We present techniques for effective Gaussian process (GP) modelling of multiple short time series. These problems are common when applying GP models independently to each gene in a gene expression time series data set. Such sets typically contain very few time points. Naive application of common GP modelling techniques can lead to severe over-fitting or under-fitting in a significant fraction of the fitted models, depending on the details of the data set. We propose avoiding over-fitting by constraining the GP length-scale to values that focus most of the energy spectrum to frequencies below the Nyquist frequency corresponding to the sampling frequency in the data set. Under-fitting can be avoided by more informative priors on observation n...
In this paper, the expectation maximization (EM) algorithm is applied for modeling the gene regulato...
Transcriptome-wide time series expression profiling is used to characterize the cellular response to...
modelling of gene expression time series across irregularly sampled replicates and clusters James He...
During the last decade, high-throughput sequencing (HTS) has become the mainstream technique for sim...
Publisher Copyright: © 2022High-throughput technologies produce gene expression time-series data tha...
Background: The analysis of gene expression from time series underpins many biological studies. Two ...
Background: Time course data from microarrays and high-throughput sequencing experiments require sim...
Regression using Gaussian process models is applied to time-series data analysis. To extract from th...
Background: Time course data from microarrays and high-throughput sequencing experiments require sim...
Recently, a Bayesian network model for inferring non-stationary regulatory processes from gene expre...
Description The gprege package implements the methodology described in Kalaitzis & Lawrence (201...
International audienceGaussian process regression (GPR) has been extensively used for modelling and ...
In this paper, the expectation maximization (EM) algorithm is applied for modeling the gene regulato...
Transcriptome-wide time series expression profiling is used to characterize the cellular response to...
modelling of gene expression time series across irregularly sampled replicates and clusters James He...
During the last decade, high-throughput sequencing (HTS) has become the mainstream technique for sim...
Publisher Copyright: © 2022High-throughput technologies produce gene expression time-series data tha...
Background: The analysis of gene expression from time series underpins many biological studies. Two ...
Background: Time course data from microarrays and high-throughput sequencing experiments require sim...
Regression using Gaussian process models is applied to time-series data analysis. To extract from th...
Background: Time course data from microarrays and high-throughput sequencing experiments require sim...
Recently, a Bayesian network model for inferring non-stationary regulatory processes from gene expre...
Description The gprege package implements the methodology described in Kalaitzis & Lawrence (201...
International audienceGaussian process regression (GPR) has been extensively used for modelling and ...
In this paper, the expectation maximization (EM) algorithm is applied for modeling the gene regulato...
Transcriptome-wide time series expression profiling is used to characterize the cellular response to...
modelling of gene expression time series across irregularly sampled replicates and clusters James He...