
ALGORITHM FOR A FORMATION OF A SMALL TRAINING SET USING A MULTILAYER PERCEPTRON FOR A PRIORI ESTIMATES
Author(s) -
Mykhailo Seleznov
Publication year - 2020
Language(s) - English
DOI - 10.23947/2587-8999-2020-1-2-114-119
Subject(s) - computer science , perceptron , a priori and a posteriori , heuristics , machine learning , artificial intelligence , multilayer perceptron , set (abstract data type) , thread (computing) , algorithm , mathematical optimization , artificial neural network , mathematics , philosophy , epistemology , programming language , operating system
The paper proposes an algorithm for the formation of a small training set, which ensures a reasonable quality of a surrogate machine learning model trained using this set. The algorithm uses multilayer perceptron to estimate heuristics and select the best next sample for the inclusion in a set. The paper tests the algorithm proposed applying it to the problem of deformation and breaking of a thin thread under the action of a transverse load pulse on it. The possibility to generalize the approach and apply it to building surrogate machine learning models for other physical problems is discussed.