SSMMATLAB Examples by Subject

  • Víctor Gómez
Part of the Statistics and Computing book series (SCO)


In this chapter, we present several examples of the use of SSMMATLAB to analyze models that can be put into state space form. The examples are classified by subject. All script files and the corresponding data sets are included in SSMMATLAB.


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Authors and Affiliations

  • Víctor Gómez
    • 1
  1. 1.General Directorate of BudgetsMinistry of Finance and Public AdministrationsMadridSpain

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