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Full-Text Articles in Physical Sciences and Mathematics
Bayesian Logistic Regression Model For Siting Biomass-Using Facilities, Xia Huang
Bayesian Logistic Regression Model For Siting Biomass-Using Facilities, Xia Huang
Masters Theses
Key sources of oil for western markets are located in complex geopolitical environments that increase economic and social risk. The amalgamation of economic, environmental, social and national security concerns for petroleum-based economies have created a renewed emphasis on alternative sources of energy which include biomass. The stability of sustainable biomass markets hinges on improved methods to predict and visualize business risk and cost to the supply chain.
This thesis develops Bayesian logistic regression models, with comparisons of classical maximum likelihood models, to quantify significant factors that influence the siting of biomass-using facilities and predict potential locations in the 13-state Southeastern …
Mixture Of Factor Analyzers With Information Criteria And The Genetic Algorithm, Esra Turan
Mixture Of Factor Analyzers With Information Criteria And The Genetic Algorithm, Esra Turan
Doctoral Dissertations
In this dissertation, we have developed and combined several statistical techniques in Bayesian factor analysis (BAYFA) and mixture of factor analyzers (MFA) to overcome the shortcoming of these existing methods. Information Criteria are brought into the context of the BAYFA model as a decision rule for choosing the number of factors m along with the Press and Shigemasu method, Gibbs Sampling and Iterated Conditional Modes deterministic optimization. Because of sensitivity of BAYFA on the prior information of the factor pattern structure, the prior factor pattern structure is learned directly from the given sample observations data adaptively using Sparse Root algorithm. …
A New Screening Methodology For Mixture Experiments, Maria Weese
A New Screening Methodology For Mixture Experiments, Maria Weese
Doctoral Dissertations
Many materials we use in daily life are comprised of a mixture; plastics, gasoline, food, medicine, etc. Mixture experiments, where factors are proportions of components and the response depends only on the relative proportions of the components, are an integral part of product development and improvement. However, when the number of components is large and there are complex constraints, experimentation can be a daunting task. We study screening methods in a mixture setting using the framework of the Cox mixture model [1]. We exploit the easy interpretation of the parameters in the Cox mixture model and develop methods for screening …