The SVM class
(PECL svm >= 0.1.0)
はじめに
クラス概要
定義済み定数
SVM Constants
SVM::C_SVC
-
The basic C_SVC SVM type. The default, and a good starting point
SVM::NU_SVC
-
The NU_SVC type uses a different, more flexible, error weighting
SVM::ONE_CLASS
-
One class SVM type. Train just on a single class, using outliers as negative examples
SVM::EPSILON_SVR
-
A SVM type for regression (predicting a value rather than just a class)
SVM::NU_SVR
-
A NU style SVM regression type
SVM::KERNEL_LINEAR
-
A very simple kernel, can work well on large document classification problems
SVM::KERNEL_POLY
-
A polynomial kernel
SVM::KERNEL_RBF
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The common Gaussian RBD kernel. Handles non-linear problems well and is a good default for classification
SVM::KERNEL_SIGMOID
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A kernel based on the sigmoid function. Using this makes the SVM very similar to a two layer sigmoid based neural network
SVM::KERNEL_PRECOMPUTED
-
A precomputed kernel - currently unsupported.
SVM::OPT_TYPE
-
The options key for the SVM type
SVM::OPT_KERNEL_TYPE
-
The options key for the kernel type
SVM::OPT_DEGREE
SVM::OPT_SHRINKING
-
Training parameter, boolean, for whether to use the shrinking heuristics
SVM::OPT_PROBABILITY
-
Training parameter, boolean, for whether to collect and use probability estimates
SVM::OPT_GAMMA
-
Algorithm parameter for Poly, RBF and Sigmoid kernel types.
SVM::OPT_NU
-
The option key for the nu parameter, only used in the NU_ SVM types
SVM::OPT_EPS
-
The option key for the Epsilon parameter, used in epsilon regression
SVM::OPT_P
-
Training parameter used by Episilon SVR regression
SVM::OPT_COEF_ZERO
-
Algorithm parameter for poly and sigmoid kernels
SVM::OPT_C
-
The option for the cost parameter that controls tradeoff between errors and generality - effectively the penalty for misclassifying training examples.
SVM::OPT_CACHE_SIZE
-
Memory cache size, in MB
目次
- SVM::__construct — SVM オブジェクトを新規構築
- SVM::crossvalidate — Test training params on subsets of the training data
- SVM::getOptions — 現在の訓練パラメータを返す
- SVM::setOptions — 訓練パラメータを設定
- SVM::train — Create a SVMModel based on training data