Design of Data-Driven Mathematical Laws for Optimal Statistical Classification Systems
This work addresses the challenge of creating optimal classification systems for statistical pattern recognition, but it appears incremental as it builds on existing geometric locus methods within a statistical framework.
The paper tackles the problem of designing optimal statistical classification systems by devising data-driven mathematical laws that achieve minimum error rates for data with unchanging statistics, resulting in three classes of scalable learning machines for pattern recognition tasks with optimal generalization performance.
This article will devise data-driven, mathematical laws that generate optimal, statistical classification systems which achieve minimum error rates for data distributions with unchanging statistics. Thereby, I will design learning machines that minimize the expected risk or probability of misclassification. I will devise a system of fundamental equations of binary classification for a classification system in statistical equilibrium. I will use this system of equations to formulate the problem of learning unknown, linear and quadratic discriminant functions from data as a locus problem, thereby formulating geometric locus methods within a statistical framework. Solving locus problems involves finding equations of curves or surfaces defined by given properties and finding graphs or loci of given equations. I will devise three systems of data-driven, locus equations that generate optimal, statistical classification systems. Each class of learning machines satisfies fundamental statistical laws for a classification system in statistical equilibrium. Thereby, I will formulate three classes of learning machines that are scalable modules for optimal, statistical pattern recognition systems, all of which are capable of performing a wide variety of statistical pattern recognition tasks, where any given M-class statistical pattern recognition system exhibits optimal generalization performance for an M-class feature space.