October 1, 2025
The GIST Dialogue systems learn new words with fewer questions
Gaby Clark
scientific editor
Robert Egan
associate editor
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Researchers at the University of Osaka have developed a mechanism that allows spoken dialog systems to learn new words through conversation without overwhelming users with repetitive questions. By optimizing when to ask a question using reinforcement learning, the system can achieve efficient knowledge acquisition with minimal interruptions.
Current dialog systems often fail to understand words not included in their training data, such as nicknames, local slang, or newly coined terms. While large language models can handle common vocabulary from the Web, they still struggle with group-specific expressions used in everyday conversation. Conventional approaches rely on repeatedly asking users for clarification, which risks frustrating them and disrupting the dialog flow.
To address this challenge, the Sanken team at the University of Osaka formulated the learning process as a stream-based active learning problem. Their method enables the system to decide dynamically whether to ask the user for confirmation.
By introducing reinforcement learning extensions—including pseudo-labeling (self-learning) and budget-aware decision-making—the system can efficiently update its vocabulary with far fewer user queries. Simulation experiments confirmed that this approach improves word segmentation performance while reducing the number of questions asked.
This breakthrough paves the way for more natural, user-friendly dialog systems. In the future, when such systems are part of our homes, they will be able to learn family-specific nicknames and unique expressions, becoming more familiar and trusted companions rather than intrusive tools.
"Large language models are trained on massive text data, but they cannot adapt to the unique words and expressions of each household through interaction," explains Professor Kazunori Komatani. "Our work takes a step toward dialog systems that learn personally, making them closer companions in daily life."
The article is titled "Learning to Ask Efficiently in Dialogue: Reinforcement Learning Extensions for Stream-based Active Learning."
More information: Learning to Ask Efficiently in Dialogue: Reinforcement Learning Extensions for Stream-based Active Learning. aclanthology.org/2025.sigdial-1.34.pdf
Provided by University of Osaka Citation: Dialogue systems learn new words with fewer questions (2025, October 1) retrieved 1 October 2025 from https://techxplore.com/news/2025-10-dialogue-words.html This document is subject to copyright. Apart from any fair dealing for the purpose of private study or research, no part may be reproduced without the written permission. The content is provided for information purposes only.
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