THE FUNCTION CONCEPT INTRODUCTION. - UH
function concept is the idea of a correspondence between two sets of objects. One of the definitions of “function” given in the Random House Dictionary of the English Language is: ... a variable, such as x, used to represent an element in the domain is called an
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