Non-normal models for classification of speech sounds

Date
1954
DOI
Authors
Stubbs, Harold LeRoy
Version
OA Version
Citation
Abstract
The speech analysis problem under consideration is to classify, by an optimum procedure, a speech sound (phoneme) on the basis of certain electronically measured variables. For the vowel phonemes (designated by pi_l, . . ., pi_m) of specific interest, the appropriate variables are fractions x_1, . . ., x_p of the total power contained in p mutually exclusive portions of the frequency spectrum such that pΣi=1 x_i=1. Some related variables designated by y_l, . . .,y_p are approximately proportional to sqrt(x_1), . . ., sqrt(x_p) so that pΣi=1 (y^2)_i=1. In order to apply the statistical criterion of maxime likelihood (assuming equal costs of misclassification and equal a priori probabilities), it is necessary to make reasonable assumptions as to the mathematical form of the probability distributions 0_g(x) or 0_g(y) in the population pi_g, g=1, . . ., m, where x and y represent the sets of p variables, Certain conditions of formal symmetry are set up for 0_g(x) or 0_g(y), along with requirements derived from observed data that variances should be smallest for means close to zero or 1, and that provision should be made for positive probability that x_i=zero. These conditions combine to rule out the usual normal model, with the same covariance matric in all populations, which leads to the linear discriminant function. [TRUNCATED]
Description
Thesis (Ph.D.)--Boston University
License
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