Abstract:
The main objective of this work is to find a more straightforward method for estimating the parameters of an equally spaced discrete autoregressive process by using maximum likelihood estimation (MLE) considering it is challenging to obtain the parameters of a nonlinear optimization procedure. The resulting estimated values are tested through simulation and then compared with those obtained using the previous MLE and Yule-Walker estimation. The achieved result yields slightly increased accuracy.
Another problem we tackle is the Yule-Walker estimators for the continuous autoregressive models based on equally spaced discrete-time approximations. Again, these estimators are examined through simulation to demonstrate that the obtained result yields an accurate estimation.
Description:
"A thesis submitted to the Faculty of Natural and Applied Sciences in partial fulfillment of the requirements for the degree of Master of Science in Financial Mathematics"; M.S. -- Faculty of Natural and Applied Sciences, Notre Dame University, Louaize, 2019; Includes bibliographical references (leaves 37-38).