filter
Forward recursion of diffuse state-space models
Description
X = filter(Mdl,Y)X)
by performing forward recursion of the fully specified diffuse state-space
model Mdl. That is, filter applies
the diffuse Kalman filter using Mdl and
the observed responses Y.
X = filter(Mdl,Y,Name,Value)Name,Value pair
arguments. For example, specify the regression coefficients and predictor
data to deflate the observations, or specify to use the univariate
treatment of a multivariate model.
If Mdl is not fully specified, then you must
specify the unknown parameters as known scalars using the 'Params' Name,Value pair
argument.
[ additionally returns the loglikelihood
value (X,logL,Output]
= filter(___)logL) and an output structure array (Output)
using any of the input arguments in the previous syntaxes. Output contains:
- Filtered and forecasted states 
- Estimated covariance matrices of the filtered and forecasted states 
- Loglikelihood value 
- Forecasted observations and its estimated covariance matrix 
- Adjusted Kalman gain 
- Vector indicating which data the software used to filter 
Input Arguments
Name-Value Arguments
Output Arguments
Examples
Tips
- Mdldoes not store the response data, predictor data, and the regression coefficients. Supply the data wherever necessary using the appropriate input or name-value pair arguments.
- It is a best practice to allow - filterto determine the value of- SwitchTime. However, in rare cases, you might experience numerical issues during estimation, filtering, or smoothing diffuse state-space models. For such cases, try experimenting with various- SwitchTimespecifications, or consider a different model structure (e.g., simplify or reverify the model). For example, convert the diffuse state-space model to a standard state-space model using- ssm.
- To accelerate estimation for low-dimensional, time-invariant models, set - 'Univariate',true. Using this specification, the software sequentially updates rather then updating all at once during the filtering process.
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. 
- For explicitly defined state-space models, - filterapplies all predictors to each response series. However, each response series has its own set of regression coefficients.
- The diffuse Kalman filter requires presample data. If missing observations begin the time series, then the diffuse Kalman filter must gather enough nonmissing observations to initialize the diffuse states. 
- For diffuse state-space models, - filterusually switches from the diffuse Kalman filter to the standard Kalman filter when the number of cumulative observations and the number of diffuse states are equal. However, if a diffuse state-space model has identifiability issues (e.g., the model is too complex to fit to the data), then- filtermight require more observations to initialize the diffuse states. In extreme cases,- filterrequires the entire sample.
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



