Litcius/Paper detail

Towards LLM-driven Dialogue State Tracking

Yujie Feng, Zexin Lu, Бо Лю, Li-Ming Zhan, Xiao-Ming Wu

202325 citationsDOIOpen Access PDF

Abstract

Dialogue State Tracking (DST) is of paramount importance in ensuring accurate tracking of user goals and system actions within task-oriented dialogue systems. The emergence of large language models (LLMs) such as GPT3 and ChatGPT has sparked considerable interest in assessing their efficacy across diverse applications. In this study, we conduct an initial examination of ChatGPT's capabilities in DST. Our evaluation uncovers the exceptional performance of ChatGPT in this task, offering valuable insights to researchers regarding its capabilities and providing useful directions for designing and enhancing dialogue systems. Despite its impressive performance, ChatGPT has significant limitations including its closed-source nature, request restrictions, raising data privacy concerns, and lacking local deployment capabilities. To address these concerns, we present LDST, an LLM-driven DST framework based on smaller, open-source foundation models. By utilizing a novel domain-slot instruction tuning method, LDST achieves performance on par with ChatGPT. Comprehensive evaluations across three distinct experimental settings, we find that LDST exhibits remarkable performance improvements in both zero-shot and few-shot setting compared to previous SOTA methods. The source code is provided for reproducibility.

Topics & Concepts

Computer scienceSoftware deploymentTask (project management)Open sourceCode (set theory)Source codeTracking (education)State (computer science)Domain (mathematical analysis)Human–computer interactionSoftware engineeringProgramming languageSystems engineeringEngineeringSoftwarePsychologyPedagogyMathematicsSet (abstract data type)Mathematical analysisSpeech and dialogue systemsTracheal and airway disordersTopic Modeling