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KMeans.h
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1 /*
2  * This program is free software; you can redistribute it and/or modify
3  * it under the terms of the GNU General Public License as published by
4  * the Free Software Foundation; either version 3 of the License, or
5  * (at your option) any later version.
6  *
7  * Written (W) 1999-2008 Gunnar Raetsch
8  * Written (W) 2007-2009 Soeren Sonnenburg
9  * Copyright (C) 1999-2009 Fraunhofer Institute FIRST and Max-Planck-Society
10  */
11 
12 #ifndef _KMEANS_H__
13 #define _KMEANS_H__
14 
15 #include <shogun/lib/config.h>
16 
17 #include <shogun/lib/common.h>
18 #include <shogun/io/SGIO.h>
22 
23 namespace shogun
24 {
25 class CDistanceMachine;
26 
29 {
32 
33  /* Standard KMeans with Lloyds algorithm */
35 };
36 
57 class CKMeans : public CDistanceMachine
58 {
59  public:
61  CKMeans();
62 
69  CKMeans(int32_t k, CDistance* d, EKMeansMethod f);
70 
78  CKMeans(int32_t k, CDistance* d, bool kmeanspp=false, EKMeansMethod f=KMM_LLOYD);
79 
86  CKMeans(int32_t k_i, CDistance* d_i, SGMatrix<float64_t> centers_i, EKMeansMethod f=KMM_LLOYD);
87  virtual ~CKMeans();
88 
89 
91 
92 
97 
103  virtual bool load(FILE* srcfile);
104 
110  virtual bool save(FILE* dstfile);
111 
116  void set_k(int32_t p_k);
117 
122  int32_t get_k();
123 
128  void set_use_kmeanspp(bool kmpp);
129 
134  bool get_use_kmeanspp() const;
135 
140  void set_fixed_centers(bool fixed);
141 
146  bool get_fixed_centers();
147 
152  void set_max_iter(int32_t iter);
153 
159 
165 
171 
176  int32_t get_dimensions();
177 
179  virtual const char* get_name() const { return "KMeans"; }
180 
185  virtual void set_initial_centers(SGMatrix<float64_t> centers);
186 
192 
198 
203  void set_mbKMeans_batch_size(int32_t b);
204 
209  int32_t get_mbKMeans_batch_size() const;
210 
215  void set_mbKMeans_iter(int32_t t);
216 
221  int32_t get_mbKMeans_iter() const;
222 
228  void set_mbKMeans_params(int32_t b, int32_t t);
229 
230  private:
239  virtual bool train_machine(CFeatures* data=NULL);
240 
242  virtual void store_model_features();
243 
244  virtual bool train_require_labels() const { return false; }
245 
250  SGMatrix<float64_t> kmeanspp();
251  void init();
252 
257  void set_random_centers(SGVector<float64_t> weights_set, SGVector<int32_t> ClList, int32_t XSize);
258  void set_initial_centers(SGVector<float64_t> weights_set,
259  SGVector<int32_t> ClList, int32_t XSize);
260  void compute_cluster_variances();
261 
262  private:
264  int32_t max_iter;
265 
267  bool fixed_centers;
268 
270  int32_t k;
271 
273  int32_t dimensions;
274 
276  SGVector<float64_t> R;
277 
279  SGMatrix<float64_t> mus_initial;
280 
282  bool use_kmeanspp;
283 
285  int32_t batch_size;
286 
288  int32_t minib_iter;
289 
291  SGMatrix<float64_t> mus;
292 
294  EKMeansMethod train_method;
295 };
296 }
297 #endif
298 
int32_t get_mbKMeans_batch_size() const
Definition: KMeans.cpp:341
virtual const char * get_name() const
Definition: KMeans.h:179
EMachineType
Definition: Machine.h:33
int32_t get_mbKMeans_iter() const
Definition: KMeans.cpp:352
virtual bool save(FILE *dstfile)
Definition: KMeans.cpp:286
void set_mbKMeans_params(int32_t b, int32_t t)
Definition: KMeans.cpp:357
Class Distance, a base class for all the distances used in the Shogun toolbox.
Definition: Distance.h:81
void set_mbKMeans_batch_size(int32_t b)
Definition: KMeans.cpp:335
void set_mbKMeans_iter(int32_t t)
Definition: KMeans.cpp:346
EKMeansMethod
Definition: KMeans.h:28
void set_use_kmeanspp(bool kmpp)
Definition: KMeans.cpp:293
void set_k(int32_t p_k)
Definition: KMeans.cpp:303
int32_t get_dimensions()
Definition: KMeans.cpp:382
A generic DistanceMachine interface.
virtual ~CKMeans()
Definition: KMeans.cpp:64
bool get_use_kmeanspp() const
Definition: KMeans.cpp:298
SGVector< float64_t > get_radiuses()
Definition: KMeans.cpp:365
KMeans clustering, partitions the data into k (a-priori specified) clusters.
Definition: KMeans.h:57
#define MACHINE_PROBLEM_TYPE(PT)
Definition: Machine.h:120
float64_t get_max_iter()
Definition: KMeans.cpp:320
double float64_t
Definition: common.h:50
virtual bool load(FILE *srcfile)
Definition: KMeans.cpp:279
bool get_fixed_centers()
Definition: KMeans.cpp:392
void set_max_iter(int32_t iter)
Definition: KMeans.cpp:314
void set_fixed_centers(bool fixed)
Definition: KMeans.cpp:387
all of classes and functions are contained in the shogun namespace
Definition: class_list.h:18
virtual void set_initial_centers(SGMatrix< float64_t > centers)
Definition: KMeans.cpp:68
virtual EMachineType get_classifier_type()
Definition: KMeans.h:96
The class Features is the base class of all feature objects.
Definition: Features.h:68
void set_train_method(EKMeansMethod f)
Definition: KMeans.cpp:325
EKMeansMethod get_train_method() const
Definition: KMeans.cpp:330
int32_t get_k()
Definition: KMeans.cpp:309
SGMatrix< float64_t > get_cluster_centers()
Definition: KMeans.cpp:370

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