What is the Difference Between Variance and Covariance?
🆚 Go to Comparative Table 🆚Variance and covariance are mathematical terms frequently used in statistics and probability theory. They are related to the spread and directional relationships between variables, respectively. Here are the key differences between them:
- Variance: Variance refers to the spread of a dataset around its mean value. It is a measure of how much the values in a dataset deviate from the mean, or the average value. Variance is used in various fields, including finance, to measure the volatility of an asset.
- Covariance: Covariance, on the other hand, refers to the measure of the directional relationship between two random variables. It indicates how much one variable varies with another. In a financial context, covariance is used to describe how two different investments' returns change when compared to each other over a period of time.
In summary, variance is a measure of how a single variable deviates from its mean, while covariance is a measure of the relationship between two variables. Both concepts are important in understanding the behavior of variables and their interdependencies in various fields, including finance and investment management.
Comparative Table: Variance vs Covariance
Here is a table that highlights the differences between variance and covariance:
Feature | Variance | Covariance |
---|---|---|
Definition | Variance refers to the spread of a data set around its mean value, measuring the volatility of a data set. | Covariance refers to the measure of the directional relationship between two random variables, indicating the extent to which two random variables change. |
Calculation | Variance is calculated by finding the average of the squared differences from the mean. | Covariance is calculated by finding the average of the product of the differences between each variable and their respective means. |
Usage | Variance is used by financial experts to measure an asset's volatility. | Covariance is used to examine how different investments perform in relation to one another, helping investors evaluate the risk associated with stocks or investments. |
Risk Management | A diversified portfolio would likely contain a mix of financial assets that have varying covariances, which can help minimize risk. | Portfolio managers can minimize risk in an investor's portfolio by understanding the covariances between assets. |
Correlation | Covariance is used to calculate the correlation between variables. | Many investors use covariance and correlation side-by-side to determine if and how two marketable securities move together. |
In summary, variance measures the spread of a data set around its mean value, while covariance measures the directional relationship between two random variables. Variance is used to assess the volatility of assets, while covariance helps investors evaluate the risk associated with different investments and their relationships.
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