Integral Equations To Non-Riemann Cases
Author Affiliations
- 1Department of Statistics, Burdwan University, Burdwan, W.B., INDIA
Res. J. Mathematical & Statistical Sci., Volume 1, Issue (7), Pages 6-12, August,12 (2013)
Abstract
The linear or nonlinear equations are important in many cases of stochastic process viz, renewal equations, age dependent branching process etc. There is a standard theory of linear integral equations. Here the technique is generalised and modified under different set ups. Generalisations are considered in three different cases:i. Integration is Riemann-Stieltjes integration with respect to an integrator of bounded variation, ii. integration w.r.t. step function integrator and iii. integration on any probability space or measure space.
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