An Investigation into Regression Models with Autocorrelated Errors and Applications.
Access status:
Open Access
Type
ThesisThesis type
Masters by ResearchAbstract
Estimation of regression models with autocorrelated errors is an important problem in many practical
applications, especially in finance, economics, and medical research. This research reviews the
theory of conditional and exact least squares estimation in regression models with ...
See moreEstimation of regression models with autocorrelated errors is an important problem in many practical applications, especially in finance, economics, and medical research. This research reviews the theory of conditional and exact least squares estimation in regression models with autoregressive (AR) errors. It also investigates the theory of exact parameter estimation in regression models with higher-order autoregressive errors by extending the Prais-Winsten approach. The Prais-Winsten method for higher-order AR errors, using a computationally efficient zig-zag algorithm, is discussed and assessed through a simulation study. The theoretical incorporation of small-sample analysis with AR errors within the Prais-Winsten conceptual framework is also explored. The findings are further substantiated by applying the theory to time series data in the health sector, demonstrating its applicability and usefulness in real world scenarios. These contributions highlight the importance of addressing AR errors in regression models and offer novel methodologies to improve predictive accuracy in practical applications.
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See moreEstimation of regression models with autocorrelated errors is an important problem in many practical applications, especially in finance, economics, and medical research. This research reviews the theory of conditional and exact least squares estimation in regression models with autoregressive (AR) errors. It also investigates the theory of exact parameter estimation in regression models with higher-order autoregressive errors by extending the Prais-Winsten approach. The Prais-Winsten method for higher-order AR errors, using a computationally efficient zig-zag algorithm, is discussed and assessed through a simulation study. The theoretical incorporation of small-sample analysis with AR errors within the Prais-Winsten conceptual framework is also explored. The findings are further substantiated by applying the theory to time series data in the health sector, demonstrating its applicability and usefulness in real world scenarios. These contributions highlight the importance of addressing AR errors in regression models and offer novel methodologies to improve predictive accuracy in practical applications.
See less
Date
2025Rights statement
The author retains copyright of this thesis. It may only be used for the purposes of research and study. It must not be used for any other purposes and may not be transmitted or shared with others without prior permission.Faculty/School
Faculty of Science, School of Mathematics and StatisticsDepartment, Discipline or Centre
Mathematics and StatisticsAwarding institution
The University of SydneyShare