Deep Learning Based Chatbot Models
A conversational agent (chatbot) is a piece of software that is able to communicate with humans using natural language. Modeling conversation is an important task in natural language processing and artificial intelligence. While chatbots can be used for various tasks, in general they have to underst...
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Zusammenfassung: | A conversational agent (chatbot) is a piece of software that is able to
communicate with humans using natural language. Modeling conversation is an
important task in natural language processing and artificial intelligence.
While chatbots can be used for various tasks, in general they have to
understand users' utterances and provide responses that are relevant to the
problem at hand.
In my work, I conduct an in-depth survey of recent literature, examining over
70 publications related to chatbots published in the last 3 years. Then, I
proceed to make the argument that the very nature of the general conversation
domain demands approaches that are different from current state-of-of-the-art
architectures. Based on several examples from the literature I show why current
chatbot models fail to take into account enough priors when generating
responses and how this affects the quality of the conversation. In the case of
chatbots, these priors can be outside sources of information that the
conversation is conditioned on like the persona or mood of the conversers. In
addition to presenting the reasons behind this problem, I propose several ideas
on how it could be remedied.
The next section focuses on adapting the very recent Transformer model to the
chatbot domain, which is currently state-of-the-art in neural machine
translation. I first present experiments with the vanilla model, using
conversations extracted from the Cornell Movie-Dialog Corpus. Secondly, I
augment the model with some of my ideas regarding the issues of encoder-decoder
architectures. More specifically, I feed additional features into the model
like mood or persona together with the raw conversation data. Finally, I
conduct a detailed analysis of how the vanilla model performs on conversational
data by comparing it to previous chatbot models and how the additional features
affect the quality of the generated responses. |
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DOI: | 10.48550/arxiv.1908.08835 |