Modeling K-Factors Analysis in Design Of Experiment (Doe) Towards Regression Approach Using Multilayer Feed-Forward Neural Network (MLFF): Its’ Application In Biostatistics

Qadir, Soban (2022) Modeling K-Factors Analysis in Design Of Experiment (Doe) Towards Regression Approach Using Multilayer Feed-Forward Neural Network (MLFF): Its’ Application In Biostatistics. PhD thesis, Universiti Sains Malaysia.

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Abstract

Design of Experiments (DOE) is one of the well-known and widely used statistical methodologies. The results of this DOE provide a very valuable result especially when a researcher studying the relationship between variables. A large number of studies that have been carried out today are hoping for a more accurate result. Indeed, the number of studies involving the development of scientific research methodology is increasing over time. This study aims to develop the best method for data analysis, especially involving a combination of DOE, bootstrap, and linear regression as well as a multi-layer feed-forward neural network (MLFF) through the R programming language. The thesis emphasizes the development of an accurate and valid regression model that involves several combinations of key methods. Based on the results obtained, it can be concluded that this developed methodology shows results encouraging for modeling techniques. In conclusion, this method can be used effectively, especially when performing regression modeling on experimental design.

Item Type: Thesis (PhD)
Uncontrolled Keywords: Design of Experiments (DOE), statistical methodologies, data analysis
Subjects: Q Science > QA Mathematics > QA276-280 Mathematical Analysis
Divisions: Kampus Kesihatan (Health Campus) > Pusat Pengajian Sains Pergigian (School of Dental Sciences) > Thesis
Depositing User: Mr Abdul Hadi Mohammad
Date Deposited: 25 Jun 2023 06:57
Last Modified: 06 Jul 2023 02:30
URI: http://eprints.usm.my/id/eprint/58821

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