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Convergence of random variables
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== Convergence in mean == Given a real number {{math|''r'' ≥ 1}}, we say that the sequence {{mvar|X<sub>n</sub>}} converges '''in the ''r''-th mean''' (or '''in the [[Lp space|''L<sup>r</sup>''-norm]]''') towards the random variable ''X'', if the {{mvar|r}}-th [[Moment (mathematics)|absolute moment]]s <math>\mathbb{E}</math>(|''X<sub>n</sub>''|<sup>''r ''</sup>) and <math>\mathbb{E}</math>(|''X''|<sup>''r ''</sup>) of {{mvar|X<sub>n</sub>}} and ''X'' exist, and : <math>\lim_{n\to\infty} \mathbb{E}\left( |X_n-X|^r \right) = 0,</math> where the operator E denotes the [[expected value]]. Convergence in {{mvar|r}}-th mean tells us that the expectation of the {{mvar|r}}-th power of the difference between <math>X_n</math> and <math>X</math> converges to zero. This type of convergence is often denoted by adding the letter ''L<sup>r</sup>'' over an arrow indicating convergence: {{NumBlk|:| <math>\overset{}{X_n \, \xrightarrow{L^r} \, X.}</math>|{{EquationRef|4}}}} The most important cases of convergence in ''r''-th mean are: * When {{mvar|X<sub>n</sub>}} converges in ''r''-th mean to ''X'' for ''r'' = 1, we say that {{mvar|X<sub>n</sub>}} converges '''in mean''' to ''X''. * When {{mvar|X<sub>n</sub>}} converges in ''r''-th mean to ''X'' for ''r'' = 2, we say that {{mvar|X<sub>n</sub>}} converges '''in mean square''' (or '''in quadratic mean''') to ''X''. Convergence in the ''r''-th mean, for ''r'' ≥ 1, implies convergence in probability (by [[Markov's inequality]]). Furthermore, if ''r'' > ''s'' ≥ 1, convergence in ''r''-th mean implies convergence in ''s''-th mean. Hence, convergence in mean square implies convergence in mean. Additionally, : <math>\overset{}{X_n \xrightarrow{L^r} X} \quad\Rightarrow\quad \lim_{n \to \infty} \mathbb{E}[|X_n|^r] = \mathbb{E}[|X|^r]. </math> The converse is not necessarily true, however it is true if <math>\overset{}{X_n \, \xrightarrow{p} \, X}</math> (by a more general version of [[Scheffé's lemma]]).
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