Class: SVMKit::LinearModel::SVC
- Inherits:
-
Object
- Object
- SVMKit::LinearModel::SVC
- Includes:
- Base::BaseEstimator, Base::Classifier
- Defined in:
- lib/svmkit/linear_model/svc.rb
Overview
SVC is a class that implements Support Vector Classifier with mini-batch stochastic gradient descent optimization. For multiclass classification problem, it uses one-vs-the-rest strategy.
Reference
-
Shalev-Shwartz and Y. Singer, “Pegasos: Primal Estimated sub-GrAdient SOlver for SVM,” Proc. ICML’07, pp. 807–814, 2007.
-
Instance Attribute Summary collapse
-
#bias_term ⇒ Numo::DFloat
readonly
Return the bias term (a.k.a. intercept) for SVC.
-
#classes ⇒ Numo::Int32
readonly
Return the class labels.
-
#rng ⇒ Random
readonly
Return the random generator for performing random sampling.
-
#weight_vec ⇒ Numo::DFloat
readonly
Return the weight vector for SVC.
Attributes included from Base::BaseEstimator
Instance Method Summary collapse
-
#decision_function(x) ⇒ Numo::DFloat
Calculate confidence scores for samples.
-
#fit(x, y) ⇒ SVC
Fit the model with given training data.
-
#initialize(reg_param: 1.0, fit_bias: false, bias_scale: 1.0, max_iter: 1000, batch_size: 20, probability: false, optimizer: nil, random_seed: nil) ⇒ SVC
constructor
Create a new classifier with Support Vector Machine by the SGD optimization.
-
#marshal_dump ⇒ Hash
Dump marshal data.
-
#marshal_load(obj) ⇒ nil
Load marshal data.
-
#predict(x) ⇒ Numo::Int32
Predict class labels for samples.
-
#predict_proba(x) ⇒ Numo::DFloat
Predict probability for samples.
Methods included from Base::Classifier
Constructor Details
#initialize(reg_param: 1.0, fit_bias: false, bias_scale: 1.0, max_iter: 1000, batch_size: 20, probability: false, optimizer: nil, random_seed: nil) ⇒ SVC
Create a new classifier with Support Vector Machine by the SGD optimization.
56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 |
# File 'lib/svmkit/linear_model/svc.rb', line 56 def initialize(reg_param: 1.0, fit_bias: false, bias_scale: 1.0, max_iter: 1000, batch_size: 20, probability: false, optimizer: nil, random_seed: nil) check_params_float(reg_param: reg_param, bias_scale: bias_scale) check_params_integer(max_iter: max_iter, batch_size: batch_size) check_params_boolean(fit_bias: fit_bias, probability: probability) check_params_type_or_nil(Integer, random_seed: random_seed) check_params_positive(reg_param: reg_param, bias_scale: bias_scale, max_iter: max_iter, batch_size: batch_size) @params = {} @params[:reg_param] = reg_param @params[:fit_bias] = fit_bias @params[:bias_scale] = bias_scale @params[:max_iter] = max_iter @params[:batch_size] = batch_size @params[:probability] = probability @params[:optimizer] = optimizer @params[:optimizer] ||= Optimizer::Nadam.new @params[:random_seed] = random_seed @params[:random_seed] ||= srand @weight_vec = nil @bias_term = nil @prob_param = nil @classes = nil @rng = Random.new(@params[:random_seed]) end |
Instance Attribute Details
#bias_term ⇒ Numo::DFloat (readonly)
Return the bias term (a.k.a. intercept) for SVC.
35 36 37 |
# File 'lib/svmkit/linear_model/svc.rb', line 35 def bias_term @bias_term end |
#classes ⇒ Numo::Int32 (readonly)
Return the class labels.
39 40 41 |
# File 'lib/svmkit/linear_model/svc.rb', line 39 def classes @classes end |
#rng ⇒ Random (readonly)
Return the random generator for performing random sampling.
43 44 45 |
# File 'lib/svmkit/linear_model/svc.rb', line 43 def rng @rng end |
#weight_vec ⇒ Numo::DFloat (readonly)
Return the weight vector for SVC.
31 32 33 |
# File 'lib/svmkit/linear_model/svc.rb', line 31 def weight_vec @weight_vec end |
Instance Method Details
#decision_function(x) ⇒ Numo::DFloat
Calculate confidence scores for samples.
128 129 130 131 |
# File 'lib/svmkit/linear_model/svc.rb', line 128 def decision_function(x) check_sample_array(x) x.dot(@weight_vec.transpose) + @bias_term end |
#fit(x, y) ⇒ SVC
Fit the model with given training data.
86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 |
# File 'lib/svmkit/linear_model/svc.rb', line 86 def fit(x, y) check_sample_array(x) check_label_array(y) check_sample_label_size(x, y) @classes = Numo::Int32[*y.to_a.uniq.sort] n_classes = @classes.size _n_samples, n_features = x.shape if n_classes > 2 @weight_vec = Numo::DFloat.zeros(n_classes, n_features) @bias_term = Numo::DFloat.zeros(n_classes) @prob_param = Numo::DFloat.zeros(n_classes, 2) n_classes.times do |n| bin_y = Numo::Int32.cast(y.eq(@classes[n])) * 2 - 1 weight, bias = binary_fit(x, bin_y) @weight_vec[n, true] = weight @bias_term[n] = bias @prob_param[n, true] = if @params[:probability] SVMKit::ProbabilisticOutput.fit_sigmoid(x.dot(weight.transpose) + bias, bin_y) else Numo::DFloat[1, 0] end end else negative_label = y.to_a.uniq.min bin_y = Numo::Int32.cast(y.ne(negative_label)) * 2 - 1 @weight_vec, @bias_term = binary_fit(x, bin_y) @prob_param = if @params[:probability] SVMKit::ProbabilisticOutput.fit_sigmoid(x.dot(@weight_vec.transpose) + @bias_term, bin_y) else Numo::DFloat[1, 0] end end self end |
#marshal_dump ⇒ Hash
Dump marshal data.
168 169 170 171 172 173 174 175 |
# File 'lib/svmkit/linear_model/svc.rb', line 168 def marshal_dump { params: @params, weight_vec: @weight_vec, bias_term: @bias_term, prob_param: @prob_param, classes: @classes, rng: @rng } end |
#marshal_load(obj) ⇒ nil
Load marshal data.
179 180 181 182 183 184 185 186 187 |
# File 'lib/svmkit/linear_model/svc.rb', line 179 def marshal_load(obj) @params = obj[:params] @weight_vec = obj[:weight_vec] @bias_term = obj[:bias_term] @prob_param = obj[:prob_param] @classes = obj[:classes] @rng = obj[:rng] nil end |
#predict(x) ⇒ Numo::Int32
Predict class labels for samples.
137 138 139 140 141 142 143 144 145 |
# File 'lib/svmkit/linear_model/svc.rb', line 137 def predict(x) check_sample_array(x) return Numo::Int32.cast(decision_function(x).ge(0.0)) * 2 - 1 if @classes.size <= 2 n_samples, = x.shape decision_values = decision_function(x) Numo::Int32.asarray(Array.new(n_samples) { |n| @classes[decision_values[n, true].max_index] }) end |
#predict_proba(x) ⇒ Numo::DFloat
Predict probability for samples.
151 152 153 154 155 156 157 158 159 160 161 162 163 164 |
# File 'lib/svmkit/linear_model/svc.rb', line 151 def predict_proba(x) check_sample_array(x) if @classes.size > 2 probs = 1.0 / (Numo::NMath.exp(@prob_param[true, 0] * decision_function(x) + @prob_param[true, 1]) + 1.0) return (probs.transpose / probs.sum(axis: 1)).transpose end n_samples, = x.shape probs = Numo::DFloat.zeros(n_samples, 2) probs[true, 1] = 1.0 / (Numo::NMath.exp(@prob_param[0] * decision_function(x) + @prob_param[1]) + 1.0) probs[true, 0] = 1.0 - probs[true, 1] probs end |