DBN based joint dialogue act recognition of multiparty meetings
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Abstract
Joint Dialogue Act segmentation and classification of the new AMI
meeting corpus has been performed through an integrated framework
based on a switching dynamic Bayesian network and a set of continuous
features and language models. The recognition process is based
on a dictionary of 15 DA classes tailored for group decision-making.
Experimental results show that a novel interpolated Factored Language
Model results in a low error rate on the automatic segmentation
task, and thus good recognition results can be achieved on AMI
multiparty conversational speech.
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