..

バイオメトリクスと生物統計学ジャーナル

原稿を提出する arrow_forward arrow_forward ..

Bayesian Inference for Sparse VAR(1) Models, with Application to Time Course Microarray Data

Abstract

Guiyuan Lei, Richard J Boys, Colin S Gillespie, Amanda Greenall and Darren J Wilkinson

This paper considers the problem of undertaking fully Bayesian inference for both the parameters and structure of a vector autoregressive model on the basis of time course data in the ``p>> n scenario’’. The autoregressive matrix is assumed to be sparse, but of unknown structure. The resulting algorithm for dynamic Bayesian network inference is shown to be highly effective, and is applied to the problem of dynamic network inference from time course microarray data using a dataset concerned with the transient response of budding yeast to telomere damage.

免責事項: この要約は人工知能ツールを使用して翻訳されており、まだレビューまたは確認されていません

この記事をシェアする

インデックス付き

arrow_upward arrow_upward