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Bibliographic Details
Main Authors: Finch, James D., Choi, Jinho D.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.12468
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author Finch, James D.
Choi, Jinho D.
author_facet Finch, James D.
Choi, Jinho D.
contents We demonstrate substantial performance gains in zero-shot dialogue state tracking (DST) by enhancing training data diversity through synthetic data generation. Existing DST datasets are severely limited in the number of application domains and slot types they cover due to the high costs of data collection, restricting their adaptability to new domains. This work addresses this challenge with a novel, fully automatic data generation approach that creates synthetic zero-shot DST datasets. Distinguished from previous methods, our approach can generate dialogues across a massive range of application domains, complete with silver-standard dialogue state annotations and slot descriptions. This technique is used to create the D0T dataset for training zero-shot DST models, encompassing an unprecedented 1,000+ domains. Experiments on the MultiWOZ benchmark show that training models on diverse synthetic data improves Joint Goal Accuracy by 6.7%, achieving results competitive with models 13.5 times larger than ours.
format Preprint
id arxiv_https___arxiv_org_abs_2405_12468
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Diverse and Effective Synthetic Data Generation for Adaptable Zero-Shot Dialogue State Tracking
Finch, James D.
Choi, Jinho D.
Computation and Language
We demonstrate substantial performance gains in zero-shot dialogue state tracking (DST) by enhancing training data diversity through synthetic data generation. Existing DST datasets are severely limited in the number of application domains and slot types they cover due to the high costs of data collection, restricting their adaptability to new domains. This work addresses this challenge with a novel, fully automatic data generation approach that creates synthetic zero-shot DST datasets. Distinguished from previous methods, our approach can generate dialogues across a massive range of application domains, complete with silver-standard dialogue state annotations and slot descriptions. This technique is used to create the D0T dataset for training zero-shot DST models, encompassing an unprecedented 1,000+ domains. Experiments on the MultiWOZ benchmark show that training models on diverse synthetic data improves Joint Goal Accuracy by 6.7%, achieving results competitive with models 13.5 times larger than ours.
title Diverse and Effective Synthetic Data Generation for Adaptable Zero-Shot Dialogue State Tracking
topic Computation and Language
url https://arxiv.org/abs/2405.12468