TRACE-cs: Trustworthy Reasoning for Contrastive Explanations in Course Scheduling Problems

Stylianos Loukas Vasileiou, William Yeoh
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Abstract

We present TRACE-cs, a novel hybrid system that combines symbolic reasoning with large language models (LLMs) to address contrastive queries in scheduling problems. TRACE-cs leverages SAT solving techniques to encode scheduling constraints and generate explanations for user queries, while utilizing an LLM to process the user queries into logical clauses as well as refine the explanations generated by the symbolic solver to natural language sentences. By integrating these components, our approach demonstrates the potential of combining symbolic methods with LLMs to create explainable AI agents with correctness guarantees.
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TRACE-cs:课程安排问题中对比解释的可信推理
我们介绍的 TRACE-cs 是一种新型混合系统,它将符号推理与大型语言模型(LLM)相结合,用于解决调度问题中的对比查询。TRACE-cs 利用 SAT 求解技术来编码调度约束并为用户查询生成解释,同时利用 LLM 将用户查询处理为逻辑分句,并将符号求解器生成的解释细化为自然语言句子。通过整合这些组件,我们的方法展示了将符号方法与 LLM 结合起来创建具有正确性保证的可解释人工智能代理的潜力。
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