Title
Speech-based retrieval using semantic co-occurrence filtering
Abstract
In this paper we demonstrate that speech recognition can be effectively applied to information retrieval (IR) applications. Our system exploits the fact that the intended words of a spoken query tend to co-occur in text documents in close proximity whereas word combinations that are the result of recognition errors are usually not semantically correlated and thus do not appear together. Termed "Semantic Co-occurrence Filtering" this enables the system to simultaneously disambiguate word hypotheses and find relevant text for retrieval. The system is built by integrating standard IR and speech recognition techniques. An evaluation of the system is presented and we discuss several refinements to the functionality.
Year
DOI
Venue
1994
10.3115/1075812.1075898
HLT
Keywords
Field
DocType
disambiguate word hypothesis,speech recognition,standard ir,semantic co-occurrence,intended word,information retrieval,text document,relevant text,speech recognition technique,speech-based retrieval,word combination,recognition error
Computer science,Filter (signal processing),Speech recognition,Co-occurrence,Exploit,Natural language processing,Artificial intelligence,Visual Word
Conference
ISBN
Citations 
PageRank 
1-55860-357-3
18
2.82
References 
Authors
4
3
Name
Order
Citations
PageRank
Julian Kupiec11061381.10
Don Kimber214429.40
vijay balasubramanian323231.84