KANDA DATA

  • Home
  • About Us
  • Contact
  • Sitemap
  • Privacy Policy
  • Disclaimer
  • Bimbingan Online Kanda Data
Menu
  • Home
  • About Us
  • Contact
  • Sitemap
  • Privacy Policy
  • Disclaimer
  • Bimbingan Online Kanda Data
Home/Linear regression

Tag: Linear regression

Dummy Variables: A Solution for Categorical Variables in OLS Linear Regression

By Kanda Data / Date Aug 14.2025 / Category Multiple Linear Regression

If you’re analyzing data using OLS linear regression, there are certain assumptions you need to meet. The purpose of these assumption tests is to ensure that the estimation results are consistent and unbiased.

Continue Reading

The Difference Between Residual and Error in Statistics

By Kanda Data / Date Aug 11.2025 / Category Statistics

For those of you who are learning statistics, you’ve probably come across theories explaining the concepts of residual and error. At first glance, they seem almost identical, and many people even think they mean the same thing. However, in statistics, residual and error actually have different meanings.

Continue Reading

How to Create Dummy Variables in Multiple Linear Regression Analysis

By Kanda Data / Date Jul 31.2025 / Category Econometrics

For those of you conducting multiple linear regression analysis, have you ever used dummy variables? These variables are very useful when we want to include categorical variables in a multiple linear regression equation.

Continue Reading

How to Automatically Display Residual Values in Regression Analysis Using Excel

By Kanda Data / Date Apr 25.2025 / Category Regression Tutorial using Excel

Residual values play an important role in linear regression analysis. These residuals are used for OLS assumption tests, such as normality tests and heteroskedasticity tests. For instance, one of the key assumptions in linear regression analysis is that the residuals are normally distributed.

Continue Reading

The Impact of Residual Variance on P-Value in Regression Analysis

By Kanda Data / Date Jan 24.2025 / Category Statistics

When conducting linear regression analysis on your research data, you naturally hope that some independent variables significantly affect the dependent variable. Achieving this indicates that you’ve successfully selected independent variables that are presumed to influence the dependent variable.

Continue Reading

How to Analyze Heteroskedasticity in Linear Regression Using R Studio

By Kanda Data / Date Nov 19.2024 / Category Data Analysis in R

Heteroskedasticity testing is an assumption test in linear regression using the OLS method to ensure that the residual variance is constant. A constant residual variance is referred to as homoskedasticity.

Continue Reading

How to Perform Multiple Linear Regression Analysis on Time Series Data Using R Studio

By Kanda Data / Date Oct 07.2024 / Category Data Analysis in R

Multiple linear regression analysis on time series data, along with its assumption tests, can be performed using R Studio. In a previous article, I explained how to conduct multiple linear regression analysis and assumption tests for cross-sectional data.

Continue Reading

How to Perform Multiple Linear Regression Analysis Using R Studio: A Complete Guide

By Kanda Data / Date Sep 30.2024 / Category Data Analysis in R

Multiple linear regression analysis requires commands to be executed in R Studio. Given the importance of understanding how to analyze and interpret multiple linear regression using R Studio, Kanda Data will write an article discussing this topic.

Continue Reading
1 2 3 4 Next

Categories

  • Article Publication
  • Assumptions of Linear Regression
  • Comparison Test
  • Correlation Test
  • Data Analysis in R
  • Econometrics
  • Excel Tutorial for Statistics
  • Multiple Linear Regression
  • Nonparametric Statistics
  • Profit Analysis
  • Regression Tutorial using Excel
  • Research Methodology
  • Simple Linear Regression
  • Statistics

Popular Post

October 2025
M T W T F S S
 12345
6789101112
13141516171819
20212223242526
2728293031  
« Sep    
  • How to Create a Research Location Map in Excel: District, Province, and Country Maps
  • How to Determine the Minimum Sample Size in Survey Research to Ensure Representativeness
  • Regression Analysis for Binary Categorical Dependent Variables
  • How to Sort Values from Highest to Lowest in Excel
  • How to Perform Descriptive Statistics in Excel in Under 1 Minute
Copyright KANDA DATA 2025. All Rights Reserved