Graduation date: 2014Monte Carlo simulation is used to quantify and characterize uncertainty in a variety of applications such as financial/engineering economic analysis, and project management. The dependence or correlation between the random variables modeled can also be simulated to add more accuracy to simulations. However, there exists a difference between how correlation is most often estimated from data (linear correlation), and the correlation that is simulated (rank correlation).\ud In this research an empirical methodology is developed to estimate the difference between the specified linear correlation between two random variables, and the resulting linear correlation when rank correlation is simulated. It is shown that in some c...
Monte Carlo simulations have become the workhorse of the modern methodologist aimed at providing bot...
The present study was concerned with the problem of combining incomplete sets of rank order data. Th...
Random coefficient linear regression models have been employed in economics, medical and psychologic...
We have studied the effects of range and distribution of data on product moment and rank correlation...
This thesis explores the need to recognise and represent accurately the interdependencies between un...
Science-based models often involve substantial uncertainty that must be quantified in a defendable w...
This article reports the results of a Monte Carlo simulation comparing four differ-ent indices of re...
The consequences of factoring alternative correlation matrices are investigated assuming ordinal sca...
The objectives of this research are threefold. First, a means of statistically validating the use of...
Since the purpose of many studies is to describe and summarize the relations between two or more var...
The Kendall (1955) rank correlation coefficient evaluates the degree of similarity between two sets ...
This paper presents a rank correlation curve. The traditional correlation coefficient is valid for b...
Correlation is a statistical technique that can show whether and how strongly pairs of variables are...
Includes bibliographical references (pages 23-26)Parametric forms of correlation are usually preferr...
The word correlation in general indicates that two quantities are related and somehow linked togethe...
Monte Carlo simulations have become the workhorse of the modern methodologist aimed at providing bot...
The present study was concerned with the problem of combining incomplete sets of rank order data. Th...
Random coefficient linear regression models have been employed in economics, medical and psychologic...
We have studied the effects of range and distribution of data on product moment and rank correlation...
This thesis explores the need to recognise and represent accurately the interdependencies between un...
Science-based models often involve substantial uncertainty that must be quantified in a defendable w...
This article reports the results of a Monte Carlo simulation comparing four differ-ent indices of re...
The consequences of factoring alternative correlation matrices are investigated assuming ordinal sca...
The objectives of this research are threefold. First, a means of statistically validating the use of...
Since the purpose of many studies is to describe and summarize the relations between two or more var...
The Kendall (1955) rank correlation coefficient evaluates the degree of similarity between two sets ...
This paper presents a rank correlation curve. The traditional correlation coefficient is valid for b...
Correlation is a statistical technique that can show whether and how strongly pairs of variables are...
Includes bibliographical references (pages 23-26)Parametric forms of correlation are usually preferr...
The word correlation in general indicates that two quantities are related and somehow linked togethe...
Monte Carlo simulations have become the workhorse of the modern methodologist aimed at providing bot...
The present study was concerned with the problem of combining incomplete sets of rank order data. Th...
Random coefficient linear regression models have been employed in economics, medical and psychologic...