English

Using Domain Knowledge to Guide Dialog Structure Induction via Neural Probabilistic Soft Logic

Computation and Language 2024-03-27 v1 Machine Learning

Abstract

Dialog Structure Induction (DSI) is the task of inferring the latent dialog structure (i.e., a set of dialog states and their temporal transitions) of a given goal-oriented dialog. It is a critical component for modern dialog system design and discourse analysis. Existing DSI approaches are often purely data-driven, deploy models that infer latent states without access to domain knowledge, underperform when the training corpus is limited/noisy, or have difficulty when test dialogs exhibit distributional shifts from the training domain. This work explores a neural-symbolic approach as a potential solution to these problems. We introduce Neural Probabilistic Soft Logic Dialogue Structure Induction (NEUPSL DSI), a principled approach that injects symbolic knowledge into the latent space of a generative neural model. We conduct a thorough empirical investigation on the effect of NEUPSL DSI learning on hidden representation quality, few-shot learning, and out-of-domain generalization performance. Over three dialog structure induction datasets and across unsupervised and semi-supervised settings for standard and cross-domain generalization, the injection of symbolic knowledge using NEUPSL DSI provides a consistent boost in performance over the canonical baselines.

Keywords

Cite

@article{arxiv.2403.17853,
  title  = {Using Domain Knowledge to Guide Dialog Structure Induction via Neural Probabilistic Soft Logic},
  author = {Connor Pryor and Quan Yuan and Jeremiah Liu and Mehran Kazemi and Deepak Ramachandran and Tania Bedrax-Weiss and Lise Getoor},
  journal= {arXiv preprint arXiv:2403.17853},
  year   = {2024}
}
R2 v1 2026-06-28T15:34:24.536Z