cs.AI updates on arXiv.org 10月01日
ACT:决策树在非结构化数据上的拓展应用
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本文提出了一种名为Agentic Classification Tree(ACT)的新方法,通过将决策树的每个分裂点定义为一个自然语言问题,结合文本梯度反馈,将决策树应用于非结构化数据,实验结果表明,ACT在文本基准测试中表现优异,同时保证了决策路径的透明性和可解释性。

arXiv:2509.26433v1 Announce Type: cross Abstract: When used in high-stakes settings, AI systems are expected to produce decisions that are transparent, interpretable, and auditable, a requirement increasingly expected by regulations. Decision trees such as CART provide clear and verifiable rules, but they are restricted to structured tabular data and cannot operate directly on unstructured inputs such as text. In practice, large language models (LLMs) are widely used for such data, yet prompting strategies such as chain-of-thought or prompt optimization still rely on free-form reasoning, limiting their ability to ensure trustworthy behaviors. We present the Agentic Classification Tree (ACT), which extends decision-tree methodology to unstructured inputs by formulating each split as a natural-language question, refined through impurity-based evaluation and LLM feedback via TextGrad. Experiments on text benchmarks show that ACT matches or surpasses prompting-based baselines while producing transparent and interpretable decision paths.

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决策树 非结构化数据 文本梯度 透明性 可解释性
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