org.apache.spark.ml.param.shared.HasMaxIter Scala Examples
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Example 1
Source File: GaussianProcessParams.scala From spark-gp with Apache License 2.0 | 5 votes |
package org.apache.spark.ml.commons import org.apache.spark.ml.PredictorParams import org.apache.spark.ml.commons.kernel.{Kernel, RBFKernel} import org.apache.spark.ml.param.shared.{HasAggregationDepth, HasMaxIter, HasSeed, HasTol} import org.apache.spark.ml.param.{DoubleParam, IntParam, Param} private[ml] trait GaussianProcessParams extends PredictorParams with HasMaxIter with HasTol with HasAggregationDepth with HasSeed { final val activeSetProvider = new Param[ActiveSetProvider](this, "activeSetProvider", "the class which provides the active set used by Projected Process Approximation") final val kernel = new Param[() => Kernel](this, "kernel", "function of no arguments which returns " + "the kernel of the prior Gaussian Process") final val datasetSizeForExpert = new IntParam(this, "datasetSizeForExpert", "The number of data points fed to each expert. " + "Time and space complexity of training quadratically grows with it.") final val sigma2 = new DoubleParam(this, "sigma2", "The variance of noise in the inputs. The value is added to the diagonal of the " + "kernel Matrix. Also prevents numerical issues associated with inversion " + "of a computationally singular matrix ") final val activeSetSize = new IntParam(this, "activeSetSize", "Number of latent functions to project the process onto. " + "The size of the produced model and prediction complexity " + "linearly depend on this value.") def setActiveSetProvider(value : ActiveSetProvider): this.type = set(activeSetProvider, value) setDefault(activeSetProvider -> RandomActiveSetProvider) def setDatasetSizeForExpert(value: Int): this.type = set(datasetSizeForExpert, value) setDefault(datasetSizeForExpert -> 100) def setMaxIter(value: Int): this.type = set(maxIter, value) setDefault(maxIter -> 100) def setSigma2(value: Double): this.type = set(sigma2, value) setDefault(sigma2 -> 1e-3) def setKernel(value: () => Kernel): this.type = set(kernel, value) setDefault(kernel -> (() => new RBFKernel())) def setTol(value: Double): this.type = set(tol, value) setDefault(tol -> 1E-6) def setActiveSetSize(value: Int): this.type = set(activeSetSize, value) setDefault(activeSetSize -> 100) def setSeed(value: Long): this.type = set(seed, value) }