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/Kanda data

Tag: Kanda data

Tutorial on Tabulating Likert Scale Data for Social Research

By Kanda Data / Date Jul 18.2025 / Category Nonparametric Statistics

In social research, many researchers measure variables using the Likert scale. Have you ever conducted research involving variables measured with the Likert scale? In this article, Kanda Data will discuss variables measured using the Likert scale and provide a tutorial on how to tabulate Likert scale variables.

Continue Reading

Tutorial on One-Way ANOVA Test for Non-Laboratory Research

By Kanda Data / Date Jul 14.2025 / Category Statistics

The one-way ANOVA test is a parametric statistical test used to examine the differences in means across more than two sample groups. It is important to emphasize that the one-way ANOVA is only applicable when comparing three or more groups. If you are comparing the means of only two groups, then a t-test should be used instead.

Continue Reading

Natural Logarithm Data Transformation to Improve Data Normality, Is It True?

By Kanda Data / Date Jul 09.2025 / Category Econometrics

In parametric statistical analysis, several assumptions must be met, one of which is the assumption that data should be normally distributed. However, in practice, the data obtained from research does not always follow a normal distribution based on statistical tests. Therefore, some researchers attempt to adjust the distribution of data to make it more closely resemble a normal distribution. One common method is data transformation. Among various types of data transformations, the natural logarithm transformation is one of the most commonly used.

Continue Reading

Can Outliers Make Your Data Look Non-Normal? Here’s a Simulation and How to Handle It

By Kanda Data / Date Jul 03.2025 / Category Assumptions of Linear Regression

In many parametric statistical tests, it’s assumed that the data must follow a normal distribution. That’s why, when we’ve gathered research data and are planning to use parametric statistical analysis, checking for normality is crucial. We need to make sure that the data follows a normal distribution before proceeding with further analysis.

Continue Reading

Alternative to One-Way ANOVA When Data Are Not Normally Distributed

By Kanda Data / Date Jun 21.2025 / Category Comparison Test

If you’re conducting research to compare the means of more than two sample groups, one-way ANOVA is a commonly used statistical test. However, using this test comes with certain assumptions that must be met, specifically, that the data are normally distributed and homogenous.

Continue Reading

Assumption Tests in Linear Regression Using Survey Data

By Kanda Data / Date Jun 16.2025 / Category Assumptions of Linear Regression

The most commonly used linear regression analysis by researchers is the Ordinary Least Squares (OLS) method. However, when applying linear regression with the OLS method, several assumptions must be met to ensure that the estimation results are consistent and unbiased.

Continue Reading

What Is a Residual Value in Statistics?

By Kanda Data / Date Jun 14.2025 / Category Statistics

If you’re working with data analysis using linear regression, especially the Ordinary Least Squares (OLS) method, it’s important to understand what a residual is. Why does this matter? Because several assumption tests in OLS regression rely heavily on residual values. That’s why you need a solid understanding of what residuals are and how to calculate them.

Continue Reading

Normality Test in Regression: Should We Test the Raw Data or the Residuals?

By Kanda Data / Date Jun 09.2025 / Category Assumptions of Linear Regression

When we choose to analyze data using linear regression with the OLS method, there are several assumptions that must be met. These assumptions are essential to ensure that the estimation results are consistent and unbiased. This is what we refer to as the Best Linear Unbiased Estimator (BLUE).

Continue Reading
Previous 1 2 3 4 5 … 27 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

January 2026
M T W T F S S
 1234
567891011
12131415161718
19202122232425
262728293031  
« Dec    
  • Differences in Nominal, Ordinal, Interval, and Ratio Data Measurement Scales for Research
  • Reasons Why the R-Squared Value in Time Series Data Is Higher Than in Cross-Section Data
  • 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
Copyright KANDA DATA 2026. All Rights Reserved