TY - JOUR T1 - Models of Stohastic Processes and Their use in Optimal Linear Inteprolation and Forecasting AU - Alekseevich Golovkov, Vladimir JO - International Journal of System Signal Control and Engineering Application VL - 10 IS - 4 SP - 113 EP - 116 PY - 2017 DA - 2001/08/19 SN - 1997-5422 DO - ijssceapp.2017.113.116 UR - https://makhillpublications.co/view-article.php?doi=ijssceapp.2017.113.116 KW - Stochastic process KW -differentiability KW -wiener-Hopf filtering KW -forecasting KW -interpolation AB - In this study, I consider models of stochastic process correlation functions and, by way of numerical calculation, prove that the efficiency of optimal linear interpolation and forecasting is determined by the existing highest derivative of a stochastic process. I also set out the results of numerical calculations pertaining to efficiency assessment of interpolation and forecasting of finitely differentiable stochastic processes with correlation functions commonly used in practice for Wiener-Hopf filtering. ER -