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MixtureModel.h
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30 #ifndef _MIXTUREMODEL_H__
31 #define _MIXTUREMODEL_H__
32 
33 #include <shogun/lib/config.h>
35 
36 namespace shogun
37 {
38 
45 {
46  public:
47  /* default constructor */
48  CMixtureModel();
49 
57 
58  /* destructor */
60 
62  virtual const char* get_name() const { return "MixtureModel"; }
63 
69  bool train(CFeatures* data=NULL);
70 
75  int32_t get_num_model_parameters() { return 1; }
76 
81  float64_t get_log_model_parameter(int32_t num_param=1);
82 
89  virtual float64_t get_log_derivative(int32_t num_param, int32_t num_example);
90 
96  virtual float64_t get_log_likelihood_example(int32_t num_example);
97 
103 
108  void set_weights(SGVector<float64_t> weights);
109 
115 
120  void set_components(CDynamicObjectArray* components);
121 
126  index_t get_num_components() const;
127 
133  CDistribution* get_component(index_t index) const;
134 
139  void set_max_iters(int32_t max_iters);
140 
145  int32_t get_max_iters() const;
146 
152 
158 
164 
171 
172  private:
174  void init();
175 
176  private:
178  CDynamicObjectArray* m_components;
179 
181  SGVector<float64_t> m_weights;
182 
184  int32_t m_max_iters;
185 
187  float64_t m_conv_tol;
188 };
189 }
190 #endif /* _MIXTUREMODEL_H__ */
SGVector< float64_t > cluster(SGVector< float64_t > point)
int32_t index_t
Definition: common.h:62
void set_convergence_tolerance(float64_t epsilon)
bool train(CFeatures *data=NULL)
Base class Distribution from which all methods implementing a distribution are derived.
Definition: Distribution.h:44
virtual float64_t get_log_derivative(int32_t num_param, int32_t num_example)
virtual const char * get_name() const
Definition: MixtureModel.h:62
static const float64_t epsilon
Definition: libbmrm.cpp:25
virtual float64_t get_log_likelihood_example(int32_t num_example)
double float64_t
Definition: common.h:50
int32_t get_num_model_parameters()
Definition: MixtureModel.h:75
index_t get_num_components() const
Dynamic array class for CSGObject pointers that creates an array that can be used like a list or an a...
CDistribution * get_component(index_t index) const
SGVector< float64_t > sample()
all of classes and functions are contained in the shogun namespace
Definition: class_list.h:18
int32_t get_max_iters() const
void set_max_iters(int32_t max_iters)
The class Features is the base class of all feature objects.
Definition: Features.h:68
CDynamicObjectArray * get_components() const
float64_t get_log_model_parameter(int32_t num_param=1)
float64_t get_convergence_tolerance() const
void set_components(CDynamicObjectArray *components)
SGVector< float64_t > get_weights() const
void set_weights(SGVector< float64_t > weights)
This is the generic class for mixture models. The final distribution is a mixture of various simple d...
Definition: MixtureModel.h:44

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