Dialogue System
Dialogue systems aim to create natural and engaging conversations between humans and machines, primarily focusing on improving the accuracy, fluency, and contextual understanding of these interactions. Current research emphasizes enhancing memory capabilities, mitigating biases like hallucination and over-association, and improving robustness to noisy input such as from automatic speech recognition. This involves leveraging large language models (LLMs) and exploring novel architectures like mixture-of-experts and neuro-symbolic approaches, alongside the development of new evaluation benchmarks and datasets to better assess system performance. The advancements in this field have significant implications for various applications, including customer service, mental health support, and personalized education.
Papers
Dialogue system with humanoid robot
Koki Inoue, Shuichiro Ogake, Hayato Kawamura, Naoki Igo
Team Flow at DRC2022: Pipeline System for Travel Destination Recommendation Task in Spoken Dialogue
Ryu Hirai, Atsumoto Ohashi, Ao Guo, Hideki Shiroma, Xulin Zhou, Yukihiko Tone, Shinya Iizuka, Ryuichiro Higashinaka
Bil-DOS: A Bi-lingual Dialogue Ordering System (for Subway)
Zirong Chen, Haotian Xue
Social Influence Dialogue Systems: A Survey of Datasets and Models For Social Influence Tasks
Kushal Chawla, Weiyan Shi, Jingwen Zhang, Gale Lucas, Zhou Yu, Jonathan Gratch
Graph Neural Network Policies and Imitation Learning for Multi-Domain Task-Oriented Dialogues
Thibault Cordier, Tanguy Urvoy, Fabrice Lefèvre, Lina M. Rojas-Barahona