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Natural Language Generation in Dialog Systems (0)

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by Owen Rambow , Srinivas Bangalore , Marilyn Walker
Citations:14 - 1 self
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BibTeX

@MISC{Rambow_naturallanguage,
    author = {Owen Rambow and Srinivas Bangalore and Marilyn Walker},
    title = {Natural Language Generation in Dialog Systems},
    year = {}
}

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Abstract

Recent advances in Automatic Speech Recognition technology have put the goal of naturally sounding dialog systems within reach. However, the improved speech recognition has brought to light a new problem: as dialog systems understand more of what the user tells them, they need to be more sophisticated at responding to the user. The issue of system response to users has been extensively studied by the natural language generation community, though rarely in the context of dialog systems. We show how research in generation can be adapted to dialog systems, and how the high cost of hand-crafting knowledge-based generation systems can be overcome by employing machine learning techniques.

Keyphrases

dialog system    natural language generation    improved speech recognition    natural language generation community    new problem    automatic speech recognition technology    hand-crafting knowledge-based generation system    recent advance    high cost    system response   

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