DocumentCode :
3744844
Title :
Incorporating user feedback to re-rank keyword search results
Author :
Scott Novotney;Kevin Jett;Owen Kimball
Author_Institution :
Raytheon BBN Technologies, Cambridge, MA, USA
fYear :
2015
Firstpage :
192
Lastpage :
199
Abstract :
This paper capitalizes on user feedback of a keyword search engine to improve search performance on queries users are actively searching for. We assume users give a binary label as to whether a hypothesized token is correct. This signal is used to train a support vector machine to re-rank lattice posteriors using additional features derived from automatic speech recognition. We simulate user feedback using 1800 hours of English Fisher conversational telephone speech as a search corpus and the Switchboard corpus as our training corpus. Our novel contribution focuses on combining keyword specific and keyword independent models, improving search precision by 5% absolute over using one keyword independent model alone. Clustering keyword training data into multiple models based on their false alarm behavior gives even greater gains, achieving a 9% increase in precision over one keyword independent model.
Keywords :
"Keyword search","Training","Speech","Switches","Training data","Feature extraction","Speech recognition"
Publisher :
ieee
Conference_Titel :
Automatic Speech Recognition and Understanding (ASRU), 2015 IEEE Workshop on
Type :
conf
DOI :
10.1109/ASRU.2015.7404794
Filename :
7404794
Link To Document :
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