DSTEA: Improving Dialogue State Tracking via Entity Adaptive Pre-training
Feb 17, 2024·,,,,,·
0 min read
Yukyung Lee
Takyoung Kim
Hoonsang Yoon
Pilsung Kang
Junseong Bang
Misuk Kim
Abstract
Dialogue state tracking (DST) aims to extract essential information from multi-turn dialog situations and take appropriate actions. A belief state, one of the core pieces of information, refers to the subject and its specific content, and appears in the form of domain-slot-value. The trained model predicts “accumulated” belief states in every turn, and joint goal accuracy and slot accuracy are mainly used to evaluate the prediction; however, we specify that the current evaluation metrics have a critical limitation when evaluating belief states accumulated as the dialogue proceeds, especially in the most used MultiWOZ dataset. Additionally, we propose relative slot accuracy to complement existing metrics. Relative slot accuracy does not depend on the number of predefined slots, and allows intuitive evaluation by assigning relative scores according to the turn of each dialog. This study also encourages not solely the reporting of joint goal accuracy, but also various complementary metrics in DST tasks for the sake of a realistic evaluation.
Type
Publication
Knowledge Based System (IF = 8.8) and KDD 2023 Second Workshop on Knowledge Augmented Methods for NLP