The tag has no wiki summary.

learn more… | top users | synonyms

2
votes
0answers
27 views
+100

Importance sampling of finite path of stochastic difference equation

Before passing to question, let me briefly recap what's importance sampling of random variables is about. Suppose $\xi$ is a real-valued random variable with density $f$, and let $g:\Bbb R\to \Bbb R$ ...
0
votes
0answers
26 views

Gillespie Stochastic Simulation in Discrete Time using R [migrated]

I'm simulating a Stochastic Simulation for Epidemiology. How do I simulate it in a discrete time? I managed to obtain for continuous time using the coding below. ...
0
votes
0answers
16 views

How to approximate a Stochastic volatility process with Markov Chain

It is easy to use a Markov Chain to approximate an AR(1) process --- Tauchen (1986), Tauchen and Hussey (1991). For a simple stochastic volatility process (discrete), which in it's very basic form is ...
1
vote
0answers
27 views

Learning parameters of non-parametric Bayesian models

I have a sample of Chinese restaurant process which I want to model as Pitman–Yor process. How do I determine parameters of Pitman-Yor model from given sample? For Dirichlet process I would just use ...
0
votes
2answers
54 views

Are all Levy processes memoryless?

We know that the two canonical Levy processes, namely the Wiener process and Poisson process, are both memoryless, so I wonder if there are any Levy process that is not memoryless. Specifically, are ...
1
vote
1answer
39 views

Ripley's K Function and L Function for Point Patterns

The following is a spatial point pattern: and these are the corresponding Ripley's K function and L function for this data: How are these functions interpreted?
1
vote
1answer
42 views

Tests for spatial stationarity (homogeneity)

There are many models for spatial point patterns and spatial marked point patterns that assume spatial homogeneity or stationarity. i) Is there a statistical test for determining this, where the ...
0
votes
1answer
57 views

Degrees of freedom for Gaussian Process

I am reading this paper on Generalised Wishart Process (GWP). It is about modelling covariance matrix of D - dimensional gaussian processes (GP) as GWP. I fail to understand interpretation of "degrees ...
0
votes
0answers
33 views

Closed form Karhunen-Loeve/PCA expansion for gaussian/squared-exponential covariance

The Gaussian, or squared exponential covariance is $k_{SE}(s,t) = \exp \left\{ -\frac{1}{2l} (s - t)^2 \right\}$. It is a common covariance function used in Gaussian processes. The Karhunen-Loeve ...
0
votes
0answers
15 views

Find the distribution of the increments between two consecutive steps of the walk from a Langevin equation?

Given a Langevin equation of a stochastic process: $X_{I+1}=X_I-F(X_I)+W_I$ - where $F(X_I)$ is a position dependent force, and $W_I$ is the Wiener process term (i.e., Gaussian / white-noise). How do ...
0
votes
0answers
44 views

Question about infinte Markov Chains

Do 2 Markov chains $\left\{X_n\right\}^\inf_{n=0} $ and $\left\{Y_n\right\}^\inf_{n=0} $ with all of the following properties exist so that the probability for infinite n values to maintain ...
0
votes
0answers
20 views

Interpreting variance, conditional variance and variance of residuals in a stationary time series

I'm trying to properly understand variance (in its various guises) in a stationary process. As I understand the constant mean and variance is the mean and variance of the unconditional (or marginal) ...
0
votes
1answer
85 views

what is meant by stochastic drift?

could anybody define what is meant by stochastic drift? I think I have a rough idea, say on a random walk X(n)= a + X(n-1) + Z(n) where Z(n) are iid zero mean and constant variance, then E[X(n)] = ...
1
vote
0answers
39 views

Renewal Process Hypothesis Test

I have $n$ realisations $s_1,\, \dots , s_n$ of random variables $S_1,\, \dots, S_n$ which are assumed to be i.i.d. with unknown distribution. These measure the time between events. I want to ...
1
vote
0answers
24 views

Test for martingale

Given a time series, I am trying to determine whether the underlying stochastic process is a martingale or not. Until now, I have deduced that since I know that the process is always bounded after a ...
1
vote
1answer
111 views

Using a Markov Chain to find the limiting probability?

Let's say a website makes available only one of three online quizzes A, B and C, daily. If the majority of visitors pass the quiz then the next day the website will randomly publish either quiz A, B, ...
0
votes
0answers
56 views

Classification of states in Markov Chain

Question Consider the following transition matrix: ...
1
vote
1answer
51 views

Name for a function mapping time slices to probabilities

Is there a commonly used name for a function that maps time slices in a day to probability of a specific event happening in that slice? I was using probability distribution but I guess since the total ...
1
vote
0answers
50 views

What is meant by a “stochastic constant”?

I've seen it in a few pieces of econometric literature, and googling it turns up lots of papers using it, almost always in reference to state-space models and other dynamic linear regressions. No ...
6
votes
4answers
332 views

Is winning a soccer match independent of previous wins\losses?

$\quad$ I have a friend of mine who is a bit of a gambler ask me this question. He is of poor mathematical background, but has a sense of logic and will probably accept a logical answer in the natural ...
2
votes
1answer
55 views

description of a Wiener Process assuming a Laplace Distribution

Is there a description of the Wiener Process when a Laplace distribution is assumed rather than a normal one?
0
votes
0answers
26 views

How to estimate a stochastic time delay

Say I have irregular samples of two random processes that are both based on an unobserved process, $Z(t)$. Their SDEs are $\mathrm{d}X(t) = \mathrm{d}Z(t-u(t)) + \epsilon(t)$ $\mathrm{d}Y(t) = ...
4
votes
1answer
177 views

Intuitive understanding covariance, cross-covariance, auto-/cross-correliation and power spectrum density

I'm currently studying for my finals in basic statistics for my ECE bachelor. While I think I have the math mostly down, I lack intuitive understanding what the numbers actually mean.(Preamble: I'll ...
0
votes
0answers
38 views

Ergodicity, mixing and stationarity

When considering sequences, I know that mixing and stationarity implies ergodicity. This is a stationary mixing process is ergodic. But, if I have a stationary and non-ergodic sequence, can I conclude ...
2
votes
1answer
115 views

Estimate the second moment of a latent variable using a conditionally unbiased proxy

The Setup: Let $X_t$ denote an unobservable stochastic sequence where the first two unconditional moments are finite constants; ie $\mathbb{E} X_t = \mu < \infty$ and $\mathbb{E} X_t^2 = \gamma ...
2
votes
0answers
43 views

General definition of stochastic processes

I'm trying to understand the basic concept of random processes.I already understood that a continuous-time random process is defined by X(¥,t) where ¥ is each element in the Sample Space and t is the ...
1
vote
1answer
161 views

Intuitive explanation for periodicity in Markov chains

Can someone explain me in a intuitive way what the periodicity of a Markov chain is? It is defined as follows: For all states $i$ in $S$ $d_i$=gcd$\{n \in \mathbb{N} | p_{ii}^{(n)} > 0\} =1$ ...
3
votes
1answer
97 views

Stationary matrix given a transition matrix

I am given the following transition matrix $$P= \pmatrix{ 1-\alpha & \alpha \\ \beta & 1-\beta}, \ \alpha,\beta \in (0,1)$$ with the states $S=\{1,2\}$. I want to determine the stationary ...
3
votes
1answer
101 views

Proof of theorem on recurrent states and its equivalence class

A theorem states the following: Theorem if $i \in S$ is a state which is recurrent, then every state in the equivalence class of $i$ $(\ K(i) \ )$ is recurrent. Additional information on the ...
2
votes
2answers
149 views

Values for integral of square of standard Brownian process

I am trying to generate values in a table for the following function: $$ W = \int_0^1 [B(t)]^2 dt $$ Where $B(t)$ is a standard Brownian motion. Example: $W_{0.05} = 1.656$, $W_{0.025} = 2.135$. ...
2
votes
1answer
93 views

Recurrence definition for a Markov chain

We define a state i to be recurrent if $\sum\limits_{n=0}^\infty P(X_n=i,X_k \neq i$ for $1\leq k < n | X_0=i)$=1. Why do we take infinite series over the probability? Why don't we define ...
0
votes
0answers
24 views

Ito equation generalization?

Ito's equations $$dx = a(x,t) dt + b(x,t) \delta W$$ describes processes for which $$ \frac{<x-x_0>}{\Delta t} = a(x_0, t_0)\quad \Delta t = t-t_0 \to 0$$ $$ \frac{<(x-x_0)^2>}{\Delta ...
0
votes
0answers
87 views

Test for independent but not identically distributed time-series?

So far, runs test or bds test are doing OK with i.i.d data but not so for independent but not identically distributed data set based on my practical experiences with them. Are there any other tests ...
2
votes
0answers
56 views

Distribution/expected length of the shortest path in infinite random geometric graphs

Consider an infinite random geometric graph $G(\rho,d)$ in which vertices are uniformly and independently scattered over the 2D plane with density $\rho$ and edges connect the vertices that are closer ...
8
votes
1answer
126 views

Density of robots doing random walk in an infinite random geometric graph

Consider an infinite random geometric graph in which the node locations follow a Poisson point process with density $\rho$ and edges are placed between the nodes that are closer than $d$. Therefore, ...
3
votes
0answers
36 views

Can we reconstruct the hidden (latent) variables after executing EM?

The question is in the title. I know that EM algorithm could do maximum likelihood estimation for models that have latent variables. I would like to know can we get the (estimated) value of these ...
2
votes
2answers
203 views

Random walk with drift are differences white noise?

If I have a random walk without drift the differences form a white noise process. But what happens if I incorporate a drift $d$? Does this still hold true? I'm not sure because with the drift term d: ...
1
vote
0answers
112 views

Expected Value of Integral of Stochastic Process

Suppose we have a continuous-time stochastic process $X(t)$, which consists of a sequence of delta functions that, at each time $t$, have a probability $p(t)$ of taking a non-zero value. $p(t)$ lies ...
0
votes
0answers
20 views

the approach for checking whether a process is stable?

I have two scenarios for time series data. 1) I have a uni-variate variable spanning across the time axis, are there any approaches or statistic to check whether this process is stable? 2) I have a ...
0
votes
0answers
74 views

How does integrating the Kolmogorov forward equation give $P = \exp (Qt)$?

If $Q$ is a generator matrix of a continuous time Markov chain (CTMC), and I need to use this matrix to solve the Kolmogorov forward equation, I would need to start by integrating it. But I haven't ...
0
votes
0answers
44 views

Comparing two different leagues of similar but not equal distributions around a standard deviation of error of a prediction from a rating system

This query ties a lot of my interests in rating sports teams together, because as I’ve mentioned before I do a version of the Kenneth Massey method (as per his 1997 thesis ...
0
votes
0answers
227 views

is there any package / simulator for discrete time markov chain simulation

is there any package or simulator for discrete time markov chain simulation. Matlab/ Python solutions ?
1
vote
1answer
590 views

Solving the Kolmogorov forward equation for transition probabilities

Let $\lambda \mu > 0$ and let $X$ be a Markov chain on $\{1,2\}$ with generators $$ Q = \begin{pmatrix} -\mu & \mu \\ \lambda & -\lambda \end{pmatrix}$$ Write down the forward equations ...
2
votes
1answer
136 views

How can I measure the effects certain events have on the frequency of other events over time?

EDIT: added more details following @kjetil comments I have the following problem: I monitor one stream of events of type A - those events can be considered instantaneous. I also monitor additional ...
0
votes
1answer
68 views

What is the distribution that can properly describe the PE fluctuation of a stock

I have observed the historical PE (price / profit) value of a stock and realized that it roughly follows a log normal distribution. However, even when the next earning data point is easily ...
3
votes
2answers
305 views

Calculating probabilites of an nth step transition matrix for discrete time markov chains

"Let $\{X_n, n \geq 0\}$ be a DTMC with state space $S = \{1, 2, 3, 4, 5\}$ and the following transition probability matrix: $$ P = \begin{pmatrix} 0.1 & 0.0 & 0.2 & 0.3 & 0.4 \\ 0.0 ...
4
votes
1answer
160 views

Distribution of arrival times to server for an M/M/1 queue (what the server experiences)

In an M/M/1 queue, we know that inter-arrival times are exponentially distributed, and that service times are the same. What is the distribution of to-server inter-arrival times (aka service start ...
3
votes
0answers
23 views

Is a sequence of random variables indexed by a homogeneous Poisson process process strictly stationary?

I'm revising for an exam and have no idea how to approach this question: Let $\{N_t\}_{t\geq 0}$ be a homogeneous Poisson process of parameter $\lambda > 0$. Let $\{X_k\}_{k\geq 0}$ be a sequence ...
2
votes
1answer
55 views

Predicting dichotomous outcome of temporal data set with covariates

I have a set of data, with outcome and time-varying variables, for patients during the course of their respective stays in the hospital. There is a dichotomous outcome on the last day. The length of ...
0
votes
0answers
44 views

About Galton watson process

My question is about a homework question that I found interesting. It gives another proof (without using martingales) for that the critical Galton Watson tree dies out eventually. But it has given a ...

1 2 3