How do they differ in what they imply about an underlying's (or any variable's) movement?
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Suppose X is a random variable representing the returns of an asset having finite mean $\mu$ and variance $\sigma^2>0$.
Volatility is a tool commonly used in univariate cases, e.g. when speaking of returns of one stock, one bond, or one portfolio. In the multivariate setting, variance is used, e.g. a covariance matrix, because taking the square root of a matrix is an unecessary additional layer of complexity. |
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the only difference between volatility and variance is the square. everything else is bs, as concept that apply to one applies to the other (historical vs implied, blabla) |
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By volatility people usually refer to to annualized standard deviation of an asset. For an asset it's usually quoted as a percentage of the asset price (i.e. the return volatility). For a portfolio, it is often quoted in currency units. Variance is the square of the standard deviation. It is usually not quoted directly because it doesn't have an intuitive unit of measure. Instead, it is used in variance decomposition, e.g. the idiosyncratic variance of a portfolio is 6% of the total portfolio variance. |
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Volatility is typically unobservable, and as such estimated --- for example via the (sample) variance of returns, or more frequently, its square root yielding the standard deviation of returns as a volatility estimate. There are also countless models for volatility, from old applied models like Garman/Klass to exponential decaying and formal models such as GARCH or Stochastic Volatility. As for forecasts of the movement: well, that is a different topic as movement is the first moment (mean, location) whereas volatility is a second moment (dispersion, variance, volatility). So in a certain sense, volatility estimates do not give you estimates of future direction but of future ranges of movement. |
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Volatility is essentially quadratic variation. It is a property of sample paths, not probability measures. In other words, it can be calculated given a single historical path and doesn't depended upon the probability you assign to that path. Variance, and standard deviation, are functions of the probability you assign to events. |
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