We present a generative neural model for open and multi-turn dialog response generation that relies on a multi-dimension attention process to account for the semantic interdependence between the generated words and the conversational history, so as to identify all the words and utterances that influence each generated response. The performance of the model is evaluated on the wide scope DailyDialog corpus and a comparison is made with two other generative neural architectures, using several machine metrics. The results show that the proposed model improves the state of the art for generation accuracy, and its multi-dimension attention allows for a more detailed tracking of the influential words and utterances in the dialog history for resp...
Task-oriented dialogue system (TOD) is one kind of application of artificial intelligence (AI). The ...
In this project I studied how generative neural language models can be used for response generation....
Neural conversational models learn to generate responses by taking into account the dialog history. ...
Building systems that can communicate with humans is a core problem in Artificial Intelligence. This...
To the same utterance, people's responses in everyday dialogue may be diverse largely in terms of co...
In natural language processing, attention mechanism in neural networks are widely utilized. In this ...
In natural language processing, attention mechanism in neural networks are widely utilized. In this ...
Recent advances in pre-trained language models have significantly improved neural response generatio...
Neural generative models have become popular and achieved promising performance on short-text conver...
In this paper, we study the task of selecting the optimal response given a user and system utterance...
We consider incorporating topic information into a sequence-to-sequence framework to generate inform...
We study conversational dialog in which there are many possible responses to a given history. We pre...
We study multi-turn response generation in chatbots where a response is generated according to a con...
Neural open-domain dialogue systems often fail to engage humans in long-term interactions on popular...
Sequential data often possesses hierarchical structures with complex dependencies between sub-sequen...
Task-oriented dialogue system (TOD) is one kind of application of artificial intelligence (AI). The ...
In this project I studied how generative neural language models can be used for response generation....
Neural conversational models learn to generate responses by taking into account the dialog history. ...
Building systems that can communicate with humans is a core problem in Artificial Intelligence. This...
To the same utterance, people's responses in everyday dialogue may be diverse largely in terms of co...
In natural language processing, attention mechanism in neural networks are widely utilized. In this ...
In natural language processing, attention mechanism in neural networks are widely utilized. In this ...
Recent advances in pre-trained language models have significantly improved neural response generatio...
Neural generative models have become popular and achieved promising performance on short-text conver...
In this paper, we study the task of selecting the optimal response given a user and system utterance...
We consider incorporating topic information into a sequence-to-sequence framework to generate inform...
We study conversational dialog in which there are many possible responses to a given history. We pre...
We study multi-turn response generation in chatbots where a response is generated according to a con...
Neural open-domain dialogue systems often fail to engage humans in long-term interactions on popular...
Sequential data often possesses hierarchical structures with complex dependencies between sub-sequen...
Task-oriented dialogue system (TOD) is one kind of application of artificial intelligence (AI). The ...
In this project I studied how generative neural language models can be used for response generation....
Neural conversational models learn to generate responses by taking into account the dialog history. ...