
Cross-Correlation
Cross-correlation is a measurement that tracks the movements of two or more sets of time series data relative to one another. Cross-correlation is used in portfolio management to measure the degree of diversification among the assets contained in a portfolio. Above all, cross-correlation is used in portfolio management to measure the degree of diversification among the assets contained in a portfolio. Variables Y and Z can be said to be cross-correlated because their behavior is positively correlated as a result of each of their individual relationships to variable X. Cross-correlation can be used to gain perspective on the overall nature of the larger market. Modern portfolio theory (MPT) uses a measure of the correlation of all the assets in a portfolio to help determine the most efficient frontier.

What Is Cross-Correlation?
Cross-correlation is a measurement that tracks the movements of two or more sets of time series data relative to one another. It is used to compare multiple time series and objectively determine how well they match up with each other and, in particular, at what point the best match occurs.
Cross-correlation may also reveal any periodicities in the data.



Understanding Cross-Correlation
Cross-correlation is generally used when measuring information between two different time series. The possible range for the correlation coefficient of the time series data is from -1.0 to +1.0. The closer the cross-correlation value is to 1, the more closely the sets are identical.
Investors and analysts employ cross-correlation to understand how the prices of two or more stocks — or other assets — perform against one another. This is particularly important for correlation trades such as dispersion strategies and pairs trading.
Above all, cross-correlation is used in portfolio management to measure the degree of diversification among the assets contained in a portfolio. Investors increase the diversification of their assets in order to reduce the risk of big losses. That is, the prices of two technology stocks might move in the same direction most of the time, while a technology stock and an oil stock might move in opposite directions. Cross-correlation helps the investor pin down their patterns of movement more precisely.
Cross-correlation can only measure patterns of historical data. It cannot predict the future.
Formula for Cross-Correlation
In its simplest version, it can be described in terms of an independent variable, X, and two dependent variables, Y and Z. If independent variable X influences variable Y and the two are positively correlated, then as the value of X rises so will the value of Y.
If the same is true of the relationship between X and Z, then as the value of X rises, so will the value of Z. Variables Y and Z can be said to be cross-correlated because their behavior is positively correlated as a result of each of their individual relationships to variable X.
How Cross-Correlation Is Used
Stock Markets
Cross-correlation can be used to gain perspective on the overall nature of the larger market. For example, back in 2011, various sectors within the S&P 500 exhibited a 95% degree of correlation.
That means that all of the sectors moved virtually in lockstep with each other. It was difficult to pick stocks that outperformed the broader market during that period. It was also hard to select stocks in different sectors to increase the diversification of a portfolio. Investors had to look at other types of assets to help manage their portfolio risk.
On the other hand, the high market correlation meant that investors could buy shares in index funds to gain exposure to the market, rather than attempting to pick individual stocks.
Portfolio Management
Cross-correlation is used in portfolio management to measure the degree of diversification among the assets contained in a portfolio. Modern portfolio theory (MPT) uses a measure of the correlation of all the assets in a portfolio to help determine the most efficient frontier. This concept helps to optimize expected returns against a certain level of risk.
Including assets that have a low correlation to each other helps to reduce the overall risk in a portfolio. Still, cross-correlation can change over time. It can also only be measured historically. Two assets that have had a high degree of correlation in the past can become uncorrelated and begin to move separately. This is, in fact, one shortcoming of MPT. It assumes stable correlations among assets.
Related terms:
Asset
An asset is a resource with economic value that an individual or corporation owns or controls with the expectation that it will provide a future benefit. read more
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
Dispersion
Dispersion is a statistical measure of the expected volatility of a security based on historical returns. read more
Diversification
Diversification is an investment strategy based on the premise that a portfolio with different asset types will perform better than one with few. read more
Index Fund
An index fund is a pooled investment vehicle that passively seeks to replicate the returns of some market indexes. 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
Market
A market is a place where two parties, usually buyers and sellers, can gather to facilitate the exchange of goods and services. read more
Modern Portfolio Theory (MPT)
The modern portfolio theory (MPT) looks at how risk-averse investors can build portfolios to maximize expected return based on a given level of risk. read more