Correlation, Correlation Coefficient, Positive & Negative Correlation | Psychology (2024)

1.13: Correlations

Correlation means that there is a relationship between two or more variables (such as ice cream consumption and crime), but this relationship does not necessarily imply cause and effect. When two variables are correlated, it simply means that as one variable changes, so does the other. We can measure correlation by calculating a statistic known as a correlation coefficient. A correlation coefficient is a number from -1 to +1 that indicates the strength and direction of the relationship between variables. The correlation coefficient is usually represented by the letter r.

The number portion of the correlation coefficient indicates the strength of the relationship. The closer the number is to 1 (be it negative or positive), the more strongly related the variables are, and the more predictable changes in one variable will be as the other variable changes. The closer the number is to zero, the weaker the relationship, and the less predictable the relationships between the variables becomes. For instance, a correlation coefficient of 0.9 indicates a far stronger relationship than a correlation coefficient of 0.3. If the variables are not related to one another at all, the correlation coefficient is 0.

The sign—positive or negative—of the correlation coefficient indicates the direction of the relationship. A positive correlation means that the variables move in the same direction. Put another way, it means that as one variable increases so does the other, and conversely, when one variable decreases so does the other. A negative correlation means that the variables move in opposite directions. If two variables are negatively correlated, a decrease in one variable is associated with an increase in the other and vice versa.

Examples of positive correlations are the relationship between an individual’s height and weight or the relationship between a person’s age and number of wrinkles. One might expect a negative correlation to exist between someone’s tiredness during the day and the number of hours they slept the previous night: the amount of sleep decreases as the feelings of tiredness increase. In a real-world example of negative correlation, student researchers at the University of Minnesota found a weak negative correlation (r = -0.29) between the average number of days per week that students got fewer than 5 hours of sleep and their GPA (Lowry, Dean, & Manders, 2010). Keep in mind that a negative correlation is not the same as no correlation. For example, we would probably find no correlation between hours of sleep and shoe size.

Correlations have predictive value. Imagine that you are on the admissions committee of a major university. You are faced with a huge number of applications, but you are able to accommodate only a small percentage of the applicant pool. How might you decide who should be admitted? You might try to correlate your current students’ college GPA with their scores on standardized tests like the SAT or ACT. By observing which correlations were strongest for your current students, you could use this information to predict relative success of those students who have applied for admission into the university.

Correlation Does Not Indicate Causation

Correlational research is useful because it allows us to discover the strength and direction of relationships that exist between two variables. However, correlation is limited because establishing the existence of a relationship tells us little about cause and effect. While variables are sometimes correlated because one does cause the other, it could also be that a third variable is actually causing the systematic movement in our variables of interest. For example, wealth may be positively correlated with intelligence, but that is likely because wealthy people can afford higher education, which in turn increases intelligence.

This text is adapted from OpenStax, Psychology. OpenStax CNX.

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Correlational Research Association Variables Quantitative Measurement Scatterplot Correlation Coefficient Direction Of Association Strength Of Association Positive Correlation Negative Correlation Strong Correlation

Correlation, Correlation Coefficient, Positive & Negative Correlation | Psychology (2024)

FAQs

Correlation, Correlation Coefficient, Positive & Negative Correlation | Psychology? ›

A positive correlation means that the variables move in the same direction. Put another way, it means that as one variable increases so does the other, and conversely, when one variable decreases so does the other. A negative correlation means that the variables move in opposite directions.

What is a positive correlation coefficient and a negative correlation coefficient? ›

The correlation coefficient is measured on a scale that varies from + 1 through 0 to – 1. Complete correlation between two variables is expressed by either + 1 or -1. When one variable increases as the other increases the correlation is positive; when one decreases as the other increases it is negative.

What is correlation difference between positive and negative correlation? ›

A positive correlation exists when two variables operate in unison so that when one variable rises or falls, the other does the same. A negative correlation is when two variables move opposite one another so that when one variable rises, the other falls.

What does a higher correlation coefficient whether positive or negative mean? ›

The further the coefficient is from zero, whether it is positive or negative, the better the fit and the greater the correlation.

How do I know if my correlation is positive or negative? ›

A correlation coefficient greater than zero indicates a positive relationship while a value less than zero signifies a negative relationship. A value close to zero indicates a weak relationship between the two variables being compared.

What is positive and negative correlation with suitable example? ›

Positive Correlation vs Negative Correlation

For example, if one stock increases and another increases, that is a positive correlation. A negative correlation is where both variables act in the opposite direction. If one stock increases and the other decreases, they show a negative correlation.

What is a negative correlation example? ›

Common Examples of Negative Correlation

A student who has many absences has a decrease in grades. The more one works, the less free time one has. As one increases in age, often one's agility decreases. If a car decreases speed, travel time to a destination increases.

What is a positive correlation example? ›

Examples of positive correlations occur in most people's daily lives. The more hours an employee works, for instance, the larger that employee's paycheck will be at the end of the week. The more money is spent on advertising, the more customers buy from the company.

Can correlation be both positive and negative? ›

Yes, you can. Neither Spearman's rank correlation nor Pearson product-moment correlation are restricted to positive data, because Spearman's just deals with how are values ordered and Pearson's deals with distance of (products of) values to the mean and those work equally fine if values are negative.

What happens in a negative correlation? ›

A negative correlation is an event of two variables moving in the opposite direction. As one variable increases in value, the other decreases. This relationship is measured by the correlation coefficient, and the concept of negative correlation is central to portfolio diversification theory.

How do you interpret a negative correlation coefficient? ›

The direction of the relationship (positive or negative) is indicated by the sign of the coefficient. A positive correlation implies that increases in the value of one score tend to be accompanied by increases in the other. A negative correlation implies that increases in one are accompanied by decreases in the other.

Which is the strongest negative correlation? ›

A perfect negative correlation has a value of -1.0 and indicates that when X increases by z units, Y decreases by exactly z; and vice-versa. In general, -1.0 to -0.70 suggests a strong negative correlation, -0.50 a moderate negative relationship, and -0.30 a weak correlation.

How do I interpret correlation coefficient? ›

The strength of relationship can be anywhere between −1 and +1. The stronger the correlation, the closer the correlation coefficient comes to ±1. If the coefficient is a positive number, the variables are directly related (i.e., as the value of one variable goes up, the value of the other also tends to do so).

What indicates a positive correlation? ›

A positive correlation indicates that there is a direct relationship between two variables, with both variables moving in the same direction (e.g., when one variable increases, the other does as well).

What is a positive correlation coefficient? ›

A positive correlation is a relationship between two variables that move in tandem—that is, in the same direction. A positive correlation exists when one variable decreases as the other variable decreases, or one variable increases while the other increases.

What is an example of positive correlation? ›

Common Examples of Positive Correlations

The more time you spend running on a treadmill, the more calories you will burn. The longer your hair grows, the more shampoo you will need. The more money you save, the more financially secure you feel. As the temperature goes up, ice cream sales also go up.

What is a correlation What is the difference between a positive correlation and a negative correlation quizlet? ›

Positive correlation means that as one variable goes up, so does the other. Negative correlation means that as one variable goes up or down, the other goes the opposite way.

What do you mean by correlation coefficient? ›

A correlation coefficient is a number between -1 and 1 that tells you the strength and direction of a relationship between variables. In other words, it reflects how similar the measurements of two or more variables are across a dataset. Correlation coefficient value.

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