Documentation ¶
Index ¶
Constants ¶
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Variables ¶
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var ( OPTINP = false MINOPT = 0 ALG = "lbfgs" PARALLEL = false ITERS = 1000 // major iterations MINITERS = 10 // minimum iterations to accept in lbfgs THRESHOLD = 1e-6 // gradient threshold RATE = 0.01 // learning rate (for Adam) NTASKS = 0 )
Functions ¶
func Evaluate ¶
Evaluate evaluates Gaussian process on CSV data. One step out of sample forecast is recorded for each time point, along with the hyperparameters. This function is called by all case studies in the tutorial. For optimization, LBFGS from the gonum library (http://gonum.org) is used for faster execution. In general though, LBFGS is a bit of hit-or-miss, failing to optimize occasionally, so in real applications a different optimization/inference algorithm may be a better choice.
Types ¶
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