Dimensional Analysis (DA) is a mathematical method that manipulates the data to be analyzed in a homogenized manner. Likewise, linear regression is a potent method for analyzing data in diverse fields. At the same time, data visualization has gained attention in tendency study. In addition, linear regression is an important topic to address predictive models and patterns in data study. However, it is still pending to attack the manipulation of uncertainty related to the data transformation. In this sense, this work presents a new contribution with linear regression, combining the Dimensional Analysis (DA) to address instability and error issues. In addition, our method provides a second contribution related to including the decision maker’s...
Abstract The problem of approximating high-dimensional data with a low-dimensional representa-tion i...
Abstract — Data dimensionality refers to the number of variables that are measured on each observat...
Four methods for determining the dimensionality of a set of test items were compared: (1) linear fac...
After a review of the mainly dimensionality reduction methods as well as of the Shrinkage Regression...
In this paper, a new procedure for testing the number of linear components in a general regression p...
After a review of the mainly dimensionality reduction methods as well as of the Shrinkage Regression...
Regression is the study of the dependence of a response variable y on a collection predictors p coll...
Linear regression analysis is one of the most important statistical methods. Itexamines the linear r...
In case one or more sets of variables are available, the use of dimensional reduction methods could ...
In case one or more sets of variables are available, the use of dimensional reduction methods could...
This study compared four methods of determining the dimensionality of a set of test items: linear fa...
Linear regression is a statistical procedure for calculating the value of a dependent variable from ...
Regression analysis or test is a study of the relationship between one variable, namely a free varia...
A prominent difficulty facing researchers is the visualization of high dimensional data. Several dim...
This thesis presents a new approach to fitting linear models, called “pace regression”, which also o...
Abstract The problem of approximating high-dimensional data with a low-dimensional representa-tion i...
Abstract — Data dimensionality refers to the number of variables that are measured on each observat...
Four methods for determining the dimensionality of a set of test items were compared: (1) linear fac...
After a review of the mainly dimensionality reduction methods as well as of the Shrinkage Regression...
In this paper, a new procedure for testing the number of linear components in a general regression p...
After a review of the mainly dimensionality reduction methods as well as of the Shrinkage Regression...
Regression is the study of the dependence of a response variable y on a collection predictors p coll...
Linear regression analysis is one of the most important statistical methods. Itexamines the linear r...
In case one or more sets of variables are available, the use of dimensional reduction methods could ...
In case one or more sets of variables are available, the use of dimensional reduction methods could...
This study compared four methods of determining the dimensionality of a set of test items: linear fa...
Linear regression is a statistical procedure for calculating the value of a dependent variable from ...
Regression analysis or test is a study of the relationship between one variable, namely a free varia...
A prominent difficulty facing researchers is the visualization of high dimensional data. Several dim...
This thesis presents a new approach to fitting linear models, called “pace regression”, which also o...
Abstract The problem of approximating high-dimensional data with a low-dimensional representa-tion i...
Abstract — Data dimensionality refers to the number of variables that are measured on each observat...
Four methods for determining the dimensionality of a set of test items were compared: (1) linear fac...