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- Biweight midcorrelation (1)
- Categorical Data (1)
- Copula correlation (1)
- Differential Item Functioning (1)
- Dirichlet-Multinomial regression (1)
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- Distance Correlation (1)
- Distance correlation (1)
- Graph-Based Multivariate Test (1)
- Horseshoe (1)
- Horseshoe plus (1)
- Item Response Theory (1)
- Laplace (1)
- Learning Networks (1)
- Maximal information coefficient correlation (1)
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- Methodoogy (1)
- Microbiome data (1)
- Model-based Recursive Partitioning (1)
- Mutual information (1)
- Overdispersion (1)
- Perceived Stress Scale (1)
- Resource allocation (1)
- Spearman’s correlation (1)
- Statistical models (1)
- Variable selection (1)
Articles 1 - 5 of 5
Full-Text Articles in Physical Sciences and Mathematics
Comparative Evaluation Of Statistical Dependence Measures, Eman Abdel Rahman Ibrahim
Comparative Evaluation Of Statistical Dependence Measures, Eman Abdel Rahman Ibrahim
Graduate Theses and Dissertations
Measuring and testing dependence between random variables is of great importance in many scientific fields. In the case of linearly correlated variables, Pearson’s correlation coefficient is a commonly used measure of the correlation strength. In the case of nonlinear correlation, several innovative measures have been proposed, such as distance-based correlation, rank-based correlations, and information theory-based correlation. This thesis focuses on the statistical comparison of several important correlations, including Spearman’s correlation, mutual information, maximal information coefficient, biweight midcorrelation, distance correlation, and copula correlation, under various simulation settings such as correlative patterns and the level of random noise. Furthermore, we apply those …
Quantifying The Simultaneous Effect Of Socio-Economic Predictors And Build Environment On Spatial Crime Trends, Alfieri Daniel Ek
Quantifying The Simultaneous Effect Of Socio-Economic Predictors And Build Environment On Spatial Crime Trends, Alfieri Daniel Ek
Graduate Theses and Dissertations
Proper allocation of law enforcement agencies falls under the umbrella of risk terrainmodeling (Caplan et al., 2011, 2015; Drawve, 2016) that primarily focuses on crime prediction and prevention by spatially aggregating response and predictor variables of interest. Although mental health incidents demand resource allocation from law enforcement agencies and the city, relatively less emphasis has been placed on building spatial models for mental health incidents events. Analyzing spatial mental health events in Little Rock, AR over 2015 to 2018, we found evidence of spatial heterogeneity via Moran’s I statistic. A spatial modeling framework is then built using generalized linear models, …
Learning Networks With Categorical Data Using Distance Correlation, And A Novel Graph-Based Multivariate Test, Jian Tinker
Learning Networks With Categorical Data Using Distance Correlation, And A Novel Graph-Based Multivariate Test, Jian Tinker
Graduate Theses and Dissertations
We study the use of distance correlation for statistical inference on categorical data, especially the induction of probability networks. Szekely et al. first defined distance correlation for continuous variables in [42], and Zhang translated the concept into the categorical setting in [57] by defining dCor(X,Y) for categorical variables X = (x1,...,xI) and Y = (y1,...,yJ) where P(X=xi)=[pi]i and P(Y=yi)=[pi]j with the formula [Please open the document]
Part I of the dissertation covers the background we need to understand this formula, and prepares us to analyze the properties and performance of its applications.
Part II then presents the main results of …
Effect Of Predictor Dependence On Variable Selection For Linear And Log-Linear Regression, Apu Chandra Das
Effect Of Predictor Dependence On Variable Selection For Linear And Log-Linear Regression, Apu Chandra Das
Graduate Theses and Dissertations
We propose a Bayesian approach to the Dirichlet-Multinomial (DM) regression model, which uses horseshoe, Laplace, and horseshoe plus priors for shrinkage and selection. The Dirichlet-Multinomial model can be used to find the significant association between a set of available covariates and taxa for a microbiome sample. We incorporate the covariates in a log-linear regression framework. We design a simulation study to make a comparison among the performance of the three shrinkage priors in terms of estimation accuracy and the ability to detect true signals. Our results have clearly separated the performance of the three priors and indicated that the horseshoe …
Assessing Differential Item Functioning In The Perceived Stress Scale, Nana Amma Berko Asamoah
Assessing Differential Item Functioning In The Perceived Stress Scale, Nana Amma Berko Asamoah
Graduate Theses and Dissertations
When an item on a test functions differently for subgroups of respondents with respect to an exogenous variable (or covariate) after conditioning on the latent variable of interest, the item is said to exhibit Differential Item Functioning (DIF). The 10-item Perceived Stress Scale (PSS10) is administered to respondents via MTurk to quantify “perceived stress” and identify if items on the scale function differently for specific subgroups defined by age, sex, race, marital status, number of children, employment status and social media usage.
The purpose of this study was to compare traditional DIF detection approaches (Mantel-Haenszel, logistic regression, likelihood ratio test …