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What is Measurable Function

Handbook of Research on Novel Soft Computing Intelligent Algorithms: Theory and Practical Applications
In mathematics, measurable functions are well-behaved functions between measurable spaces. Functions studied in analysis that are not measurable are generally considered pathological. If S is an s-algebra over a set X and ? is an s-algebra over Y, then a function f:X ? Y is measurable S/? if the pre-image of every set in ? is in S. By convention, if Y is some topological space, such as the space of real numbers {R} or the complex numbers {C} , then the Borel s-algebra generated by the open sets on Y is used, unless otherwise specified. The measurable space ( X , S) is also called a Borel space in this case. Banach spaces are defined as complete normed vector spaces . This means that a Banach space is a vector space V over the real or complex numbers with a such norm||.|| that every Cauchy sequence (with respect to the metric d ( x , y )=|| x-y| | in V has a limit in V. Since the norm induces a topology on the vector space, every Banach space is necessarily metrizable and metrizable spaces generally have very interesting properties.
Published in Chapter:
Evaluation of Genetic Algorithm as Learning System in Rigid Space Interpretation
Bhupesh Kumar Singh (Govind Ballabh Pant University of Agriculture & Technology, India)
DOI: 10.4018/978-1-4666-4450-2.ch016
Abstract
Genetic Algorithm (GA) (a structured framework of metaheauristics) has been used in various tasks such as search optimization and machine learning. Theoretically, there should be sound framework for genetic algorithms which can interpret/explain the various facts associated with it. There are various theories of the working of GA though all are subject to criticism. Hence an approach is being adopted that the legitimate theory of GA must be able to explain the learning process (a special case of the successive approximation) of GA. The analytical method of approximating some known function is expanding a complicated function an infinite series of terms containing some simpler (or otherwise useful) function. These infinite approximations facilitate the error to be made arbitrarily small by taking a progressive greater number of terms into consideration. The process of learning in an unknown environment, the form of function to be learned is known only by its form over the observation space. The problem of learning the possible form of the function is termed as experience problem. Various learning paradigms have ensured their legitimacy through the rigid space interpretation of the concentration of measure and Dvoretzky theorem. Hence it is being proposed that the same criterion should be applied to explain the learning capability of GA, various formalisms of explaining the working of GA should be evaluated by applying the criteria, and that learning capability can be used to demonstrate the probable capability of GA to perform beyond the limit cast by the No Free Lunch Theorem.
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