Questions tagged [stationarity]

A strictly stationary process (or time series) is one whose joint distribution is constant over time shifts. A weakly stationary (or covariance stationary) process or series is one whose mean and covariance function (variance and autocorrelation function) do not change over time.

Filter by
Sorted by
Tagged with
1 vote
0 answers
24 views

How come the deterministic part of Wold decomposition does not violate stationarity?

Wold's representation theorem states that every covariance-stationary time series $\{Y_t\}$ can be written as the sum of two time series, one deterministic and one stochastic: $$ Y_t=\sum_{j=0}^\infty ...
Richard Hardy's user avatar
1 vote
0 answers
9 views

Stationary distribution of Markov chain with continuous state space [migrated]

I'm considering a Markov process with a continuous state space. Let $V(x)$ be a differentiable function, $\Delta t$ a fixed time step, and, at every step, set $$x_{n+1}= x_n-\alpha \frac{dV}{dx}\Big|_{...
algebraicgeometer22's user avatar
0 votes
0 answers
28 views

What should we consider when visually evaluating non-stationary data before making assertions?

I often see charts displaying multiple time series plotted together and they are often accompanied by explanations relating one series to the other. For example, in the below chart, one might say less ...
user220790b's user avatar
0 votes
0 answers
6 views

Stationarity and Chow-Lin disaggregation

My goal is to have higher frequency data (quarterly) for the GDP of my region (yearly data) through quarterly auxiliary data. Therefore my goal is to perform a Chow-Lin regression using the package <...
Anna's user avatar
  • 113
0 votes
0 answers
16 views

ADF & KPSS Test Reporting Series as I(19)

I am currently attempting to determine the order of integration for a nonstationary time series of the Federal Funds Rate (https://fred.stlouisfed.org/series/FEDFUNDS - Monthly, 1990 to 2004, 168 obs.)...
shrey_shankar's user avatar
0 votes
0 answers
8 views

Differencing and Stationarity in Panel Data Analysis

As far as I know, the source of randomness is different in cross-sectional and time-series analysis. The following is my understanding. When we use a cross-sectional data set $\{X_i\}_{i=1}^{N}$, the ...
MinChul Park's user avatar
0 votes
0 answers
25 views

Do we need stationarity for Bayesian network modelling?

Most of the Bayesian network packages in R dealing with continuous data require data to be Gaussian. Does this necessitate the data should also be stationary in order to run the model?
prasad teja's user avatar
0 votes
0 answers
55 views

How to Handle a Trend-Stationary Dep. Variable and Stationary and Non-Stationary (Unit-Root) Ind. Variables?

I am trying to determine the best way to proceed when one has a mix of stationary, trend-stationary and non-stationary variables with unit roots. My dependent variable $Y_t$ is a trend-stationary ...
user3672120's user avatar
0 votes
0 answers
36 views

Calculate price forecasts from forecasted returns

I have a question which makes me so hurt. Let's have a price time series $y_{t}$ for the same asset (for example, daily S&P 500 values) $y_{t}$ It can be trendy (trend stationary or difference ...
Dmitriy's user avatar
  • 234
0 votes
0 answers
19 views

Stationary spatial random filed

I am very new to the spatial model. My question is, what does a stationary spatial random field mean? If I divide the data, say, "meuse" dataset in "sp" package in"R" ...
Maryam's user avatar
  • 1,408
1 vote
1 answer
51 views

Testing Trend Stationarity against Stationarity

I am trying to find a test where null hypothesis is that the series is trend stationary. I can assume that the trend is linear if that is going to help. So the series for null hypothesis is given by: $...
Bronsteinx's user avatar
0 votes
0 answers
26 views

Strongly vs. weakly stationary ergodic process

I'm reading a paper where a process is assumed as strong stationary ergodic. And I have read some materials where an ergodic process is defined for a weak stationary process, like $$\lim_{n\rightarrow\...
toki's user avatar
  • 1
0 votes
0 answers
15 views

Mincer-Zarnowitz test with cointegrated time series

The Mincer-Zarnowitz test of forecast optimality regresses forecast errors $e_{t+h|t}$ on the forecasts $\hat y_{t+h|t}$, $$ e_{t+h|t} = \gamma_0 + \gamma_1\hat y_{t+h|t} + u_t \tag{1} $$ or in ...
Richard Hardy's user avatar
0 votes
0 answers
26 views

Lasso for non-stationary time series

Does it make sense to use Lasso to find an explanatory variable x to predict my variable y, assuming both y and x are non-stationary? (I'm using both variables as levels, not differences). If I find a ...
Astrid's user avatar
  • 1
1 vote
0 answers
12 views

A time series which doesn't look stationary but pass the ADF (augmented Dicky-Fuller) test [duplicate]

My time series look like this, but it passed the ADF test. Does it make any sense?
UePG's user avatar
  • 11
0 votes
0 answers
63 views

Input/References on time series modeling/prediction without assuming stationarity

I am trying to find out what methodologies there are for analyzing/modeling time series without assuming the time series is stationary/trying to make the time series stationary. I am wanting to do ...
QMath's user avatar
  • 185
2 votes
0 answers
14 views

Higher moments of Vector Auto-Regressive (VAR) process

If we have a VAR process: $\begin{align} \mathbf{y}_t = A_1\mathbf{y}_{t-1} + \dots + A_d\mathbf{y}_{t-d} + \boldsymbol{\epsilon}_t, \quad t \in \mathbb{Z} \end{align}$ With the stability condition ...
Dylan Dijk's user avatar
0 votes
1 answer
31 views

Stationarity in panel data analysis

I'm analyzing a monthly district-wise dataset of 10 years to determine factors influencing dengue incidence. The dataset is not stationary and the dengue incidence shows a seasonal pattern. My ...
Nipuni Opatha's user avatar
0 votes
0 answers
14 views

ADF tests: phi2 and phi3 explodes when differencing

ADF tests are used to inform on the order of integration of a time series. With the function ur.df, three different specifications can be used, called "trend&...
Johanna W's user avatar
0 votes
0 answers
28 views

Can We Use Mutual Information to Determine if a Time Series has a Difference Trend or a Time Trend?

Let's say we have a finite real-valued time series (finite subsequence of a realization of a real-valued stochastic process), $X_t$. To address my question, we make no initial stationarity assumptions....
QMath's user avatar
  • 185
0 votes
0 answers
12 views

Are non-constant polynomial means a special case of seasonality?

In this video, it is said that an otherwise-stationary time series with non-constant linear mean is analyzed by taking the first difference of the time series to produce a new, stationary time series. ...
user10478's user avatar
  • 101
1 vote
1 answer
38 views

Cointegration in quantile regression

I used quantile regression for my research. My variables were significant but my pseudo r was low. So I tested for cointegration. All my variables are I(1) and when I run the models with raw (...
Helpplease's user avatar
0 votes
0 answers
33 views

Estimation of AR model with Durbin-Levinson

Let $X_t$ be a stationary time series. We have computed $\rho_1 = 0.8, \rho_2 = 0.5, \rho_3 = 0.4$. If we assume that an AR(3) model without a constant is appropriate, get estimates of $\phi_1$, $\...
Kilkik's user avatar
  • 245
1 vote
0 answers
18 views

Showing stationarity thanks to integrals

Let $X_t$ be a stationary process with spectral representation $$X_t = \int_{\left[-\frac12 , \frac 12\right]}e^{2 i \pi f t}\,dZ(f).$$ Assume that $E\lvert dZ(f)\lvert^2=\lvert G(f) \rvert^2\,dF(f)$ ...
Kilkik's user avatar
  • 245
0 votes
0 answers
22 views

Find spectral density of a process

Let $X_t = C \cos(2πw t) + D \sin(2πwt) + U_t$ where $C, D$ and $U_t$ are Gaussian random variables with unit variance, and where all the variables are independent, and $U_t$ is white noise. Determine ...
Kilkik's user avatar
  • 245
0 votes
0 answers
28 views

Monte Carlo simulation to get stationary distribution of a complex system

I was wondering if I could get some help with my problem. I have a complex Markov chain where I cannot track its transition analytically. Instead, I decided to simulate $N$ numbers of particles for $T$...
Anonymouslylost's user avatar
0 votes
0 answers
34 views

Stationary if and only if Toeplitz matrix

It is known that a stationary process (mean and autocovariance do not vary with respect to time and the 2nd moment is finite for all times) has a Toeplitz covariance matrix. But is the converse true ? ...
Kilkik's user avatar
  • 245
0 votes
0 answers
24 views

Gradient vs differences to remove non-stationarity in time series?

When dealing with non-stationary time series (for instance, in auto-correlation analysis), differencing (computing absolute differences between consecutive samples/observations) is often regarded as ...
joaocandre's user avatar
2 votes
0 answers
23 views

How to test for statistical independence on non-stationary time series?

I have multiple time series on which I want to identify statistically significant (if any) trends. To that end, I started by conducting the Augmented Dickey Fuller (ADF) test to identify which series ...
joaocandre's user avatar
1 vote
0 answers
12 views

For checking stationarity for applying Granger Causality Test, should the range of both the time series be same?

I have 2 time series - one is for scores of people in a survey and the other for the sales of a product for 10 distinct countries. The survey data is categorized into 3 categories for each country. So,...
Ritik P. Nayak's user avatar
0 votes
0 answers
34 views

Serial correlation requirements for Mann-Kendall test

I want to apply the Mann-Kendall (MK) test to identify relevant trends in multiple time series, however literature on the matter tells me one hard requirement is for no serial correlation to exist in ...
joaocandre's user avatar
1 vote
0 answers
20 views

Geostatistics: Covariance vs Semivariance

I am confused by the following page in Geostatistics for Environmental Scientists, Webster & Oliver: My understanding Given locations specified by a vector $\mathbf{x}$, we assume an underlying ...
Mr Lolo's user avatar
  • 111
0 votes
0 answers
28 views

Can an ADF-test distinguish between stationarity and trend stationarity?

I am learning Time series analysis and I am studying the augmented Dickey Fuller test. My understanding of the null hypotheses is clashing with all the explanations I find online and in books. I refer ...
Jen3050's user avatar
0 votes
0 answers
24 views

Rejection of ADF-test for log returns and AIC selected ARIMA(0,0,0) and ARIMA (0,0,0) with a drift?

I use monthly log returns for some stock portfolios and rejects the null of the ADF-test for both. Hereafter I use AIC to select best fitting models using auto.arima in R. The selected models are ...
NotJohnLeCarre's user avatar
1 vote
2 answers
42 views

First difference of logs of negative numbers causes trouble

I have the following problem: I have a timeseries with the prices for a few futures, which is non-stationary (according to ADF test). If I apply first difference of logs, ADF shows stationarity. But I ...
Arri's user avatar
  • 47
0 votes
0 answers
30 views

Stationarity and AR(p) representation

I know that covariance stationary processes can always be represented as an $MA(\infty)$ process, i.e. $$ Y_t = \alpha + \sum_{s=0}^{\infty} \beta_{s} \varepsilon_{t-s}. $$ with uncorrelated ...
ecnmetrician's user avatar
0 votes
0 answers
34 views

Stationarity of ARMA-like time series

It is well known that for $X_t \sim ARMA(p,q)$ where $\phi(B)X_t = \theta(B)Z_t, Z_t\sim WN(0, \sigma^2)$, if $\phi(z)\neq0$ in the unit circle, $\{X_t\}$ is stationary. Now assume $\{Y_t, t=0, \pm1, ....
dc3506's user avatar
  • 65
0 votes
0 answers
56 views

Differencing, taking logs or squaring does not fix nonstationarity. What to do?

I want to test for correlation in a time series model. However, all four independent variables and the dependent variable are non-stationary. I tried taking first, second and third differences but my ...
Remco Vrinzen's user avatar
0 votes
0 answers
41 views

Can a VAR(d) process be strictly stationary?

If a stochastic process is generated by a vector autoregressive process of order $d$, can it be strictly stationary. I know that under the stability condition, that this is weakly stationary process. $...
Dylan Dijk's user avatar
0 votes
1 answer
74 views

Stationarity in an interrupted time series

I am using proc autoreg in SAS to conduct an ITS analysis and I have a question about stationarity. Proc autoreg is able to ...
Levi M's user avatar
  • 65
0 votes
0 answers
82 views

Cross-sectional dependence and second generation unit root tests

Could someone explain me in simpler terms what a cross sectional dependence and panel unit root tests does in practice? How is panel unit root tests different from any other unit root tests such as ...
Julian's user avatar
  • 13
0 votes
1 answer
72 views

ACF and PACF vs Ljung Box test

I have a time series with realized sales prices on monthly basis in a large European city which comes as an index and I would like to do 1 period ahead forecasting. I have run ADF and KPSS for unit ...
mbih's user avatar
  • 23
1 vote
0 answers
41 views

How to calculate heteroskedastic standard errors

I'm doing curve fitting, but my error is non-stationary. The variance decreases: I'm looking for a signal in the noise (In this case at x=90, y=50). I'd like to calculate the "standard error&...
Tom Huntington's user avatar
0 votes
0 answers
37 views

Why is $\sum_{i=1}^{n} \sum_{j=1}^{n} Cov(X_i,X_j) = \sum_{i-j=-n}^{n} (n-|i-j|)\gamma(i-j)$ for a stationary time series

My book presents the following derivation of the variance of the mean estimator $\bar{X_n} = \frac{1}{n} \sum_{i=1}^{n} X_{i}$ for a stationary process $(X_t)_{t}$ with autocovariance function $\gamma(...
Sebastian's user avatar
1 vote
1 answer
108 views

When is an AR(1) process strictly stationary?

Suppose I have an AR(1) process $X_t=aX_{t-1}+e_t$, where $e_t$ is a white noise with zero mean and finite variance. Under what conditions do I have $\{X_t\}$ being strictly stationary in the sense ...
ExcitedSnail's user avatar
  • 2,516
2 votes
1 answer
80 views

If a strictly stationary process is also independent, does this imply i.i.d.?

Suppose I have a time series process $\{X_t\}$ that is strictly stationary in the sense that the joint distribution of $[X_{t_1},...,X_{t_k}]$ and $[X_{t_1+a},...,X_{t_k+a}]$ are the same for any set ...
ExcitedSnail's user avatar
  • 2,516
0 votes
0 answers
32 views

Does $ARMA(p,q)$ process need to be invertible and have a causal stationary solution to be written in $MA(\infty)$ representation?

Does $ARMA(p,q)$ process need to be invertible and have a causal stationary solution to be written in $MA(\infty)$ representation? And if you write the process in terms of $Z_t$ instead of $X_t$, then ...
eddie's user avatar
  • 207
1 vote
1 answer
70 views

Existence of stationary process with a given ACF

Consider the sequence $$\gamma(\tau) = \begin{cases} 1 & \text{if } |\tau| ≤ K \\ 0 & \text{if }|\tau| > K \end{cases}$$ where $K$ is a positive integer. Is $\gamma(\tau)$ an auto ...
Kilkik's user avatar
  • 245
0 votes
0 answers
32 views

What a stochastic process with constant variance is called?

Consider a stochastic process $\left( x_t \right)_{t \in \mathbb{R}}$ with auto-covariance function $k(t, t') = \mathbb{E}[(x_t - \mu_t) (x_{t'} - \mu_{t'})]$ where $\mu_{t} = \mathbb{E}[x_t]$. ...
Sia's user avatar
  • 101
1 vote
0 answers
20 views

compute the Wold representation of this process

I want to find the Wold representation of $y_t = e_t + \alpha e_{t-1} e_{t-2}$, but I'm having difficulties with the product. For instance, I tried: $$ y_t = e_t + \alpha e_{t-1}e_{t-2} \pm e_{t-1}^2 ...
R__'s user avatar
  • 111

1
2 3 4 5
28