Graduation Semester and Year
2021
Language
English
Document Type
Dissertation
Degree Name
Doctor of Philosophy in Industrial Engineering
Department
Industrial and Manufacturing Systems Engineering
First Advisor
Victoria Chen
Abstract
Traditionally, physical scientific experiments have been conducted extensively to study and understand the behavior of a process or a system. With the advancement of computing technology in recent years, computer codes and algorithms are used as simulators to replicate behavior of a complex system. Such use of computers to study a system is termed as ‘computer experiments.’ The process involves selecting specific points or runs in the design space in order to maximize information about the system in minimal runs. These computer models are high dimensional and can take a long time to simulate. Metamodels (or surrogate models) built using the data collected from computer model experiments are hence used to approximate the functional relationship between inputs and outputs. The contribution of this dissertation falls in design points selection and modeling stages of the above process. First, existing computer experiments with mixed factors (categorical and numerical) are reviewed and then we perform a comprehensive study of these designs to understand their performance under various settings. In the latter part of the thesis, we propose a data-mining framework to learn and model interactions and non-linearity with categorical and numerical features.
Keywords
Design and analysis of computer experiments, Computer models, Data-mining, Categorical features, Interactions
Disciplines
Engineering | Operations Research, Systems Engineering and Industrial Engineering
License
This work is licensed under a Creative Commons Attribution-NonCommercial-Share Alike 4.0 International License.
Recommended Citation
Rao, Shirish Mohan, "Machine Learning Framework for Nonlinear and Interaction Relationships Involving Categorical and Numerical Features" (2021). Industrial, Manufacturing, and Systems Engineering Dissertations. 178.
https://mavmatrix.uta.edu/industrialmanusys_dissertations/178
Comments
Degree granted by The University of Texas at Arlington