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  <title><![CDATA[PhD Defense by Ting-Wei Wu]]></title>
  <body><![CDATA[<p><span><span><strong><span><span><span>Title:&nbsp;How Machine Understands You and Me: Naturally Learn and Generalize in Task-oriented Dialogues</span></span></span></strong></span></span></p>

<p>&nbsp;</p>

<p><span><span><strong><span><span><span>Date:&nbsp;6/5/2023 (Mon)</span></span></span></strong></span></span></p>

<p><span><span><strong><span><span><span>Time:&nbsp;1:30 PM-2:30 PM ET</span></span></span></strong></span></span></p>

<p><span><span><strong><span><span><span><span>Location (meeting link):&nbsp;</span></span></span></span></strong><strong><span><span><span><a href="https://gatech.zoom.us/j/3333257776?pwd=ODBYV05xM0pVY2MyNnZGYkN3bFhLdz09"><span><span><span>https://gatech.zoom.us/j/3333257776?pwd=ODBYV05xM0pVY2MyNnZGYkN3bFhLdz09</span></span></span></a></span></span></span></strong></span></span></p>

<p>&nbsp;</p>

<p><span><span><strong><span><span><span>Ting-Wei Wu</span></span></span></strong></span></span></p>

<p><span><span><span><span><span>Machine Learning PhD Student</span></span></span></span></span></p>

<p><span><span><span><span><span><span>Department of Electrical and Computer Engineering</span></span></span></span></span></span></p>

<p><span><span><span><span><span>Georgia Institute of Technology</span></span></span></span></span></p>

<p>&nbsp;</p>

<p><span><span><strong><span><span><span>Committee</span></span></span></strong></span></span></p>

<p><span><span><span><span><span>1 Dr. Biing-Hwang Juang (Advisor, School of Electrical and Computer Engineering, Georgia Tech)</span></span></span></span></span></p>

<p><span><span><span><span><span>2 Dr. David Anderson (<span>School of Electrical and Computer Engineering, Georgia Tech)</span></span></span></span></span></span></p>

<p><span><span><span><span><span>3 Dr. Diyi Yang (Department of Computer Science, Stanford University)</span></span></span></span></span></p>

<p><span><span><span><span><span>4 Dr. Elliot Moore (<span>School of Electrical and Computer Engineering, Georgia Tech)</span></span></span></span></span></span></p>

<p><span><span><span><span><span><span>5 Dr. Sungjin Lee (Alexa AI, Amazon)</span></span></span></span></span></span></p>

<p>&nbsp;</p>

<p><span><span><strong><span><span><span><span>Abstract</span></span></span></span></strong></span></span></p>

<p><span><span><span><span><span>Modern human-computer interactions have recently gained a lot of attention for customer service automation applications, which alleviate the effort of intensive human labor. These systems usually involve a natural language understanding (NLU) process with sophisticated considerations to provide appropriate human-like responses.&nbsp;However, preliminary systems with pre-structured interactions face challenges due to limited data and the inability to capture high-level semantic nuances. Task-oriented modules trained on a limited single-domain dataset suffer from spurious correlations and lack the robustness to generalize to new low-frequency intents or critical domains without external knowledge or multi-turn dynamics. They may also produce incomplete and ill-formed responses when presented with new, unseen circumstances, such as tail domains or foreign languages. In this thesis, we propose several neural-based approaches to improve task-oriented dialog system naturalness, i.e. the accuracy and fluency to which extent the machine understands the users and generalizes over multiple scenarios.&nbsp;In tackling user intent and expression variability, we learn the idea of explicit intent embeddings, implicit intent clusters, and a listwise context-based reranking approach. Additionally, we integrate dialogue contexts and knowledge bases in large language models to model multi-turn dynamics. Finally, we propose a heterogeneous data augmentation scheme and a cross-lingual adapter-based framework to improve the robustness of large pre-trained models in skill routing and multilingual response generation problems.&nbsp;Overall, this thesis aims to learn more robust representations for better dialogue understanding and user experiences without much effort in designing manual rules in different domains.</span></span></span></span></span></p>

<p>&nbsp;</p>
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