Iopt
- class pyoptex.doe.fixed_structure.metric.Iopt(n=10000, cov=None, complete=True)[source]
The I-optimality criterion. Computes the average (average) prediction variance if multiple Vinv are provided.
Attributes
- covfunc(Y, X)
A function computing the covariate parameters and potential extra random effects.
- momentsnp.array(2d)
The moments matrix.
- samplesnp.array(2d)
The covariate expanded samples for the moments matrix.
- nint
The number of samples.
- __init__(n=10000, cov=None, complete=True)[source]
Creates the metric
Parameters
- nint
The number of samples to compute the moments matrix.
- covfunc(Y, X)
The covariance function
- completebool
Whether to only use the coordinates or completely randomly initialize the samples to generate the moments matrix.
Methods
Iopt.call(Y, X, params)Computes the I-optimality criterion.
Iopt.init(Y, X, params)Initializes the metric for each random initialization of the coordinate-exchange algorithm.
Iopt.preinit(params)Pre-initializes the metric