Human conversations can evolve in many different ways, creating challenges for automatic understanding and summarization. Goal-oriented conversations often have meaningful sub-dialogue structure, but it can be highly domain-dependent. This work introduces an unsupervised approach to learning hierarchical conversation structure, including turn and sub-dialogue segment labels, corresponding roughly to dialogue acts and sub-tasks, respectively. The decoded structure is shown to be useful in enhancing neural models of language for three conversation-level understanding tasks. Further, the learned finite-state sub-dialogue network is made interpretable through automatic summarization. Our code and trained models are available at \url{https://git...
Teaching machines to speak and act like a human is one of the longest-running goals in Artificial In...
Unsupervised machine learning ap-proaches hold great promise for recog-nizing dialogue acts, but the...
We are interested in the problem of understanding human conversation structure in the context of hum...
With the advent of personal assistants such as Siri and Alexa, there has been a renewed focus on dia...
Dialogue systems, also known as conversational agents, are intelligent computer systems which conver...
Abstract Conversational modeling is an important task in natural language understanding and machine ...
It is important for task-oriented dialogue systems to discover the dialogue structure (i.e. the gene...
International audienceDiscourse processing suffers from data sparsity, especially for dialogues. As ...
A key challenge for computational conver-sation models is to discover latent struc-ture in task-orie...
A key challenge for computational conver-sation models is to discover latent struc-ture in task-orie...
Multimodal conversation modeling is an important and challenging problem when building conversationa...
In recent years we have witnessed a surge in machine learning methods that provide machines with con...
Language exhibits structure beyond the sentence level (e.g. the syntactic structure of a sentence). ...
Language exhibits structure beyond the sentence level (e.g. the syntactic structure of a sentence). ...
Teaching machines to speak and act like a human is one of the longest-running goals in Artificial In...
Teaching machines to speak and act like a human is one of the longest-running goals in Artificial In...
Unsupervised machine learning ap-proaches hold great promise for recog-nizing dialogue acts, but the...
We are interested in the problem of understanding human conversation structure in the context of hum...
With the advent of personal assistants such as Siri and Alexa, there has been a renewed focus on dia...
Dialogue systems, also known as conversational agents, are intelligent computer systems which conver...
Abstract Conversational modeling is an important task in natural language understanding and machine ...
It is important for task-oriented dialogue systems to discover the dialogue structure (i.e. the gene...
International audienceDiscourse processing suffers from data sparsity, especially for dialogues. As ...
A key challenge for computational conver-sation models is to discover latent struc-ture in task-orie...
A key challenge for computational conver-sation models is to discover latent struc-ture in task-orie...
Multimodal conversation modeling is an important and challenging problem when building conversationa...
In recent years we have witnessed a surge in machine learning methods that provide machines with con...
Language exhibits structure beyond the sentence level (e.g. the syntactic structure of a sentence). ...
Language exhibits structure beyond the sentence level (e.g. the syntactic structure of a sentence). ...
Teaching machines to speak and act like a human is one of the longest-running goals in Artificial In...
Teaching machines to speak and act like a human is one of the longest-running goals in Artificial In...
Unsupervised machine learning ap-proaches hold great promise for recog-nizing dialogue acts, but the...
We are interested in the problem of understanding human conversation structure in the context of hum...