Statement in probability theory
Donsker's invariance principle for simple random walk on
Z
{\displaystyle \mathbb {Z} }
.
In probability theory , Donsker's theorem (also known as Donsker's invariance principle , or the functional central limit theorem ), named after Monroe D. Donsker , is a functional extension of the central limit theorem for empirical distribution functions. Specifically, the theorem states that an appropriately centered and scaled version of the empirical distribution function converges to a Gaussian process .
Let
X
1
,
X
2
,
X
3
,
…
{\displaystyle X_{1},X_{2},X_{3},\ldots }
be a sequence of independent and identically distributed (i.i.d.) random variables with mean 0 and variance 1. Let
S
n
:=
∑
i
=
1
n
X
i
{\displaystyle S_{n}:=\sum _{i=1}^{n}X_{i}}
. The stochastic process
S
:=
(
S
n
)
n
∈
N
{\displaystyle S:=(S_{n})_{n\in \mathbb {N} }}
is known as a random walk . Define the diffusively rescaled random walk (partial-sum process) by
W
(
n
)
(
t
)
:=
S
⌊
n
t
⌋
n
,
t
∈
[
0
,
1
]
.
{\displaystyle W^{(n)}(t):={\frac {S_{\lfloor nt\rfloor }}{\sqrt {n}}},\qquad t\in [0,1].}
The central limit theorem asserts that
W
(
n
)
(
1
)
{\displaystyle W^{(n)}(1)}
converges in distribution to a standard Gaussian random variable
W
(
1
)
{\displaystyle W(1)}
as
n
→
∞
{\displaystyle n\to \infty }
. Donsker's invariance principle[ 1] [ 2] extends this convergence to the whole function
W
(
n
)
:=
(
W
(
n
)
(
t
)
)
t
∈
[
0
,
1
]
{\displaystyle W^{(n)}:=(W^{(n)}(t))_{t\in [0,1]}}
. More precisely, in its modern form, Donsker's invariance principle states that: As random variables taking values in the Skorokhod space
D
[
0
,
1
]
{\displaystyle {\mathcal {D}}[0,1]}
, the random function
W
(
n
)
{\displaystyle W^{(n)}}
converges in distribution to a standard Brownian motion
W
:=
(
W
(
t
)
)
t
∈
[
0
,
1
]
{\displaystyle W:=(W(t))_{t\in [0,1]}}
as
n
→
∞
.
{\displaystyle n\to \infty .}
Donsker-Skorokhod-Kolmogorov theorem for uniform distributions.
Donsker-Skorokhod-Kolmogorov theorem for normal distributions
^ Donsker, M.D. (1951). "An invariance principle for certain probability limit theorems". Memoirs of the American Mathematical Society (6). MR 0040613 .
^ Cite error: The named reference :0
was invoked but never defined (see the help page ).