Misplaced Pages

Intensity of counting processes

Article snapshot taken from Wikipedia with creative commons attribution-sharealike license. Give it a read and then ask your questions in the chat. We can research this topic together.
This article needs additional citations for verification. Please help improve this article by adding citations to reliable sources. Unsourced material may be challenged and removed.
Find sources: "Intensity of counting processes" – news · newspapers · books · scholar · JSTOR (June 2015) (Learn how and when to remove this message)

The intensity λ {\displaystyle \lambda } of a counting process is a measure of the rate of change of its predictable part. If a stochastic process { N ( t ) , t 0 } {\displaystyle \{N(t),t\geq 0\}} is a counting process, then it is a submartingale, and in particular its Doob-Meyer decomposition is

N ( t ) = M ( t ) + Λ ( t ) {\displaystyle N(t)=M(t)+\Lambda (t)}

where M ( t ) {\displaystyle M(t)} is a martingale and Λ ( t ) {\displaystyle \Lambda (t)} is a predictable increasing process. Λ ( t ) {\displaystyle \Lambda (t)} is called the cumulative intensity of N ( t ) {\displaystyle N(t)} and it is related to λ {\displaystyle \lambda } by

Λ ( t ) = 0 t λ ( s ) d s {\displaystyle \Lambda (t)=\int _{0}^{t}\lambda (s)ds} .

Definition

Given probability space ( Ω , F , P ) {\displaystyle (\Omega ,{\mathcal {F}},\mathbb {P} )} and a counting process { N ( t ) , t 0 } {\displaystyle \{N(t),t\geq 0\}} which is adapted to the filtration { F t , t 0 } {\displaystyle \{{\mathcal {F}}_{t},t\geq 0\}} , the intensity of N {\displaystyle N} is the process { λ ( t ) , t 0 } {\displaystyle \{\lambda (t),t\geq 0\}} defined by the following limit:

λ ( t ) = lim h 0 1 h E [ N ( t + h ) N ( t ) | F t ] {\displaystyle \lambda (t)=\lim _{h\downarrow 0}{\frac {1}{h}}\mathbb {E} } .

The right-continuity property of counting processes allows us to take this limit from the right.


Estimation

In statistical learning, the variation between λ {\displaystyle \lambda } and its estimator λ ^ {\displaystyle {\hat {\lambda }}} can be bounded with the use of oracle inequalities.

If a counting process N ( t ) {\displaystyle N(t)} is restricted to t [ 0 , 1 ] {\displaystyle t\in } and n {\displaystyle n} i.i.d. copies are observed on that interval, N 1 , N 2 , , N n {\displaystyle N_{1},N_{2},\ldots ,N_{n}} , then the least squares functional for the intensity is

R n ( λ ) = 0 1 λ ( t ) 2 d t 2 n i = 1 n 0 1 λ ( t ) d N i ( t ) {\displaystyle R_{n}(\lambda )=\int _{0}^{1}\lambda (t)^{2}dt-{\frac {2}{n}}\sum _{i=1}^{n}\int _{0}^{1}\lambda (t)dN_{i}(t)}

which involves an Ito integral. If the assumption is made that λ ( t ) {\displaystyle \lambda (t)} is piecewise constant on [ 0 , 1 ] {\displaystyle } , i.e. it depends on a vector of constants β = ( β 1 , β 2 , , β m ) R + m {\displaystyle \beta =(\beta _{1},\beta _{2},\ldots ,\beta _{m})\in \mathbb {R} _{+}^{m}} and can be written

λ β = j = 1 m β j λ j , m , λ j , m = m 1 ( j 1 m , j m ] {\displaystyle \lambda _{\beta }=\sum _{j=1}^{m}\beta _{j}\lambda _{j,m},\;\;\;\;\;\;\lambda _{j,m}={\sqrt {m}}\mathbf {1} _{({\frac {j-1}{m}},{\frac {j}{m}}]}} ,

where the λ j , m {\displaystyle \lambda _{j,m}} have a factor of m {\displaystyle {\sqrt {m}}} so that they are orthonormal under the standard L 2 {\displaystyle L^{2}} norm, then by choosing appropriate data-driven weights w ^ j {\displaystyle {\hat {w}}_{j}} which depend on a parameter x > 0 {\displaystyle x>0} and introducing the weighted norm

β w ^ = j = 2 m w ^ j | β j β j 1 | {\displaystyle \|\beta \|_{\hat {w}}=\sum _{j=2}^{m}{\hat {w}}_{j}|\beta _{j}-\beta _{j-1}|} ,

the estimator for β {\displaystyle \beta } can be given:

β ^ = arg min β R + m { R n ( λ β ) + β w ^ } {\displaystyle {\hat {\beta }}=\arg \min _{\beta \in \mathbb {R} _{+}^{m}}\left\{R_{n}(\lambda _{\beta })+\|\beta \|_{\hat {w}}\right\}} .

Then, the estimator λ ^ {\displaystyle {\hat {\lambda }}} is just λ β ^ {\displaystyle \lambda _{\hat {\beta }}} . With these preliminaries, an oracle inequality bounding the L 2 {\displaystyle L^{2}} norm λ ^ λ {\displaystyle \|{\hat {\lambda }}-\lambda \|} is as follows: for appropriate choice of w ^ j ( x ) {\displaystyle {\hat {w}}_{j}(x)} ,

λ ^ λ 2 inf β R + m { λ β λ 2 + 2 β w ^ } {\displaystyle \|{\hat {\lambda }}-\lambda \|^{2}\leq \inf _{\beta \in \mathbb {R} _{+}^{m}}\left\{\|\lambda _{\beta }-\lambda \|^{2}+2\|\beta \|_{\hat {w}}\right\}}

with probability greater than or equal to 1 12.85 e x {\displaystyle 1-12.85e^{-x}} .

References

  1. Aalen, O. (1978). Nonparametric inference for a family of counting processes. The Annals of Statistics, 6(4):701-726.
  2. Alaya, E., S. Gaiffas, and A. Guilloux (2014) Learning the intensity of time events with change-points
Category: