Title :
Decision tree design and applications in speech processing
Author :
Dattatreya, G.R. ; Sarma, V.V.S.
Author_Institution :
Indian Institute of Science, School of Automation, Bangalore, India
fDate :
4/1/1984 12:00:00 AM
Abstract :
The design and operation of the minimum cost classifier, where the total cost is the sum of the measurement cost and the classification cost, is computationally complex. Noting the difficulties associated with this approach, decision tree design directly from a set of labelled samples is proposed in this paper. The feature space is first partitioned to transform the problem to one of discrete features. The resulting problem is solved by a dynamic programming algorithm over an explicitly ordered state space of all outcomes of all feature subsets. The solution procedure is very general and is applicable to any minimum cost pattern classification problem in which each feature has a finite number of outcomes. These techniques are applied to (i) voiced, unvoiced, and silence classification of speech, and (ii) spoken vowel recognition. The resulting decision trees are operationally very efficient and yield attractive classification accuracies.
Keywords :
decision theory and analysis; dynamic programming; speech analysis and processing; speech recognition; decision tree design; dynamic programming; feature space; minimum cost classifier; silence classification; speech processing; spoken vowel recognition; unvoiced classification; voice classification;
Journal_Title :
Communications, Radar and Signal Processing, IEE Proceedings F
DOI :
10.1049/ip-f-1.1984.0024