Title :
Minimum mean-square error transformations of categorical data to target positions
Author :
Zahorian, Stephen A. ; Jagharghi, Amir Jalali
Author_Institution :
Dept. of Electr. & Comput. Eng., Old Dominion Univ., Norfolk, VA, USA
fDate :
1/1/1992 12:00:00 AM
Abstract :
A new algorithm is described for transforming multidimensional data such that all the data points in each of several predefined categories map toward a category target position in the transformed space. The procedure is based on minimizing the mean-square error between specified category target positions and actual transformed locations of the data. Least squares estimation techniques are used to derive linear equations for computing the transformation coefficients and for determining an origin offset in the transformed space. However, for additional flexibility in the transformation, a method is presented for combining the linear transformation with a nonlinear connectionist network transformation. This procedure can, among other things, be used as a tool to evaluate the precision with which physical measurements of psychophysical stimuli correlate with the perceptual configuration of those stimuli. Potential speech science applications are identified. Experimental results illustrate some of these applications with vowel data
Keywords :
least squares approximations; speech analysis and processing; algorithm; categorical data; least squares estimation; linear equations; linear transformation; measurements; minimum mean square error transformations; nonlinear connectionist network transformation; origin offset; psychophysical stimuli; speech science applications; target positions; transformation coefficients; transformed space; vowel data; Acoustic applications; Acoustic devices; Acoustic measurements; Automatic speech recognition; Ear; Least squares approximation; Multidimensional systems; Psychology; Speech analysis; Speech processing;
Journal_Title :
Signal Processing, IEEE Transactions on