Taming the Beast: Learning to Control Neural Conversational Models
Andrea Madotto

TL;DR
This paper explores methods to enhance the controllability of neural conversational models, enabling better control over style, topics, and skills in dialogue systems to improve safety and functionality.
Contribution
It introduces novel techniques for controlling styles, topics, and skills in end-to-end neural dialogue systems, addressing limitations of traditional modular architectures.
Findings
Effective style and topic control in chit-chat models
Methods for extending task-oriented dialogue systems
Techniques for composing multi-skill dialogue models
Abstract
This thesis investigates the controllability of deep learning-based, end-to-end, generative dialogue systems in both task-oriented and chit-chat scenarios. In particular, we study the different aspects of controlling generative dialogue systems, including controlling styles and topics and continuously adding and combining dialogue skills. In the three decades since the first dialogue system was commercialized, the basic architecture of such systems has remained substantially unchanged, consisting of four pipelined basic components, namely, natural language understanding (NLU), dialogue state tracking (DST), a dialogue manager (DM) and natural language generation (NLG). The dialogue manager, which is the critical component of the modularized system, controls the response content and style. This module is usually programmed by rules and is designed to be highly controllable and easily…
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Taxonomy
TopicsSpeech and dialogue systems · Topic Modeling · Natural Language Processing Techniques
