User:Nuri Purswani/Network/References


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Links to useful toolboxes

 * Toolbox from David Wild to implement Beal's method: See VSSM GUI, Section 1.1
 * Matthiew Beal's original code: Variational State Space Models
 * LDST toolbox for Rangel's method