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An attention based model for off-topic spontaneous spoken response detection: An Initial Study

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Malinin, Andrey 
Knill, Kate 
Ragni, Anton 
Wang, Yu 


Automatic spoken language assessment systems are gaining popularity due to the rising demand for English second language learning. Current systems primarily assess fluency
and pronunciation, rather than semantic content and relevance of a candidate's response to a prompt. However, to increase reliability and robustness, relevance assessment an
d off-topic response detection are desirable, particularly for spontaneous spoken responses to open-ended prompts. Previously proposed approaches usually require prompt-resp
onse pairs for all prompts. This limits flexibility as example responses are required whenever a new test prompt is introduced. This paper presents a initial study of an attention based neural model which assesses the relevance of prompt-response pairs without the need to see them in training. This model uses a bidirectional Recurrent Neural Network (BiRNN) embedding of the prompt to compute attention over the hidden states of a BiRNN embedding of the response. The resulting fixed-length embedding is fed into a binary classifier to predict relevance of the response. Due to a lack of off-topic responses, negative examples for both training and evaluation are created by randomly shuffling prompts and responses. On spontaneous spoken data this system is able to assess relevance to both seen and unseen prompts.



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7th ISCA Workshop on Speech and Language Technology

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Cambridge Assessment (unknown)