Title of article :
Fast algorithms for nonparametric population modeling of large data sets
Author/Authors :
Pillonetto، نويسنده , , Gianluigi and De Nicolao، نويسنده , , Giuseppe and Chierici، نويسنده , , Marco and Cobelli، نويسنده , , Claudio، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Pages :
7
From page :
173
To page :
179
Abstract :
Population models are widely applied in biomedical data analysis since they characterize both the average and individual responses of a population of subjects. In the absence of a reliable mechanistic model, one can resort to the Bayesian nonparametric approach that models the individual curves as Gaussian processes. This paper develops an efficient computational scheme for estimating the average and individual curves from large data sets collected in standardized experiments, i.e. with a fixed sampling schedule. It is shown that the overall scheme exhibits a “client–server” architecture. The server is in charge of handling and processing the collective data base of past experiments. The clients ask the server for the information needed to reconstruct the individual curve in a single new experiment. This architecture allows the clients to take advantage of the overall data set without violating possible privacy and confidentiality constraints and with negligible computational effort.
Keywords :
Nonparametric identification , Glucose metabolism , Bayesian estimation , Estimation theory , Gaussian processes
Journal title :
Automatica
Serial Year :
2009
Journal title :
Automatica
Record number :
1447506
Link To Document :
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