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Semantically Conditioned LSTM-based Natural Language Generation for Spoken Dialogue Systems

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arxiv 1508.01745 v2 pith:STUIXS52 submitted 2015-08-07 cs.CL

Semantically Conditioned LSTM-based Natural Language Generation for Spoken Dialogue Systems

classification cs.CL
keywords languagesystemslstmnaturaldialoguedomainseasilygeneration
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Natural language generation (NLG) is a critical component of spoken dialogue and it has a significant impact both on usability and perceived quality. Most NLG systems in common use employ rules and heuristics and tend to generate rigid and stylised responses without the natural variation of human language. They are also not easily scaled to systems covering multiple domains and languages. This paper presents a statistical language generator based on a semantically controlled Long Short-term Memory (LSTM) structure. The LSTM generator can learn from unaligned data by jointly optimising sentence planning and surface realisation using a simple cross entropy training criterion, and language variation can be easily achieved by sampling from output candidates. With fewer heuristics, an objective evaluation in two differing test domains showed the proposed method improved performance compared to previous methods. Human judges scored the LSTM system higher on informativeness and naturalness and overall preferred it to the other systems.

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