Deciphering Correlation Analysis: Pearson, Kendall, and Spearman
By Josephine Santos · 10 min read
Overview
Correlation analysis is a fundamental tool in statistics, offering insights into the strength and direction of relationships between variables. It's a bivariate analysis method that ranges from understanding stock market trends to examining the relationship between temperature and ice cream sales. In this comprehensive guide, we'll delve into the intricacies of three primary types of correlation: Pearson, Kendall, and Spearman, each with its unique approach and application.
Pearson r Correlation
The Pearson r correlation is the most commonly used method to measure the degree of relationship between linearly related variables. It's particularly useful when dealing with continuous data and aims to establish a linear relationship between variables.
Formula:
Research Questions Pearson Can Examine:
- Is there a significant relationship between age and height?
- How does temperature relate to ice cream sales?
- What is the relationship between job satisfaction and income?
Assumptions:
- Normal distribution of variables
- Linearity and homoscedasticity
Key Terms:
- Effect size: Evaluates the strength of the relationship
- Continuous data: Interval or ratio level data
Kendall Rank Correlation
The Kendall rank correlation is a non-parametric test used to measure the strength of dependence between two variables. It's particularly useful when dealing with ordinal data. Each sample size is “n”.
Formula:
Research Questions Kendall Can Examine:
- Is there a correlation between the air quality index in different cities and the number of respiratory illness cases reported?
- Is there a - significant relationship between the rank of severity of symptoms and the effectiveness of a new medication?
Assumptions:
- Ordinal or Continuous Data
- Mutually Exclusive Observations
Key Terms:
- Concordant: Ordered in the same way
- Discordant: Ordered differently
Spearman Rank Correlation
The Spearman rank correlation is another non-parametric test used to measure the degree of association between two variables. It's suitable for ordinal data and doesn't assume a normal distribution.
Formula:
Research Questions Spearman Can Examine:
- Is there a significant relationship between education level and starting salary?
- How does a horse’s age relate to its finishing position in a race?
Assumptions:
- Data must be at least ordinal
- Monotonic relationship between variables
Key Terms:
- Effect size: Indicates the strength of the relationship
-Ordinal data: Data with ordered levels but unknown magnitude differences
Conclusion: How Julius Can Assist
Understanding and applying correlation analysis can be complex, especially when dealing with large datasets or intricate research questions. This is where Julius.ai comes into play. Julius offers advanced analytical tools that simplify the process of conducting correlation analyses, whether you're dealing with Pearson, Kendall, or Spearman correlations. With its user-friendly interface and powerful statistical capabilities, Julius can help you accurately interpret your data, ensuring that your research or business decisions are informed and data-driven.