This brief monograph is the 1st publication to concentration solely at the research of summability tools, that have turn into lively components of analysis in recent times. The publication presents uncomplicated definitions of series areas, matrix adjustments, ordinary matrices and a few exact matrices, making the fabric available to mathematicians who're new to the subject. Among the core items coated are the evidence of the top quantity Theorem utilizing Lambert's summability and Wiener's Tauberian theorem, a few effects on summability assessments for singular issues of an analytic functionality, and analytic continuation via Lototski summability. Almost summability is brought to turn out Korovkin-type approximation theorems and the final chapters function statistical summability, statistical approximation, and a few purposes of summability tools in mounted aspect theorems.
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