# What Does Standard Deviation Measure In a Portfolio?

# What Does Standard Deviation Measure In a Portfolio?

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When investment analysts want to understand the risks associated with a mutual fund or a hedge fund, they look first and foremost at its standard deviation.

This measurement of average variance has a prominent place in many fields related to statistics, economics, accounting, and finance. For a given data set, standard deviation measures how spread out the numbers are from an average value.

By measuring the standard deviation of a portfolio’s annual http://reviews-crypto.com/%d0%ba%d1%80%d0%b8%d0%bf%d1%82%d0%be%d0%b2%d0%b0%d0%bb%d1%8e%d1%82%d0%b0-ibt-%d1%82%d0%be%d0%ba%d0%b5%d0%bd-%d0%be%d0%b1%d0%b7%d0%be%d1%80-%d0%be%d1%82%d0%b7%d1%8b%d0%b2%d1%8b-%d0%bf%d1%80%d0%be/ rate of return, analysts can see how consistent the returns are over time.

A mutual fund with a long track record of consistent returns will display a low standard deviation. A growth-oriented or emerging market fund is likely to have greater volatility and will have a higher standard deviation. Therefore, it is inherently riskier.

### Key Takeaways

- Standard deviation can show the consistency of an investment’s return over time.
- A fund with a high standard deviation shows price volatility.
- A fund with a low standard deviation tends to be more predictable.

Standard deviation is calculated by taking the square root of the variance, which itself is the average of the squared differences of the mean.

## Understanding Standard Deviation

One of the reasons for the widespread popularity of the standard deviation measurement is its consistency.

Standard deviation from the mean represents the same thing whether you are looking at gross domestic product (GDP), crop yields, or the height of various breeds of dogs. Moreover, it is always calculated in the same units as the data set. You don’t have to interpret an additional unit of measurement resulting from the formula.

### Example of Standard Deviation Measurement

For example, suppose a mutual fund achieves the following annual rates of return over the course of five years: 4%, 6%, 8.5%, 2%, and 4%. The mean value, or average, is 4.9%. The standard deviation is 2.46%. That means that each individual yearly value is an average of 2.46% away from the mean.

Every value is expressed as a percentage, making it easier to compare the relative volatility of several mutual funds.

Due to its consistent mathematical properties, 68% of the values in any data set lie within one standard deviation of the mean, and 95% lie within two standard deviations of the mean. Alternatively, you can estimate with 95% certainty that annual returns do not exceed the range created within two standard deviations of the mean.

## Bollinger Bands

In investing, standard deviations are generally demonstrated with the use of Bollinger bands. Developed by the technical trader John Bollinger in the 1980s, Bollinger bands are a series of lines that can help identify trends in a given security.

At the center is the exponential moving average (EMA), which reflects the average price of the security over an established time frame. To either side of this line are bands set one to three standard deviations away from the mean. These outer bands oscillate with the moving average according to changes in price.

In addition to its numerous other useful applications, Bollinger Bands are used as an indicator of market volatility. When a security has experienced a period of great volatility, the bands are wide apart. As volatility decreases, the bands narrow, hugging the EMA.

Standard deviation measures consistency. Consistency is good, but it’s not the only measure of a fund’s quality.

Even the most range-bound charts experience brief spurts of volatility from time to time, often after earnings reports or product announcements. In these charts, normally narrow Bollinger bands suddenly bubble out to accommodate the spike in activity. Once things settle again, the bands narrow.

Because many investment techniques are dependent on changing trends, being able to identify highly volatile stocks at a glance can be especially useful.

## Other Data to Consider

While important, standard deviations should not be taken as an end-all measurement of the worth of an individual investment or a portfolio. For example, a mutual fund that returns between 5% and 7% every single year has a lower standard deviation than a competing fund that returns between 6% and 16% every year, but that doesn’t make it a better choice.

It is important to note that standard deviation can only show the dispersion of annual returns for a mutual fund, which does not necessarily imply future consistency with this measurement. Economic factors such as interest rate changes can always affect the performance of a mutual fund.

### Drawbacks of Standard Deviation Measurement

Even as an assessment of the risks associated with a mutual fund, standard deviation is not a standalone answer. For example, standard deviation only shows the consistency (or inconsistency) of the fund’s returns. It does not show how well the fund performs against its benchmark, which is measured as beta.

Another potential drawback of relying on standard deviation is that it assumes a bell-shaped distribution of data values. This means the equation indicates that the same probability exists for achieving values above the mean or below the mean. Many portfolios do not display this tendency, and hedge funds especially tend to be skewed in one direction or another.

The more securities held in a portfolio, and the more variety in the different types of securities, the more likely standard deviation may not be appropriate.

Also, as with any statistical model, large data sets are more reliable than small data sets. The 4.9% mean and 2.46% standard deviation in the example above is not as reliable as the same values produced from 50 calculations rather than five.