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In probability theory and
statistics Statistics (from German language, German: ''wikt:Statistik#German, Statistik'', "description of a State (polity), state, a country") is the discipline that concerns the collection, organization, analysis, interpretation, and presentation of ...
, a conditional variance is the variance of a
random variable A random variable (also called random quantity, aleatory variable, or stochastic variable) is a mathematical formalization of a quantity or object which depends on random events. It is a mapping or a function from possible outcomes (e.g., the po ...
given the value(s) of one or more other variables. Particularly in econometrics, the conditional variance is also known as the scedastic function or skedastic function. Conditional variances are important parts of autoregressive conditional heteroskedasticity (ARCH) models.


Definition

The conditional variance of a
random variable A random variable (also called random quantity, aleatory variable, or stochastic variable) is a mathematical formalization of a quantity or object which depends on random events. It is a mapping or a function from possible outcomes (e.g., the po ...
''Y'' given another random variable ''X'' is :\operatorname(Y, X) = \operatorname\Big(\big(Y - \operatorname(Y\mid X)\big)^\mid X\Big). The conditional variance tells us how much variance is left if we use \operatorname(Y\mid X) to "predict" ''Y''. Here, as usual, \operatorname(Y\mid X) stands for the
conditional expectation In probability theory, the conditional expectation, conditional expected value, or conditional mean of a random variable is its expected value – the value it would take “on average” over an arbitrarily large number of occurrences – give ...
of ''Y'' given ''X'', which we may recall, is a random variable itself (a function of ''X'', determined up to probability one). As a result, \operatorname(Y, X) itself is a random variable (and is a function of ''X'').


Explanation, relation to least-squares

Recall that variance is the expected squared deviation between a random variable (say, ''Y'') and its expected value. The expected value can be thought of as a reasonable prediction of the outcomes of the random experiment (in particular, the expected value is the best constant prediction when predictions are assessed by expected squared prediction error). Thus, one interpretation of variance is that it gives the smallest possible expected squared prediction error. If we have the knowledge of another random variable (''X'') that we can use to predict ''Y'', we can potentially use this knowledge to reduce the expected squared error. As it turns out, the best prediction of ''Y'' given ''X'' is the conditional expectation. In particular, for any f: \mathbb \to \mathbb measurable, : \begin \operatorname (Y-f(X))^2 &= \operatorname X)\,\,+\,\, \operatorname(Y, X)-f(X) )^2 \\ &= \operatorname \operatorname\ \\ &= \operatorname X )+ \operatorname X)-f(X))^2,. \end By selecting f(X)=\operatorname(Y, X), the second, nonnegative term becomes zero, showing the claim. Here, the second equality used the law of total expectation. We also see that the expected conditional variance of ''Y'' given ''X'' shows up as the irreducible error of predicting ''Y'' given only the knowledge of ''X''.


Special cases, variations


Conditioning on discrete random variables

When ''X'' takes on countable many values S = \ with positive probability, i.e., it is a discrete random variable, we can introduce \operatorname(Y, X=x), the conditional variance of ''Y'' given that ''X=x'' for any ''x'' from ''S'' as follows: :\operatorname(Y, X=x) = \operatorname((Y - \operatorname(Y\mid X=x))^\mid X=x), where recall that \operatorname(Z\mid X=x) is the conditional expectation of ''Z'' given that ''X=x'', which is well-defined for x\in S. An alternative notation for \operatorname(Y, X=x) is \operatorname_(Y, x). Note that here \operatorname(Y, X=x) defines a constant for possible values of ''x'', and in particular, \operatorname(Y, X=x), is ''not'' a random variable. The connection of this definition to \operatorname(Y, X) is as follows: Let ''S'' be as above and define the function v: S \to \mathbb as v(x) = \operatorname(Y, X=x). Then, v(X) = \operatorname(Y, X) almost surely.


Definition using conditional distributions

The "conditional expectation of ''Y'' given ''X=x''" can also be defined more generally using the conditional distribution of ''Y'' given ''X'' (this exists in this case, as both here ''X'' and ''Y'' are real-valued). In particular, letting P_ be the (regular) conditional distribution P_ of ''Y'' given ''X'', i.e., P_:\mathcal \times \mathbb\to ,1/math> (the intention is that P_(U,x) = P(Y\in U, X=x) almost surely over the support of ''X''), we can define \operatorname(Y, X=x) = \int \left(y- \int y' P_(dy', x)\right)^2 P_(dy, x). This can, of course, be specialized to when ''Y'' is discrete itself (replacing the integrals with sums), and also when the
conditional density In probability theory and statistics, given two jointly distributed random variables X and Y, the conditional probability distribution of Y given X is the probability distribution of Y when X is known to be a particular value; in some cases the co ...
of ''Y'' given ''X=x'' with respect to some underlying distribution exists.


Components of variance

The law of total variance says \operatorname(Y) = \operatorname(\operatorname(Y\mid X))+\operatorname(\operatorname(Y\mid X)). In words: the variance of ''Y'' is the sum of the expected conditional variance of ''Y'' given ''X'' and the variance of the conditional expectation of ''Y'' given ''X''. The first term captures the variation left after "using ''X'' to predict ''Y''", while the second term captures the variation due to the mean of the prediction of ''Y'' due to the randomness of ''X''.


See also

* Mixed model * Random effects model


References


Further reading

* Statistical deviation and dispersion Theory of probability distributions Conditional probability {{probability-stub