2602.19633v11 citationsh-index: 4
Originality Incremental advance
AI Analysis

It addresses irrecoverable failure in LM agents for tasks requiring multiple interactions, offering a significant but incremental improvement over existing frameworks.

The paper tackles the problem of language model agents failing in environments with strict feasibility constraints by proposing TAPE, which improves success rates by 21.0 percentage points on hard settings on average.

Language Model (LM) agents have demonstrated remarkable capabilities in solving tasks that require multiple interactions with the environment. However, they remain vulnerable in environments where a single error often leads to irrecoverable failure, particularly under strict feasibility constraints. We systematically analyze existing agent frameworks, identifying imperfect planning and stochastic execution as the primary causes. To address these challenges, we propose Tool-guided Adaptive Planning with constrained Execution (TAPE). TAPE enhances planning capability by aggregating multiple plans into a graph and employing an external solver to identify a feasible path. During execution, TAPE employs constrained decoding to reduce sampling noise, while adaptively re-planning whenever environmental feedback deviates from the intended state. Experiments across Sokoban, ALFWorld, MuSiQue, and GSM8K-Hard demonstrate that TAPE consistently outperforms existing frameworks, with particularly large gains on hard settings, improving success rates by 21.0 percentage points on hard settings on average, and by 20.0 percentage points for weaker base models on average. Code and data available at here.

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