2,732 research outputs found
Missing observation analysis for matrix-variate time series data
Bayesian inference is developed for matrix-variate dynamic linear models (MV-DLMs), in order to allow missing observation analysis, of any sub-vector or sub-matrix of the observation time series matrix. We propose modifications of the inverted Wishart and matrix t distributions, replacing the scalar degrees of freedom by a diagonal matrix of degrees of freedom. The MV-DLM is then re-defined and modifications of the updating algorithm for missing observations are suggested
A partial solution of the isoperimetric problem for the Heisenberg group
We provide a partial solution to the isoperimetric problem in the Heisenberg
group.Comment: 32 pages, 1 figur
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