Recognising dialogue acts (DA) is important for many natural language processing tasks such as dialogue generation and intention recognition. In this paper, we propose a dual-attention hierarchical recurrent neural network for DA classification. Our model is partially inspired by the observation that conversational utterances are normally associated with both a DA and a topic, where the former captures the social act and the latter describes the subject matter. However, such a dependency between DAs and topics has not been utilised by most existing systems for DA classification. With a novel dual task-specific attention mechanism, our model is able, for utterances, to capture information about both DAs and topics, as well as information abo...
The task of predicting dialog acts (DA) based on conversational dialog is a key component in the dev...
In natural language processing, attention mechanism in neural networks are widely utilized. In this ...
Conversational agents have begun to rise both in the academic (in terms of research) and commercial ...
Recognising dialogue acts (DA) is important for many natural language processing tasks such as dialo...
Recognising dialogue acts (DA) is important for many natural language processing tasks such as dialo...
Acknowledgment This work is supported by the award made by the UK Engineering and Physical Sciences ...
The task of joint dialogue act recognition (DAR) and sentiment classification (DSC) aims to predict ...
Dialogue Act recognition associate dialogue acts (i.e., semantic labels) to utterances in a conversa...
This paper applies a deep long-short term memory (LSTM) structure to classify dialogue acts in open-...
This paper applies a deep long-short term memory (LSTM) structure to classify dialogue acts in open-...
This paper applies a deep long-short term memory (LSTM) structure to classify dialogue acts in open-...
When considering the multi-turn dialogue systems, the model needs to generate a natural and contextu...
When considering the multi-turn dialogue systems, the model needs to generate a natural and contextu...
Building systems that can communicate with humans is a core problem in Artificial Intelligence. This...
International audienceThis paper compares several approaches for computing dialogue turn embeddings ...
The task of predicting dialog acts (DA) based on conversational dialog is a key component in the dev...
In natural language processing, attention mechanism in neural networks are widely utilized. In this ...
Conversational agents have begun to rise both in the academic (in terms of research) and commercial ...
Recognising dialogue acts (DA) is important for many natural language processing tasks such as dialo...
Recognising dialogue acts (DA) is important for many natural language processing tasks such as dialo...
Acknowledgment This work is supported by the award made by the UK Engineering and Physical Sciences ...
The task of joint dialogue act recognition (DAR) and sentiment classification (DSC) aims to predict ...
Dialogue Act recognition associate dialogue acts (i.e., semantic labels) to utterances in a conversa...
This paper applies a deep long-short term memory (LSTM) structure to classify dialogue acts in open-...
This paper applies a deep long-short term memory (LSTM) structure to classify dialogue acts in open-...
This paper applies a deep long-short term memory (LSTM) structure to classify dialogue acts in open-...
When considering the multi-turn dialogue systems, the model needs to generate a natural and contextu...
When considering the multi-turn dialogue systems, the model needs to generate a natural and contextu...
Building systems that can communicate with humans is a core problem in Artificial Intelligence. This...
International audienceThis paper compares several approaches for computing dialogue turn embeddings ...
The task of predicting dialog acts (DA) based on conversational dialog is a key component in the dev...
In natural language processing, attention mechanism in neural networks are widely utilized. In this ...
Conversational agents have begun to rise both in the academic (in terms of research) and commercial ...