학술논문

A question-and-answer classification technique for constructing and managing spoken dialog system
Document Type
Conference
Source
2011 International Conference on Speech Database and Assessments (Oriental COCOSDA) Speech Database and Assessments (Oriental COCOSDA), 2011 International Conference on. :97-101 Oct, 2011
Subject
Signal Processing and Analysis
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Computing and Processing
Databases
Accuracy
Speech recognition
Focusing
Weather forecasting
Artificial intelligence
Question-and-answering
pLSA
response accuracy
spoken dialog system
Language
Abstract
To recognize user speech accurately and respond to it appropriately, a spoken dialog system usually uses a question-and-answer database (QADB) which contains many question-and-answer pairs. The systems first select a question example which is the most similar to the recognition result for the input voice from the database. An answer sentence which is then paired with the selected question example is output to the user. Many systems have a large database to enable a more appropriate answer to be output. However, when such a database is used, the waiting time increases because the system needs to find the most appropriate question example from a vast number of question examples. We propose a method of classifying the queries in the QADB. By classifying question examples into some clusters using pLSA, an appropriate question example can be found more quickly than when using the conventional method. We evaluated the validity of our proposed method by changing various parameters.