forecast
Forecast states and observations of diffuse state-space models
Syntax
Description
[ returns forecasted observations (Y,YMSE]
= forecast(Mdl,numPeriods,Y0)Y)
and their corresponding variances (YMSE) from forecasting
the diffuse
state-space model Mdl using a numPeriods forecast
horizon and in-sample observations Y0.
[ uses
additional options specified by one or more Y,YMSE]
= forecast(Mdl,numPeriods,Y0,Name,Value)Name,Value pair
arguments. For example, for state-space models that include a linear
regression component in the observation model, include in-sample predictor
data, predictor data for the forecast horizon, and the regression
coefficient.
Input Arguments
Diffuse state-space model, specified as an dssm model
object returned by dssm or estimate.
If Mdl is not fully specified (that is, Mdl contains
unknown parameters), then specify values for the unknown parameters
using the 'Params' name-value
pair argument. Otherwise, the software issues an error. estimate returns
fully-specified state-space models.
Mdl does not store observed responses or
predictor data. Supply the data wherever necessary using the appropriate
input or name-value pair arguments.
Forecast horizon, specified as a positive integer. That is,
the software returns 1,..,numPeriods forecasts.
Data Types: double
In-sample, observed responses, specified as a cell vector of numeric vectors or a matrix.
- If - Mdlis time invariant, then- Y0is a T-by-n numeric matrix, where each row corresponds to a period and each column corresponds to a particular observation in the model. Therefore, T is the sample size and m is the number of observations per period. The last row of- Ycontains the latest observations.
- If - Mdlis time varying with respect to the observation equation, then- Yis a T-by-1 cell vector. Each element of the cell vector corresponds to a period and contains an nt-dimensional vector of observations for that period. The corresponding dimensions of the coefficient matrices in- Mdl.C{t}and- Mdl.D{t}must be consistent with the matrix in- Y{t}for all periods. The last cell of- Ycontains the latest observations.
If Mdl is an estimated state-space
model (that is, returned by estimate), then it is best practice to set Y0 to
the same data set that you used to fit Mdl.
NaN elements indicate missing
observations. For details on how the Kalman filter accommodates missing
observations, see Algorithms.
Data Types: double | cell
Name-Value Arguments
Specify optional pairs of arguments as
      Name1=Value1,...,NameN=ValueN, where Name is
      the argument name and Value is the corresponding value.
      Name-value arguments must appear after other arguments, but the order of the
      pairs does not matter.
    
      Before R2021a, use commas to separate each name and value, and enclose 
      Name in quotes.
    
Example: 'Beta',beta,'Predictors',Z specifies
to deflate the observations by the regression component composed of
the predictor data Z and the coefficient matrix beta.
Forecast-horizon, state-transition, coefficient matrices, specified
as the comma-separated pair consisting of 'A' and
a cell vector of numeric matrices.
- Amust contain at least- numPeriodscells. Each cell must contain a matrix specifying how the states transition in the forecast horizon. If the length of- Ais greater than- numPeriods, then the software uses the first- numPeriodscells. The last cell indicates the latest period in the forecast horizon.
- If - Mdlis time invariant with respect to the states, then each cell of- Amust contain an m-by-m matrix, where m is the number of the in-sample states per period. By default, the software uses- Mdl.Athroughout the forecast horizon.
- If - Mdlis time varying with respect to the states, then the dimensions of the matrices in the cells of- Acan vary, but the dimensions of each matrix must be consistent with the matrices in- Band- Cin the corresponding periods. By default, the software uses- Mdl.A{end}throughout the forecast horizon.
Note
The matrices in A cannot contain NaN values.
Data Types: cell
Forecast-horizon, state-disturbance-loading, coefficient matrices,
specified as the comma-separated pair consisting of 'B' and
a cell vector of matrices.
- Bmust contain at least- numPeriodscells. Each cell must contain a matrix specifying how the states transition in the forecast horizon. If the length of- Bis greater than- numPeriods, then the software uses the first- numPeriodscells. The last cell indicates the latest period in the forecast horizon.
- If - Mdlis time invariant with respect to the states and state disturbances, then each cell of- Bmust contain an m-by-k matrix, where m is the number of the in-sample states per period, and k is the number of in-sample, state disturbances per period. By default, the software uses- Mdl.Bthroughout the forecast horizon.
- If - Mdlis time varying, then the dimensions of the matrices in the cells of- Bcan vary, but the dimensions of each matrix must be consistent with the matrices in- Ain the corresponding periods. By default, the software uses- Mdl.B{end}throughout the forecast horizon.
Note
The matrices in B cannot contain NaN values.
Data Types: cell
Forecast-horizon, measurement-sensitivity, coefficient matrices,
specified as the comma-separated pair consisting of 'C' and
a cell vector of matrices.
- Cmust contain at least- numPeriodscells. Each cell must contain a matrix specifying how the states transition in the forecast horizon. If the length of- Cis greater than- numPeriods, then the software uses the first- numPeriodscells. The last cell indicates the latest period in the forecast horizon.
- If - Mdlis time invariant with respect to the states and the observations, then each cell of- Cmust contain an n-by-m matrix, where n is the number of the in-sample observations per period, and m is the number of in-sample states per period. By default, the software uses- Mdl.Cthroughout the forecast horizon.
- If - Mdlis time varying with respect to the states or the observations, then the dimensions of the matrices in the cells of- Ccan vary, but the dimensions of each matrix must be consistent with the matrices in- Aand- Din the corresponding periods. By default, the software uses- Mdl.C{end}throughout the forecast horizon.
Note
The matrices in C cannot contain NaN values.
Data Types: cell
Forecast-horizon, observation-innovation, coefficient matrices,
specified as the comma-separated pair consisting of 'D' and
a cell vector of matrices.
- Dmust contain at least- numPeriodscells. Each cell must contain a matrix specifying how the states transition in the forecast horizon. If the length of- Dis greater than- numPeriods, then the software uses the first- numPeriodscells. The last cell indicates the latest period in the forecast horizon.
- If - Mdlis time invariant with respect to the observations and the observation innovations, then each cell of- Dmust contain an n-by-h matrix, where n is the number of the in-sample observations per period, and h is the number of in-sample, observation innovations per period. By default, the software uses- Mdl.Dthroughout the forecast horizon.
- If - Mdlis time varying with respect to the observations or the observation innovations, then the dimensions of the matrices in the cells of- Dcan vary, but the dimensions of each matrix must be consistent with the matrices in- Cin the corresponding periods. By default, the software uses- Mdl.D{end}throughout the forecast horizon.
Note
The matrices in D cannot contain NaN values.
Data Types: cell
Regression coefficients corresponding to predictor variables,
specified as the comma-separated pair consisting of 'Beta' and
a d-by-n numeric matrix. d is
the number of predictor variables (see Predictors0 and PredictorsF)
and n is the number of observed response series
(see Y0).
- If you specify - Beta, then you must also specify- Predictors0and- PredictorsF.
- If - Mdlis an estimated state-space model, then specify the estimated regression coefficients stored in- Mdl.estParams.
By default, the software excludes a regression component from the state-space model.
In-sample, predictor variables in the state-space model observation
equation, specified as the comma-separated pair consisting of 'Predictors0' and
a matrix. The columns of Predictors0 correspond
to individual predictor variables. Predictors0 must
have T rows, where row t corresponds
to the observed predictors at period t (Zt).
The expanded observation equation is
In other words, the software deflates the observations using the regression component. β is the time-invariant vector of regression coefficients that the software estimates with all other parameters.
- If there are n observations per period, then the software regresses all predictor series onto each observation. 
- If you specify - Predictors0, then- Mdlmust be time invariant. Otherwise, the software returns an error.
- If you specify - Predictors0, then you must also specify- Betaand- PredictorsF.
- If - Mdlis an estimated state-space model (that is, returned by- estimate), then it is best practice to set- Predictors0to the same predictor data set that you used to fit- Mdl.
By default, the software excludes a regression component from the state-space model.
Data Types: double
In-sample, predictor variables in the state-space model observation
equation, specified as the comma-separated pair consisting of 'Predictors0' and
a T-by-d numeric matrix. T is
the number of in-sample periods and d is the number
of predictor variables. Row t corresponds to the
observed predictors at period t (Zt).
The expanded observation equation is
In other words, the software deflates the observations using the regression component. β is the time-invariant vector of regression coefficients that the software estimates with all other parameters.
- If there are n observations per period, then the software regresses all predictor series onto each observation. 
- If you specify - Predictors0, then- Mdlmust be time invariant. Otherwise, the software returns an error.
- If you specify - Predictors0, then you must also specify- Betaand- PredictorsF.
- If - Mdlis an estimated state-space model (that is, returned by- estimate), then it is best practice to set- Predictors0to the same predictor data set that you used to fit- Mdl.
By default, the software excludes a regression component from the state-space model.
Data Types: double
Output Arguments
Forecasted observations, returned as a matrix or a cell vector of numeric vectors.
If Mdl is a time-invariant, state-space model
with respect to the observations, then Y is a numPeriods-by-n matrix.
If Mdl is a time-varying, state-space model
with respect to the observations, then Y is a numPeriods-by-1
cell vector of numeric vectors. Cell t of Y contains
an nt-by-1 numeric vector
of forecasted observations for period t.
Error variances of forecasted observations, returned as a matrix or a cell vector of numeric vectors.
If Mdl is a time-invariant, state-space model
with respect to the observations, then YMSE is
a numPeriods-by-n matrix.
If Mdl is a time-varying, state-space model
with respect to the observations, then YMSE is
a numPeriods-by-1 cell vector of numeric vectors.
Cell t of YMSE contains an nt-by-1
numeric vector of error variances for the corresponding forecasted
observations for period t.
State forecasts, returned as a matrix or a cell vector of numeric vectors.
If Mdl is a time-invariant, state-space model
with respect to the states, then X is a numPeriods-by-m matrix.
If Mdl is a time-varying, state-space model
with respect to the states, then X is a numPeriods-by-1
cell vector of numeric vectors. Cell t of X contains
an mt-by-1 numeric vector
of forecasted observations for period t.
Error variances of state forecasts, returned as a matrix or a cell vector of numeric vectors.
If Mdl is a time-invariant, state-space model
with respect to the states, then XMSE is a numPeriods-by-m matrix.
If Mdl is a time-varying, state-space model
with respect to the states, then XMSE is a numPeriods-by-1
cell vector of numeric vectors. Cell t of XMSE contains
an mt-by-1 numeric vector
of error variances for the corresponding forecasted observations for
period t.
Examples
Suppose that a latent process is a random walk. The state equation is
where is Gaussian with mean 0 and standard deviation 1.
Generate a random series of 100 observations from , assuming that the series starts at 1.5.
T = 100;
x0 = 1.5;
rng(1); % For reproducibility
u = randn(T,1);
x = cumsum([x0;u]);
x = x(2:end);Suppose further that the latent process is subject to additive measurement error. The observation equation is
where is Gaussian with mean 0 and standard deviation 0.75. Together, the latent process and observation equations compose a state-space model.
Use the random latent state process (x) and the observation equation to generate observations.
y = x + 0.75*randn(T,1);
Specify the four coefficient matrices.
A = 1; B = 1; C = 1; D = 0.75;
Create the diffuse state-space model using the coefficient matrices. Specify that the initial state distribution is diffuse.
Mdl = dssm(A,B,C,D,'StateType',2)Mdl = 
State-space model type: dssm
State vector length: 1
Observation vector length: 1
State disturbance vector length: 1
Observation innovation vector length: 1
Sample size supported by model: Unlimited
State variables: x1, x2,...
State disturbances: u1, u2,...
Observation series: y1, y2,...
Observation innovations: e1, e2,...
State equation:
x1(t) = x1(t-1) + u1(t)
Observation equation:
y1(t) = x1(t) + (0.75)e1(t)
Initial state distribution:
Initial state means
 x1 
  0 
Initial state covariance matrix
     x1  
 x1  Inf 
State types
    x1   
 Diffuse 
Mdl is an dssm model. Verify that the model is correctly specified using the display in the Command Window.
Forecast observations 10 periods into the future, and estimate the mean squared errors of the forecasts.
numPeriods = 10; [ForecastedY,YMSE] = forecast(Mdl,numPeriods,y);
Plot the forecasts with the in-sample responses, and 95% Wald-type forecast intervals.
ForecastIntervals(:,1) = ForecastedY - 1.96*sqrt(YMSE); ForecastIntervals(:,2) = ForecastedY + 1.96*sqrt(YMSE); figure plot(T-20:T,y(T-20:T),'-k',T+1:T+numPeriods,ForecastedY,'-.r',... T+1:T+numPeriods,ForecastIntervals,'-.b',... T:T+1,[y(end)*ones(3,1),[ForecastedY(1);ForecastIntervals(1,:)']],':k',... 'LineWidth',2) hold on title({'Observed Responses and Their Forecasts'}) xlabel('Period') ylabel('Responses') legend({'Observations','Forecasted observations','95% forecast intervals'},... 'Location','Best') hold off

The forecast intervals flare out because the process is nonstationary.
Suppose that the linear relationship between unemployment rate and the nominal gross national product (nGNP) is of interest. Suppose further that unemployment rate is an AR(1) series. Symbolically, and in state-space form, the model is
where:
- is the unemployment rate at time t. 
- is the observed change in the unemployment rate being deflated by the return of nGNP (). 
- is the Gaussian series of state disturbances having mean 0 and unknown standard deviation . 
Load the Nelson-Plosser data set, which contains the unemployment rate and nGNP series, among other things.
load Data_NelsonPlosserPreprocess the data by taking the natural logarithm of the nGNP series and removing the starting NaN values from each series.
isNaN = any(ismissing(DataTable),2); % Flag periods containing NaNs gnpn = DataTable.GNPN(~isNaN); y = diff(DataTable.UR(~isNaN)); T = size(gnpn,1); % The sample size Z = price2ret(gnpn);
This example continues using the series without NaN values. However, using the Kalman filter framework, the software can accommodate series containing missing values.
Determine how well the model forecasts observations by removing the last 10 observations for comparison.
numPeriods = 10; % Forecast horizon isY = y(1:end-numPeriods); % In-sample observations oosY = y(end-numPeriods+1:end); % Out-of-sample observations ISZ = Z(1:end-numPeriods); % In-sample predictors OOSZ = Z(end-numPeriods+1:end); % Out-of-sample predictors
Specify the coefficient matrices.
A = NaN; B = NaN; C = 1;
Create the state-space model using dssm by supplying the coefficient matrices and specifying that the state values come from a diffuse distribution. The diffuse specification indicates complete ignorance about the moments of the initial distribution.
StateType = 2;
Mdl = dssm(A,B,C,'StateType',StateType);Estimate the parameters. Specify the regression component and its initial value for optimization using the 'Predictors' and 'Beta0' name-value pair arguments, respectively. Display the estimates and all optimization diagnostic information. Restrict the estimate of  to all positive, real numbers.
params0 = [0.3 0.2]; % Initial values chosen arbitrarily Beta0 = 0.1; [EstMdl,estParams] = estimate(Mdl,y,params0,'Predictors',Z,'Beta0',Beta0,... 'lb',[-Inf 0 -Inf]);
Method: Maximum likelihood (fmincon)
Effective Sample size:             60
Logarithmic  likelihood:     -110.477
Akaike   info criterion:      226.954
Bayesian info criterion:      233.287
           |      Coeff       Std Err    t Stat    Prob 
--------------------------------------------------------
 c(1)      |   0.59436       0.09408     6.31738  0     
 c(2)      |   1.52554       0.10758    14.17991  0     
 y <- z(1) | -24.26161       1.55730   -15.57930  0     
           |                                            
           |    Final State   Std Dev     t Stat   Prob 
 x(1)      |   2.54764        0           Inf     0     
EstMdl is a dssm model, and you can access its properties using dot notation.
Forecast observations over the forecast horizon. EstMdl does not store the data set, so you must pass it in appropriate name-value pair arguments. 
[fY,yMSE] = forecast(EstMdl,numPeriods,isY,'Predictors0',ISZ,... 'PredictorsF',OOSZ,'Beta',estParams(end));
fY is a 10-by-1 vector containing the forecasted observations, and yMSE is a 10-by-1 vector containing the variances of the forecasted observations.
Obtain 95% Wald-type forecast intervals. Plot the forecasted observations with their true values and the forecast intervals.
ForecastIntervals(:,1) = fY - 1.96*sqrt(yMSE); ForecastIntervals(:,2) = fY + 1.96*sqrt(yMSE); figure h = plot(dates(end-numPeriods-9:end-numPeriods),isY(end-9:end),'-k',... dates(end-numPeriods+1:end),oosY,'-k',... dates(end-numPeriods+1:end),fY,'--r',... dates(end-numPeriods+1:end),ForecastIntervals,':b',... dates(end-numPeriods:end-numPeriods+1),... [isY(end)*ones(4,1),[oosY(1);ForecastIntervals(1,:)';fY(1)]],':k',... 'LineWidth',2); xlabel('Period') ylabel('Change in unemployment rate') legend(h([1,3,4]),{'Observations','Forecasted responses',... '95% forecast intervals'}) title('Observed and Forecasted Changes in the Unemployment Rate')

Suppose that a latent process is a random walk. The state equation is
where is Gaussian with mean 0 and standard deviation 1.
Generate a random series of 100 observations from , assuming that the series starts at 1.5.
T = 100;
x0 = 1.5;
rng(1); % For reproducibility
u = randn(T,1);
x = cumsum([x0;u]);
x = x(2:end);Suppose further that the latent process is subject to additive measurement error. The observation equation is
where is Gaussian with mean 0 and standard deviation 0.75. Together, the latent process and observation equations compose a state-space model.
Use the random latent state process (x) and the observation equation to generate observations.
y = x + 0.75*randn(T,1);
Specify the four coefficient matrices.
A = 1; B = 1; C = 1; D = 0.75;
Create the diffuse state-space model using the coefficient matrices. Specify that the initial state distribution is diffuse.
Mdl = dssm(A,B,C,D,'StateType',2)Mdl = 
State-space model type: dssm
State vector length: 1
Observation vector length: 1
State disturbance vector length: 1
Observation innovation vector length: 1
Sample size supported by model: Unlimited
State variables: x1, x2,...
State disturbances: u1, u2,...
Observation series: y1, y2,...
Observation innovations: e1, e2,...
State equation:
x1(t) = x1(t-1) + u1(t)
Observation equation:
y1(t) = x1(t) + (0.75)e1(t)
Initial state distribution:
Initial state means
 x1 
  0 
Initial state covariance matrix
     x1  
 x1  Inf 
State types
    x1   
 Diffuse 
Mdl is an dssm model. Verify that the model is correctly specified using the display in the Command Window.
Forecast states 10 periods into the future, and estimate the mean squared errors of the forecasts.
numPeriods = 10; [~,~,ForecastedX,XMSE] = forecast(Mdl,numPeriods,y);
Plot the forecasts with the in-sample states, and 95% Wald-type forecast intervals.
ForecastIntervals(:,1) = ForecastedX - 1.96*sqrt(XMSE); ForecastIntervals(:,2) = ForecastedX + 1.96*sqrt(XMSE); figure plot(T-20:T,x(T-20:T),'-k',T+1:T+numPeriods,ForecastedX,'-.r',... T+1:T+numPeriods,ForecastIntervals,'-.b',... T:T+1,[x(end)*ones(3,1),[ForecastedX(1);ForecastIntervals(1,:)']],':k',... 'LineWidth',2) hold on title({'State Values and Their Forecasts'}) xlabel('Period') ylabel('State value') legend({'State Values','Forecasted states','95% forecast intervals'},... 'Location','Best') hold off

The forecast intervals flare out because the process is nonstationary.
Tips
Mdl does not store the response data, predictor
data, and the regression coefficients. Supply them whenever necessary
using the appropriate input or name-value pair arguments.
Algorithms
The Kalman filter accommodates missing data by not updating filtered state estimates corresponding to missing observations. In other words, suppose there is a missing observation at period t. Then, the state forecast for period t based on the previous t – 1 observations and filtered state for period t are equivalent.
References
[1] Durbin J., and S. J. Koopman. Time Series Analysis by State Space Methods. 2nd ed. Oxford: Oxford University Press, 2012.
Version History
Introduced in R2015b
MATLAB Command
You clicked a link that corresponds to this MATLAB command:
Run the command by entering it in the MATLAB Command Window. Web browsers do not support MATLAB commands.
Select a Web Site
Choose a web site to get translated content where available and see local events and offers. Based on your location, we recommend that you select: .
You can also select a web site from the following list
How to Get Best Site Performance
Select the China site (in Chinese or English) for best site performance. Other MathWorks country sites are not optimized for visits from your location.
Americas
- América Latina (Español)
- Canada (English)
- United States (English)
Europe
- Belgium (English)
- Denmark (English)
- Deutschland (Deutsch)
- España (Español)
- Finland (English)
- France (Français)
- Ireland (English)
- Italia (Italiano)
- Luxembourg (English)
- Netherlands (English)
- Norway (English)
- Österreich (Deutsch)
- Portugal (English)
- Sweden (English)
- Switzerland
- United Kingdom (English)