Difference between revisions of "Asymptotic negligibility"
(Importing text file) |
Ulf Rehmann (talk | contribs) m (tex encoded by computer) |
||
(6 intermediate revisions by 2 users not shown) | |||
Line 1: | Line 1: | ||
− | + | <!-- | |
+ | a0137201.png | ||
+ | $#A+1 = 20 n = 0 | ||
+ | $#C+1 = 20 : ~/encyclopedia/old_files/data/A013/A.0103720 Asymptotic negligibility | ||
+ | Automatically converted into TeX, above some diagnostics. | ||
+ | Please remove this comment and the {{TEX|auto}} line below, | ||
+ | if TeX found to be correct. | ||
+ | --> | ||
− | + | {{TEX|auto}} | |
+ | {{TEX|done}} | ||
− | + | {{MSC|60F99}} | |
− | + | [[Category:Limit theorems]] | |
− | + | A property of random variables indicating that their individual contribution as components of a sum is small. This concept is important, for example, in the so-called [[Triangular array|triangular array]]. Let the random variables $ X _ {nk } $( | |
+ | $ n=1, 2 ,\dots $; | ||
+ | $ k=1 \dots k _ {n} $) | ||
+ | be mutually independent for each $ n $, | ||
+ | and let | ||
− | + | $$ | |
+ | S _ {n} = X _ {n1} + \dots +X _ {n k _ {n} } . | ||
+ | $$ | ||
− | + | If for all $ \epsilon > 0 $ | |
+ | and $ \delta > 0 $, | ||
+ | at sufficiently large values of $ n $, | ||
+ | the inequality | ||
+ | $$ \tag{1 } | ||
+ | \max _ {1 \leq k \leq k _ {n} } \ | ||
+ | {\mathsf P} ( | X _ {nk} | > \epsilon ) < \delta | ||
+ | $$ | ||
+ | is satisfied, the individual terms $ X _ {nk} $ | ||
+ | are called asymptotically negligible (the variables $ X _ {nk } $ | ||
+ | then form a so-called zero triangular array). If condition (1) is met, one obtains the following important result: The class of limit distributions for $ S _ {n} - A _ {n} $( | ||
+ | $ A _ {n} $ | ||
+ | are certain "centering" constants) coincides with the class of infinitely-divisible distributions (cf. [[Infinitely-divisible distribution|Infinitely-divisible distribution]]). If the distributions of $ S _ {n} $ | ||
+ | converge to a limit distribution, $ k _ {n} \rightarrow \infty $, | ||
+ | and the terms are identically distributed, condition (1) is automatically met. If the requirement for asymptotic negligibility is strengthened by assuming that for all $ \epsilon > 0 $ | ||
+ | and $ \delta > 0 $ | ||
+ | for all sufficiently large $ n $ | ||
+ | one has | ||
+ | |||
+ | $$ \tag{2 } | ||
+ | {\mathsf P} \left ( \max _ {1 \leq k \leq k _ {n} } \ | ||
+ | | X _ {nk} | > \epsilon \right ) < \delta , | ||
+ | $$ | ||
+ | |||
+ | then the following statement is valid: If (2) is met, the limit distribution for $ S _ {n} - A _ {n} $ | ||
+ | can only be a [[Normal distribution|normal distribution]] (in particular with variance equal to zero, i.e. a degenerate distribution). | ||
====Comments==== | ====Comments==== | ||
− | |||
====References==== | ====References==== | ||
− | + | {| | |
+ | |valign="top"|{{Ref|F}}|| W. Feller, [[Feller, "An introduction to probability theory and its applications"|"An introduction to probability theory and its applications"]], '''2''' , Wiley (1966) pp. 210 | ||
+ | |} |
Latest revision as of 18:48, 5 April 2020
2020 Mathematics Subject Classification: Primary: 60F99 [MSN][ZBL]
A property of random variables indicating that their individual contribution as components of a sum is small. This concept is important, for example, in the so-called triangular array. Let the random variables $ X _ {nk } $( $ n=1, 2 ,\dots $; $ k=1 \dots k _ {n} $) be mutually independent for each $ n $, and let
$$ S _ {n} = X _ {n1} + \dots +X _ {n k _ {n} } . $$
If for all $ \epsilon > 0 $ and $ \delta > 0 $, at sufficiently large values of $ n $, the inequality
$$ \tag{1 } \max _ {1 \leq k \leq k _ {n} } \ {\mathsf P} ( | X _ {nk} | > \epsilon ) < \delta $$
is satisfied, the individual terms $ X _ {nk} $ are called asymptotically negligible (the variables $ X _ {nk } $ then form a so-called zero triangular array). If condition (1) is met, one obtains the following important result: The class of limit distributions for $ S _ {n} - A _ {n} $( $ A _ {n} $ are certain "centering" constants) coincides with the class of infinitely-divisible distributions (cf. Infinitely-divisible distribution). If the distributions of $ S _ {n} $ converge to a limit distribution, $ k _ {n} \rightarrow \infty $, and the terms are identically distributed, condition (1) is automatically met. If the requirement for asymptotic negligibility is strengthened by assuming that for all $ \epsilon > 0 $ and $ \delta > 0 $ for all sufficiently large $ n $ one has
$$ \tag{2 } {\mathsf P} \left ( \max _ {1 \leq k \leq k _ {n} } \ | X _ {nk} | > \epsilon \right ) < \delta , $$
then the following statement is valid: If (2) is met, the limit distribution for $ S _ {n} - A _ {n} $ can only be a normal distribution (in particular with variance equal to zero, i.e. a degenerate distribution).
Comments
References
[F] | W. Feller, "An introduction to probability theory and its applications", 2 , Wiley (1966) pp. 210 |
Asymptotic negligibility. Encyclopedia of Mathematics. URL: http://encyclopediaofmath.org/index.php?title=Asymptotic_negligibility&oldid=13553