Open Access. Powered by Scholars. Published by Universities.®
- Keyword
-
- Applied mathematics (1)
- Backward elimination (1)
- Bayesian inference (1)
- Best subset selection (1)
- Car-following (1)
-
- Complex systems model (1)
- Correlation (1)
- Counter-terrorism (1)
- Data analysis (1)
- Extremism (1)
- Forward selection (1)
- GIS (1)
- Geographically-weighted regression (1)
- Hierarchical modeling (1)
- High dimensional data (1)
- Linear Regression (1)
- Model calibration (1)
- Model validation (1)
- Monte Carlo Simulation (1)
- Multicollinearity (1)
- Multivariate regression analysis (1)
- Parameter estimation (1)
- Poisson (1)
- Poisson Regression (1)
- Poisson Ridge Regression (1)
- Probabilistic graphical models (1)
- Probabilistic programming (1)
- Random forest (1)
- Regression (1)
- Regression trees (1)
Articles 1 - 4 of 4
Full-Text Articles in Multivariate Analysis
A Bayesian Programming Approach To Car-Following Model Calibration And Validation Using Limited Data, Franklin Abodo
A Bayesian Programming Approach To Car-Following Model Calibration And Validation Using Limited Data, Franklin Abodo
FIU Electronic Theses and Dissertations
Traffic simulation software is used by transportation researchers and engineers to design and evaluate changes to roadway networks. Underlying these simulators are mathematical models of microscopic driver behavior from which macroscopic measures of flow and congestion can be recovered. Many models are intended to apply to only a subset of possible traffic scenarios and roadway configurations, while others do not have any explicit constraint on their applicability. Work zones on highways are one scenario for which no model invented to date has been shown to accurately reproduce realistic driving behavior. This makes it difficult to optimize for safety and other …
Best Probable Subset: A New Method For Reducing Data Dimensionality In Linear Regression, Elieser Nodarse
Best Probable Subset: A New Method For Reducing Data Dimensionality In Linear Regression, Elieser Nodarse
FIU Electronic Theses and Dissertations
Regression is a statistical technique for modeling the relationship between a dependent variable Y and two or more predictor variables, also known as regressors. In the broad field of regression, there exists a special case in which the relationship between the dependent variable and the regressor(s) is linear. This is known as linear regression.
The purpose of this paper is to create a useful method that effectively selects a subset of regressors when dealing with high dimensional data and/or collinearity in linear regression. As the name depicts it, high dimensional data occurs when the number of predictor variables is far …
On The Performance Of Some Poisson Ridge Regression Estimators, Cynthia Zaldivar
On The Performance Of Some Poisson Ridge Regression Estimators, Cynthia Zaldivar
FIU Electronic Theses and Dissertations
Multiple regression models play an important role in analyzing and making predictions about data. Prediction accuracy becomes lower when two or more explanatory variables in the model are highly correlated. One solution is to use ridge regression. The purpose of this thesis is to study the performance of available ridge regression estimators for Poisson regression models in the presence of moderately to highly correlated variables. As performance criteria, we use mean square error (MSE), mean absolute percentage error (MAPE), and percentage of times the maximum likelihood (ML) estimator produces a higher MSE than the ridge regression estimator. A Monte Carlo …
Gis-Integrated Mathematical Modeling Of Social Phenomena At Macro- And Micro- Levels—A Multivariate Geographically-Weighted Regression Model For Identifying Locations Vulnerable To Hosting Terrorist Safe-Houses: France As Case Study, Elyktra Eisman
FIU Electronic Theses and Dissertations
Adaptability and invisibility are hallmarks of modern terrorism, and keeping pace with its dynamic nature presents a serious challenge for societies throughout the world. Innovations in computer science have incorporated applied mathematics to develop a wide array of predictive models to support the variety of approaches to counterterrorism. Predictive models are usually designed to forecast the location of attacks. Although this may protect individual structures or locations, it does not reduce the threat—it merely changes the target. While predictive models dedicated to events or social relationships receive much attention where the mathematical and social science communities intersect, models dedicated to …