Abstract: It is often challenging to teach specialized, unseen tasks to dialogue systems due to the high cost of expert knowledge, training data, and high technical difficulty. To support domain-specific applications---such as law, medicine, or finance---it is essential to build frameworks that enable non-technical experts to define, test, and refine system behavior with minimal effort. Achieving this requires cross-disciplinary collaboration between developers and domain specialists. In this work, we introduce a novel framework, **CoDial** (**Co**de for **Dial**ogue), that converts expert knowledge, represented as a novel structured heterogeneous graph, into executable conversation logic. Codial can be easily implemented in existing guardrailing languages, such as Colang, to enable interpretable, modifiable, and true zero-shot specification of dialogue flows. Empirically, CoDial achieves state-of-the-art performance on the STAR dataset for inference-based models and is competitive with similar baselines on the well-known MultiWOZ dataset. We also demonstrate CoDial's iterative improvement via manual and LLM-aided feedback, making it a practical tool for expert-guided alignment of LLMs in high-stakes domains.
Paper Type: Long
Research Area: Dialogue and Interactive Systems
Research Area Keywords: task-oriented,grounded dialog,dialogue state tracking
Contribution Types: Model analysis & interpretability, NLP engineering experiment
Languages Studied: English
Submission Number: 896
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