Train and test a ZeitZeiger predictor, calling the necessary functions.
Usage
zeitzeiger(
xTrain,
timeTrain,
xTest,
nKnots = 3,
nTime = 10,
useSpc = TRUE,
sumabsv = 2,
orth = TRUE,
nSpc = 2,
timeRange = seq(0, 1 - 0.01, 0.01)
)
Arguments
- xTrain
Matrix of measurements for training data, observations in rows and features in columns.
- timeTrain
Vector of values of the periodic variable for training observations, where 0 corresponds to the lowest possible value and 1 corresponds to the highest possible value.
- xTest
Matrix of measurements for test data, observations in rows and features in columns.
- nKnots
Number of internal knots to use for the periodic smoothing spline.
- nTime
Number of time-points by which to discretize the time-dependent behavior of each feature. Corresponds to the number of rows in the matri for which the SPCs will be calculated.
- useSpc
Logical indicating whether to use
PMA::SPC()
(default) orbase::svd()
.- sumabsv
L1-constraint on the SPCs, passed to
PMA::SPC()
.- orth
Logical indicating whether to require left singular vectors be orthogonal to each other, passed to
PMA::SPC()
.- nSpc
Vector of the number of SPCs to use for prediction. If
NA
(default),nSpc
will become1:K
, whereK
is the number of SPCs inspcResult
. Each value innSpc
will correspond to one prediction for each test observation. A value of 2 means that the prediction will be based on the first 2 SPCs.- timeRange
Vector of values of the periodic variable at which to calculate likelihood. The time with the highest likelihood is used as the initial value for the MLE optimizer.
Value
- fitResult
Output of
zeitzeigerFit()
- spcResult
Output of
zeitzeigerSpc()
- predResult
Output of
zeitzeigerPredict()