NORGES TEKNISK-NATURVITENSKAPELIGE UNIVERSITET Parameter Estimation in High Dimensional Gaussian Distributions

نویسندگان

  • Erlend Aune
  • Daniel Simpson
  • Jo Eidsvik
چکیده

In order to compute the log-likelihood for high dimensional Gaussian models, it is necessary to compute the determinant of the large, sparse, symmetric positive definite precision matrix. Traditional methods for evaluating the log-likelihood, which are typically based on Choleksy factorisations, are not feasible for very large models due to the massive memory requirements. We present a novel approach for evaluating such likelihoods that only requires the computation of matrix-vector products. In this approach we utilise matrix functions, Krylov subspaces, and probing vectors to construct an iterative numerical method for computing the log-likelihood.

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تاریخ انتشار 2012