A Simple Introduction to Regression Modeling using R

In statistical modeling, regression analysis is a group of statistical processes used in R programming and statistics to determine the relationship between dataset variables. It is a solid technique for determining the factors that affect an issue of interest. You can confidently establish which ele...

Full description

Saved in:
Bibliographic Details
Main Authors: Amr R Kamel, Mohamed Reda Abonazel
Format: Article
Language:English
Published: The Scientific Association for Studies and Applied Research 2023-04-01
Series:Computational Journal of Mathematical and Statistical Sciences
Subjects:
Online Access:https://cjmss.journals.ekb.eg/article_286631.html
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1850206474265952256
author Amr R Kamel
Mohamed Reda Abonazel
author_facet Amr R Kamel
Mohamed Reda Abonazel
author_sort Amr R Kamel
collection DOAJ
description In statistical modeling, regression analysis is a group of statistical processes used in R programming and statistics to determine the relationship between dataset variables. It is a solid technique for determining the factors that affect an issue of interest. You can confidently establish which elements are most important, which ones can be ignored, and how these factors interact when you do a regression. It can be used to simulate the long-term link between variables and gauge how strongly the relationships between them are related. Regression analysis is typically used to ascertain the relationship between the dataset's dependent and independent variables. Generally, regression analysis is used to determine the relationship between the dependent and independent variables of the dataset. Understanding how dependent variables change when one of the independent variables changes while the other independent variables remain constant is made easier with the use of regression analysis. As a result, it is easier to create a regression model and forecast values in response to changes in one of the independent variables. Based on the categories of dependent variables, the quantity of independent variables, and the contour of the regression line. In this paper, we use the R programming language to present various empirical investigations in statistics and econometrics. We next consider problems involving modeling the relationship between response and explanatory variables for linear and non-liner regression models.
format Article
id doaj-art-821faaf9e1124e0cb37c267e269705f4
institution OA Journals
issn 2974-3435
2974-3443
language English
publishDate 2023-04-01
publisher The Scientific Association for Studies and Applied Research
record_format Article
series Computational Journal of Mathematical and Statistical Sciences
spelling doaj-art-821faaf9e1124e0cb37c267e269705f42025-08-20T02:10:49ZengThe Scientific Association for Studies and Applied ResearchComputational Journal of Mathematical and Statistical Sciences2974-34352974-34432023-04-0121527910.21608/CJMSS.2023.189834.1002A Simple Introduction to Regression Modeling using RAmr R Kamel 0Mohamed Reda Abonazel 1Department of Basic Sciences, Elgazeera High Institute for Computers and Information Systems, Ministry of Higher Education, Cairo, Egypt. Department of applied statistics and Econometrics, Faculty of Graduate Studies for Statistical Research, Cairo Uniersity, Giza 12613, EgyptIn statistical modeling, regression analysis is a group of statistical processes used in R programming and statistics to determine the relationship between dataset variables. It is a solid technique for determining the factors that affect an issue of interest. You can confidently establish which elements are most important, which ones can be ignored, and how these factors interact when you do a regression. It can be used to simulate the long-term link between variables and gauge how strongly the relationships between them are related. Regression analysis is typically used to ascertain the relationship between the dataset's dependent and independent variables. Generally, regression analysis is used to determine the relationship between the dependent and independent variables of the dataset. Understanding how dependent variables change when one of the independent variables changes while the other independent variables remain constant is made easier with the use of regression analysis. As a result, it is easier to create a regression model and forecast values in response to changes in one of the independent variables. Based on the categories of dependent variables, the quantity of independent variables, and the contour of the regression line. In this paper, we use the R programming language to present various empirical investigations in statistics and econometrics. We next consider problems involving modeling the relationship between response and explanatory variables for linear and non-liner regression models. https://cjmss.journals.ekb.eg/article_286631.htmlregression analysispractical introductionestimation methodsmultiple regressionr software
spellingShingle Amr R Kamel
Mohamed Reda Abonazel
A Simple Introduction to Regression Modeling using R
Computational Journal of Mathematical and Statistical Sciences
regression analysis
practical introduction
estimation methods
multiple regression
r software
title A Simple Introduction to Regression Modeling using R
title_full A Simple Introduction to Regression Modeling using R
title_fullStr A Simple Introduction to Regression Modeling using R
title_full_unstemmed A Simple Introduction to Regression Modeling using R
title_short A Simple Introduction to Regression Modeling using R
title_sort simple introduction to regression modeling using r
topic regression analysis
practical introduction
estimation methods
multiple regression
r software
url https://cjmss.journals.ekb.eg/article_286631.html
work_keys_str_mv AT amrrkamel asimpleintroductiontoregressionmodelingusingr
AT mohamedredaabonazel asimpleintroductiontoregressionmodelingusingr
AT amrrkamel simpleintroductiontoregressionmodelingusingr
AT mohamedredaabonazel simpleintroductiontoregressionmodelingusingr