
Pearson Coefficient
The Pearson coefficient is a type of correlation coefficient that represents the relationship between two variables that are measured on the same interval or ratio scale. The Pearson coefficient is a mathematical correlation coefficient representing the relationship between two variables, denoted as X and Y. Pearson coefficients range from +1 to -1, with +1 representing a positive correlation, -1 representing a negative correlation, and 0 representing no relationship. The Pearson coefficient shows correlation, not causation. English mathematician and statistician Karl Pearson is credited for developing many statistical techniques, including the Pearson coefficient, the chi-squared test, p-value, and linear regression. For an investor who wishes to diversify a portfolio, the Pearson coefficient can be useful. To find the Pearson coefficient, also referred to as the Pearson correlation coefficient or the Pearson product-moment correlation coefficient, the two variables are placed on a scatter plot. Calculations from scatter plots of historical returns between pairs of assets, such as equities-bonds, equities-commodities, bonds-real estate, etc., or more specific assets — such as large-cap equities, small-cap equities, and debt-emerging market equities — will produce Pearson coefficients to assist the investor in assembling a portfolio based on risk and return parameters. The Pearson coefficient is a type of correlation coefficient that represents the relationship between two variables that are measured on the same interval or ratio scale.

What Is the Pearson Coefficient?
The Pearson coefficient is a type of correlation coefficient that represents the relationship between two variables that are measured on the same interval or ratio scale. The Pearson coefficient is a measure of the strength of the association between two continuous variables.




Understanding the Pearson Coefficient
To find the Pearson coefficient, also referred to as the Pearson correlation coefficient or the Pearson product-moment correlation coefficient, the two variables are placed on a scatter plot. The variables are denoted as X and Y. There must be some linearity for the coefficient to be calculated; a scatter plot not depicting any resemblance to a linear relationship will be useless. The closer the resemblance to a straight line of the scatter plot, the higher the strength of association. Numerically, the Pearson coefficient is represented the same way as a correlation coefficient that is used in linear regression, ranging from -1 to +1. A value of +1 is the result of a perfect positive relationship between two or more variables. Positive correlations indicate that both variables move in the same direction. Conversely, a value of -1 represents a perfect negative relationship. Negative correlations indicate that as one variable increases, the other decreases; they are inversely related. A zero indicates no correlation.
Benefits of the Pearson Coefficient
For an investor who wishes to diversify a portfolio, the Pearson coefficient can be useful. Calculations from scatter plots of historical returns between pairs of assets, such as equities-bonds, equities-commodities, bonds-real estate, etc., or more specific assets — such as large-cap equities, small-cap equities, and debt-emerging market equities — will produce Pearson coefficients to assist the investor in assembling a portfolio based on risk and return parameters. Note, however, that a Pearson coefficient measures correlation, not causation, which means that one variable produced a result in the other variable. If large-cap and small-cap equities have a coefficient of 0.8, it will not be known what caused the relatively high strength of association.
Who Was Karl Pearson?
Karl Pearson (1857-1936) was an English academic and prolific contributor to the fields of mathematics and statistics. He is credited as the principal founder of modern statistics and an advocate of eugenics. Aside from the eponymous coefficient, Pearson is known for the concepts of chi-squared test and p-value, among others, and development of linear regression and classification of distributions. In 1911, Pearson founded the world's first university statistics department, the Department of Applied Statistics at University College London.
In 1901, Pearson founded the first journal of modern statistics titled Biometrika.
Related terms:
Autocorrelation
Autocorrelation shows the degree of correlation between variables over successive time intervals. read more
Correlation
Correlation is a statistical measure of how two securities move in relation to each other. read more
Correlation Coefficient
The correlation coefficient is a statistical measure that calculates the strength of the relationship between the relative movements of two variables. read more
Goodness-of-Fit
A goodness-of-fit test helps you see if your sample data is accurate or somehow skewed. Discover how the popular chi-square goodness-of-fit test works. read more
Inverse Correlation
An inverse correlation is a relationship between two variables such that when one variable is high the other is low and vice versa. read more
Large Cap (Big Cap)
Large cap (big cap) refers to a company with a market capitalization value of more than $10 billion. read more
Negative Correlation
Negative correlation is a relationship between two variables in which one variable increases as the other decreases, and vice versa. read more