Key Takeaways
- Negative correlation means variables move in opposite directions.
- Correlation coefficient ranges from -1 (perfect) to 0 (none).
- Strong negative correlation example: bond prices vs. interest rates.
- Negative correlation shows association, not causation.
What is Negative Correlation?
Negative correlation, also called inverse correlation, describes a statistical relationship where an increase in one variable corresponds with a decrease in another, measured by a correlation coefficient between -1 and 0. This concept is fundamental in understanding relationships in finance and economics, such as the behavior of certain assets.
Recognizing negative correlation helps in portfolio management and risk assessment, distinguishing it from concepts like idiosyncratic risk, which pertains to asset-specific uncertainties.
Key Characteristics
Negative correlation is defined by distinct features that clarify its impact in analysis and decision-making:
- Correlation coefficient (r): Values range from -1 (perfect negative correlation) to 0 (no correlation), indicating how strongly two variables move in opposite directions.
- Inverse relationship: When one variable rises, the other falls, useful for diversification strategies like those found in bond ETFs that often show negative correlation with stocks.
- Non-causation: Negative correlation indicates association but does not imply one variable causes the other to move inversely.
- Visual pattern: On scatter plots, data points slope downward from left to right, reflecting the inverse movement.
How It Works
Negative correlation measures the linear relationship between two variables using the Pearson correlation coefficient, which calculates how deviations from each variable’s mean move in relation to each other. A negative value arises when these deviations tend to oppose one another.
In finance, negative correlation is leveraged to reduce portfolio risk by combining assets that typically move inversely. For example, pairing stocks and certain ETFs with negative correlation can smooth returns and mitigate volatility. Understanding these relationships aids in applying models like the Fama and French Three Factor Model, which incorporates factors that can exhibit negative correlations.
Examples and Use Cases
Practical examples illustrate how negative correlation applies across industries and markets:
- Airlines: Shares of Delta and other carriers may show negative correlation with fuel price-related assets, reflecting opposite performance drivers.
- Interest rates and bonds: Bond prices typically move inversely to interest rates, a classic example of negative correlation important for fixed income investors.
- Market strategies: Diversifying with assets that have negative correlation supports risk management, which can complement understanding of phenomena like the J-Curve Effect in international investments.
Important Considerations
While negative correlation provides valuable insights for diversification and hedging, it assumes a linear relationship and may not capture complex or non-linear interactions. Additionally, correlations can change over time, especially during market stress, so relying solely on historical negative correlations can be risky.
Incorporating negative correlation insights alongside broader analysis, including factors like price elasticity, helps build more resilient financial strategies tailored to your goals.
Final Words
Negative correlation highlights how two variables move in opposite directions, which can help diversify your portfolio or manage risk. Review your investments to identify negatively correlated assets and consider adjusting allocations to improve balance.
Frequently Asked Questions
Negative correlation, also called inverse correlation, describes a statistical relationship where an increase in one variable is linked to a decrease in another. It’s measured by a correlation coefficient (r) ranging from -1 to 0, with -1 indicating a perfect negative relationship.
Negative correlation is measured using the Pearson correlation coefficient, which calculates the strength and direction of the linear relationship between two variables. A negative value of r means the variables move in opposite directions.
The correlation coefficient r ranges from -1 to 0 for negative correlations. Values close to -1 show a strong inverse relationship, while values near 0 indicate a weak or no negative correlation.
On a scatter plot, negative correlation appears as data points trending downward from left to right, with the best-fit line having a negative slope.
Examples include more hours spent playing video games correlating with lower GPA, bond prices falling as interest rates rise, and increased heating demand when outdoor temperatures drop.
No, negative correlation shows an association between two variables moving in opposite directions, but it does not prove that one variable causes changes in the other.
Negative correlation means one variable increases while the other decreases, with r between -1 and 0. Positive correlation means both variables increase or decrease together, with r between 0 and +1.
Negative correlations can be weak (around -0.1 to -0.3), moderate (-0.3 to -0.5), strong (-0.5 to -0.9), or perfect (-1.0), indicating how closely the variables move in opposite directions.


