Hopf bifurcation: Difference between revisions

From formulasearchengine
Jump to navigation Jump to search
en>Yobot
m Reference before punctuation using AWB (9585)
en>Jimw338
m fixed URL for Wilhelm1995
 
(One intermediate revision by one other user not shown)
Line 1: Line 1:
In [[probability theory]], an '''inhomogeneous Poisson process''' (or '''non-homogeneous Poisson process''') is a [[Poisson process]] with rate parameter <math>\lambda (t)</math> such that the rate parameter of the process is a function of time.<ref name="ross" /> Inhomogeneous Poisson process have been shown to describe numerous random phenomena<ref>{{cite web|url=http://www.math.wm.edu/~leemis/icrsa03.pdf|publisher=William and Mary Mathematics Department|date=May 2003|title=Estimating and Simulating Nonhomogeneous Poisson Processes|first=Larry|last=Leemis|accessdate=Sep 26, 2011}}</ref> including [[cyclone]] prediction,<ref>{{cite journal|title=Modeling and simulation of a nonhomogeneous poisson process having cyclic behavior|doi=10.1080/03610919108812984|first1=Sanghoon|last1=Lee|first2=James R.|last2=Wilson|first3=Melba M.|last3=Crawford|pages=777–809|journal=Communications in Statistics - Simulation and Computation|volume=20|issue=2-3|year=1991|url=http://www.ise.ncsu.edu/jwilson/files/lee91.pdf}}</ref> arrival times of calls to a call centre in a hospital laboratory<ref>{{cite journal|title=Modeling Time-Dependent Arrivals to Service Systems: A Case in Using a Piecewise-Polynomial Rate Function in a Nonhomogeneous Poisson Process|journal=[[Management Science (journal)|Management Science]]|jstor=2631999|publisher=INFORMS|volume=34|issue=11|date=November 1988|first1=Edward P. C.|last1=Kao|first2=Sheng-Lin|last2=Chang|pages=1367–1379|doi=10.1287/mnsc.34.11.1367}}</ref> and call centre,<ref>{{cite doi|10.1198/016214506000001455}}</ref> arrival times of aircraft to airspace around an airport<ref>{{cite journal|title=Nonstationary Queuing Probabilities for Landing Congestion of Aircraft|first1=Herbert P.|last1=Galliher|first2=R. Clyde|last2=Wheeler|journal=[[Operations Research: A Journal of the Institute for Operations Research and the Management Sciences|Operations Research]]|volume=6|issue=2|date=March–April 1958|pages=264–275|jstor=167618|doi=10.1287/opre.6.2.264}}</ref> and database [[transaction time]]s.<ref>{{cite journal|title=Statistical Analysis of Non-stationary Series of Events in a Data Base System|first1=P. A. W.|last1=Lewis|first2=G. S.|last2=Shedler|doi=10.1147/rd.205.0465|journal=IBM Journal of Research and Development|volume=20|issue=5|date=September 1976|id = {{citeseerx|10.1.1.84.9018}} }}</ref>
Hello and welcome. My title is Figures Wunder. My day occupation is a meter reader. One of the extremely best things in the world for me is to do aerobics and now I'm attempting to earn money with it. For many years he's been residing in North Dakota and his family enjoys it.<br><br>My page - at home std testing ([http://facehack.ir/index.php?do=/profile-110/info/ This Webpage])
 
The [[Cox process]] is an extension of this model where ''λ''(''t'') itself can be a stochastic process.
 
==Definition==
Write <math>N(t)</math> for the number of events by time <math>t</math>. A [[stochastic process]] is an inhomogeneous Poisson process for some small value <math>h</math> if:<ref name="ross">{{cite book|title=Simulation|first=Sheldon M.|last=Ross|publisher=Academic Press|year=2006|isbn=0-12-598063-9|page=32}}</ref><ref>{{cite book|title=
Stochastic point processes and their applications|last=Srinivasan|year=1974|chapter=Chapter 2|isbn=0-85264-223-7}}</ref>
 
# <math>N(0)=0</math>
# Non-overlapping increments are independent
# <math>P(N(t+h)-N(t)=1) = \lambda(t) h + o(h)</math>
# <math>P(N(t+h)-N(t)>1) = o(h)</math>
 
for all ''t'' and where, in [[little o notation]],  <math>\scriptstyle \frac {o(h)}{h} \rightarrow 0\; \mathrm{as}\, h\, \rightarrow 0</math>.
In the case of point processes with refractoriness (e.g., neural spike trains) a stronger version of property 4 applies:<ref>{{cite journal|author = L. Citi, D. Ba, E.N. Brown, and R. Barbieri|title = Likelihood methods for point processes with refractoriness|journal=Neural Computation|year=2014|doi=10.1162/NECO_a_00548|url=http://dx.doi.org/10.1162/NECO_a_00548}}</ref> <math>P(N(t+h)-N(t)>1) = o(h^2)</math>.
 
==Properties==
 
Write ''N''(''t'') for the number of events by time ''t'' and <math>\scriptstyle m(t) = \int_0^{t} \lambda (u)\text{d}u</math> for the mean.  Then ''N''(''t'') has a [[Poisson distribution]] with parameter ''m''(''t''), that is for ''k'' = 0, 1, 2, 3….<ref>{{cite doi|10.1007/1-84628-295-0_5}}</ref>
 
:<math>\mathbb P(N(t)=k) = \frac{m(t)^k}{k!}e^{-m(t)}.</math>
 
==Fitting==
 
Traffic on the [[AT&T]] long distance network was shown to be described by a inhomogeneous Poisson process with piecewise linear rate function.<ref>{{cite doi|10.1007/BF02112523}}</ref> Ordinary least squares, iterative weighted least squares and maximum likelihood methods were evaluated and maximum likelihood shown to perform best overall for the data.
 
==Simulation==
 
To simulate a inhomogeneous Poisson process with intensity function ''λ''(''t''), choose a sufficiently large ''λ'' so that ''λ''(''t'') = ''λ p''(''t'') and simulate a Poisson process with rate parameter ''λ''. Accept an event from the Poisson simulation at time ''t'' with probability ''p''(''t'').<ref name="ross" /><ref>{{cite doi|10.1002/nav.3800260304}}</ref> For a [[log-linear]] rate function a more efficient method was published by Lewis and Shedler in 1975.<ref>{{cite doi|10.1093/biomet/63.3.501}}</ref>
 
==Notes==
{{reflist}}
 
{{Stochastic processes}}
 
{{DEFAULTSORT:Inhomogeneous Poisson Process}}
[[Category:Poisson processes]]

Latest revision as of 00:08, 9 January 2015

Hello and welcome. My title is Figures Wunder. My day occupation is a meter reader. One of the extremely best things in the world for me is to do aerobics and now I'm attempting to earn money with it. For many years he's been residing in North Dakota and his family enjoys it.

My page - at home std testing (This Webpage)