"sgl-kernel/git@developer.sourcefind.cn:change/sglang.git" did not exist on "ce399e154cb8ab98e046eb332fc90e1187bbc535"
sequence_labeler_ex.cpp 16.4 KB
Newer Older
1
2
3
// The contents of this file are in the public domain. See LICENSE_FOR_EXAMPLE_PROGRAMS.txt
/*

Davis King's avatar
Davis King committed
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
    This is an example illustrating the use of the machine learning
    tools for sequence labeling in the dlib C++ Library.  
    
    The general problem addressed by these tools is the following.  
    Suppose you have a set of sequences of some kind and you want to 
    learn to predict a label for each element of a sequence.  So for 
    example, you might have a set of English sentences where each 
    word is labeled with its part of speech and you want to learn a 
    model which can predict the part of speech for each word in a new 
    sentence.  
    
    Central to these tools is the sequence_labeler object.  It is the
    object which represents the label prediction model. In particular,
    the model used by this object is the following.  Given an input 
    sequence x, predict an output label sequence y such that:
        y == argmax_y dot(weight_vector, PSI(x,y))
    where PSI() is supplied by the user and defines the form of the 
    model.  In this example program we will define it such that we 
    obtain a simple Hidden Markov Model.  However, it's possible to 
    define much more sophisticated models.  You should take a look 
    at the following papers for a few examples:
        - Hidden Markov Support Vector Machines by 
          Y. Altun, I. Tsochantaridis, T. Hofmann
        - Shallow Parsing with Conditional Random Fields by 
          Fei Sha and Fernando Pereira



    In the remainder of this example program we will show how to
    define your own PSI(), as well as how to learn the "weight_vector"
    parameter.  Once you have these two items you will be able to
    use the sequence_labeler to predict the labels of new sequences.
36
37
38
39
40
41
42
43
44
45
46
*/


#include <iostream>
#include "dlib/svm_threaded.h"
#include "dlib/rand.h"

using namespace std;
using namespace dlib;


Davis King's avatar
Davis King committed
47
48
49
50
51
52
53
54
55
/*
    In this example we will be working with a Hidden Markov Model where
    the hidden nodes and observation nodes both take on 3 different states. 
    The task will be to take a sequence of observations and predict the state
    of the corresponding hidden nodes.  Therefore, the hidden nodes correspond
    to the labels in this case.
*/

const unsigned long num_label_states = 3; 
56
57
58
59
60
61
const unsigned long num_sample_states = 3;

// ----------------------------------------------------------------------------------------

class feature_extractor
{
Davis King's avatar
Davis King committed
62
63
64
65
66
67
68
69
    /*
        This object is where you define your PSI().  To ensure that the argmax_y
        remains a tractable problem, the PSI(x,y) vector is actually a sum of vectors, 
        each derived from the entire input sequence x but only part of the label
        sequence y.  This allows the argmax_y to be efficiently solved using the 
        well known Viterbi algorithm.  
    */

70
public:
Davis King's avatar
Davis King committed
71
72
    // This defines the type used to represent the elements of an observed 
    // sequence.  You can use any type here.  
73
74
75
    typedef unsigned long sample_type; 

    unsigned long num_features() const
Davis King's avatar
Davis King committed
76
77
78
79
    /*!
        ensures
            - returns the dimensionality of the PSI() feature vector.  
    !*/
80
    {
Davis King's avatar
Davis King committed
81
82
83
        // Recall that we are defining a HMM in this example program.  So in this case
        // the PSI() vector should have the same dimensionality as the number of parameters
        // in the HMM.  
84
85
86
87
        return num_label_states*num_label_states + num_label_states*num_sample_states;
    }

    unsigned long order() const 
Davis King's avatar
Davis King committed
88
89
90
91
92
93
94
95
96
97
    /*!
        ensures
            - This object represents a Markov model on the output labels.
              This parameter defines the order of the model.  That is, this 
              value controls how many previous label values get to be taken 
              into consideration when performing feature extraction for a
              particular element of the input sequence.  Note that the runtime
              of the algorithm is exponential in the order.  So don't make order
              very large.
    !*/
98
    { 
Davis King's avatar
Davis King committed
99
100
        // In this case we are using a HMM model that only looks at the 
        // previous label. 
101
102
103
104
        return 1; 
    }

    unsigned long num_labels() const 
Davis King's avatar
Davis King committed
105
106
107
108
    /*!
        ensures
            - returns the number of possible output labels.
    !*/
109
110
111
112
113
114
115
116
117
118
119
    { 
        return num_label_states; 
    }

    template <typename feature_setter, typename EXP>
    void get_features (
        feature_setter& set_feature,
        const std::vector<sample_type>& x,
        const matrix_exp<EXP>& y,
        unsigned long position
    ) const
Davis King's avatar
Davis King committed
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
    /*!
        requires
            - EXP::type == unsigned long
              (i.e. y contains unsigned longs)
            - position < x.size()
            - y.size() == min(position, order) + 1
            - is_vector(y) == true
            - max(y) < num_labels() 
            - set_feature is a function object which allows expressions of the form:
                - set_features((unsigned long)feature_index, (double)feature_value);
                - set_features((unsigned long)feature_index);
        ensures
            - for all valid i:
                - interprets y(i) as the label corresponding to x[position-i]
            - This function computes the part of PSI() corresponding to the x[position]
              element of the input sequence.  Moreover, this part of PSI() is returned as 
              a sparse vector by invoking set_feature().  For example, to set the feature 
              with an index of 55 to the value of 1 this method would call:
                set_feature(55);
              Or equivalently:
                set_feature(55,1);
              Therefore, the first argument to set_feature is the index of the feature 
              to be set while the second argument is the value the feature should take.
            - This function only calls set_feature() once for each feature index.
            - This function only calls set_feature() with feature_index values < num_features()
    !*/
146
    {
Davis King's avatar
Davis King committed
147
148
149
150
151
        // Again, the features below only define a simple HMM.  But in general, you can 
        // perform a wide variety of sophisticated feature extraction here.

        // Pull out an indicator feature for the type of transition between the
        // previous label and the current label.
152
153
154
        if (y.size() > 1)
            set_feature(y(1)*num_label_states + y(0));

Davis King's avatar
Davis King committed
155
156
        // Pull out an indicator feature for the type of observed node given 
        // the current label.
157
158
159
160
161
        set_feature(num_label_states*num_label_states +
                    y(0)*num_sample_states + x[position]);
    }
};

Davis King's avatar
Davis King committed
162
163
164
165
// We need to define serialize() and deserialize() for our feature extractor if we want 
// to be able to serialize and deserialize our learned models.  In this case the 
// implementation is empty since our feature_extractor doesn't have any state.  But you 
// might define more complex feature extractors which have state that needs to be saved.
Davis King's avatar
Davis King committed
166
167
168
169
170
171
172
void serialize(const feature_extractor&, std::ostream&) {}
void deserialize(feature_extractor&, std::istream&) {}

// ----------------------------------------------------------------------------------------

void make_dataset (
    const matrix<double>& transition_probabilities,
Davis King's avatar
Davis King committed
173
    const matrix<double>& emission_probabilities,
Davis King's avatar
Davis King committed
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
    std::vector<std::vector<unsigned long> >& samples,
    std::vector<std::vector<unsigned long> >& labels,
    unsigned long dataset_size
);
/*!
    requires
        - transition_probabilities.nr() == transition_probabilities.nc()
        - transition_probabilities.nr() == emission_probabilities.nr()
        - The rows of transition_probabilities and emission_probabilities must sum to 1.
          (i.e. sum_cols(transition_probabilities) and sum_cols(emission_probabilities)
          must evaluate to vectors of all 1s.)
    ensures
        - This function randomly samples a bunch of sequences from the HMM defined by 
          transition_probabilities and emission_probabilities. 
        - The HMM is defined by:
Davis King's avatar
Davis King committed
189
190
191
192
            - The probability of transitioning from hidden state H1 to H2 
              is given by transition_probabilities(H1,H2).
            - The probability of a hidden state H producing an observed state
              O is given by emission_probabilities(H,O).
Davis King's avatar
Davis King committed
193
194
195
196
197
198
199
        - #samples.size() == labels.size() == dataset_size
        - for all valid i:
            - #labels[i] is a randomly sampled sequence of hidden states from the
              given HMM.  #samples[i] is its corresponding randomly sampled sequence
              of observed states.
!*/

200
201
// ----------------------------------------------------------------------------------------

Davis King's avatar
Davis King committed
202
203
int main()
{
Davis King's avatar
Davis King committed
204
205
206
207
208
209
    // We need a dataset to test the machine learning algorithms.  So we are going to 
    // define a HMM based on the following two matrices and then randomly sample a
    // set of data from it.  Then we will see if the machine learning method can
    // recover the HMM from the training data. 


Davis King's avatar
Davis King committed
210
211
212
213
    matrix<double> transition_probabilities(num_label_states, num_label_states);
    transition_probabilities = 0.05, 0.90, 0.05,
                               0.05, 0.05, 0.90,
                               0.90, 0.05, 0.05;
Davis King's avatar
Davis King committed
214
215
216
217
218
219
220
221

    matrix<double> emission_probabilities(num_label_states,num_sample_states);
    emission_probabilities = 0.5, 0.5, 0.0,
                             0.0, 0.5, 0.5,
                             0.5, 0.0, 0.5;

    std::vector<std::vector<unsigned long> > samples;
    std::vector<std::vector<unsigned long> > labels;
Davis King's avatar
Davis King committed
222
    // sample 1000 labeled sequences from the HMM.
Davis King's avatar
Davis King committed
223
    make_dataset(transition_probabilities,emission_probabilities, 
Davis King's avatar
Davis King committed
224
225
226
227
228
229
230
231
232
233
                 samples, labels, 1000);

    // print out some of the randomly sampled sequences
    for (int i = 0; i < 10; ++i)
    {
        cout << "hidden states:   " << trans(vector_to_matrix(labels[i]));
        cout << "observed states: " << trans(vector_to_matrix(samples[i]));
        cout << "******************************" << endl;
    }

Davis King's avatar
Davis King committed
234
235
    // Now we use the structural_sequence_labeling_trainer to learn our
    // prediction model based on just the samples and labels.
Davis King's avatar
Davis King committed
236
    structural_sequence_labeling_trainer<feature_extractor> trainer;
Davis King's avatar
Davis King committed
237
238
239
    // This is the common SVM C parameter.  Larger values encourage the
    // trainer to attempt to fit the data exactly but might overfit. 
    // In general, you determine this parameter by cross-validation.
Davis King's avatar
Davis King committed
240
    trainer.set_c(4);
Davis King's avatar
Davis King committed
241
242
    // This trainer can use multiple CPU cores to speed up the training.  
    // So set this to the number of available CPU cores. 
Davis King's avatar
Davis King committed
243
244
245
246
247
    trainer.set_num_threads(4);


    // Learn to do sequence labeling from the dataset
    sequence_labeler<feature_extractor> labeler = trainer.train(samples, labels);
Davis King's avatar
Davis King committed
248

Davis King's avatar
Davis King committed
249
250
    // Test the learned labeler on one of the training samples.  In this
    // case it will give the correct sequence of labels.
Davis King's avatar
Davis King committed
251
252
253
254
255
    std::vector<unsigned long> predicted_labels = labeler(samples[0]);
    cout << "true hidden states:      "<< trans(vector_to_matrix(labels[0]));
    cout << "predicted hidden states: "<< trans(vector_to_matrix(predicted_labels));


Davis King's avatar
Davis King committed
256

Davis King's avatar
Davis King committed
257
258
259
260
261
    // We can also do cross-validation.  The confusion_matrix is defined as:
    //  - confusion_matrix(T,P) == the number of times a sequence element with label T 
    //    was predicted to have a label of P.
    // So if all predictions are perfect then only diagonal elements of this matrix will
    // be non-zero. 
Davis King's avatar
Davis King committed
262
    matrix<double> confusion_matrix;
Davis King's avatar
Davis King committed
263
264
265
266
267
    confusion_matrix = cross_validate_sequence_labeler(trainer, samples, labels, 4);
    cout << "\ncross-validation: " << endl;
    cout << confusion_matrix;
    cout << "label accuracy: "<< sum(diag(confusion_matrix))/sum(confusion_matrix) << endl;

Davis King's avatar
Davis King committed
268
269
270
271
    // In this case, the label accuracy is about 88%.  At this point, we want to know if
    // the machine learning method was able to recover the HMM model from the data.  So
    // to test this, we can load the true HMM model into another sequence_labeler and 
    // test it out on the data and compare the results.  
Davis King's avatar
Davis King committed
272
273
274

    matrix<double,0,1> true_hmm_model_weights = log(join_cols(reshape_to_column_vector(transition_probabilities),
                                                              reshape_to_column_vector(emission_probabilities)));
Davis King's avatar
Davis King committed
275
276
277
    // With this model, labeler_true will predict the most probable set of labels
    // given an input sequence.  That is, it will predict using the equation:
    //    y == argmax_y dot(true_hmm_model_weights, PSI(x,y))
278
    sequence_labeler<feature_extractor> labeler_true(true_hmm_model_weights); 
Davis King's avatar
Davis King committed
279
280
281
282
283
284

    confusion_matrix = test_sequence_labeler(labeler_true, samples, labels);
    cout << "\nTrue HMM model: " << endl;
    cout << confusion_matrix;
    cout << "label accuracy: "<< sum(diag(confusion_matrix))/sum(confusion_matrix) << endl;

Davis King's avatar
Davis King committed
285
    // Happily, we observe that the true model also obtains a label accuracy of 88%.
Davis King's avatar
Davis King committed
286
287
288
289
290
291
292
293
294
295
296
297
298
299
300
301
302
303
304
305
306






    // Finally, the labeler can be serialized to disk just like most dlib objects.
    ofstream fout("labeler.dat", ios::binary);
    serialize(labeler, fout);
    fout.close();

    // recall from disk
    ifstream fin("labeler.dat", ios::binary);
    deserialize(labeler, fin);
}

// ----------------------------------------------------------------------------------------
// ----------------------------------------------------------------------------------------
//              Code for creating a bunch of random samples from our HMM.
// ----------------------------------------------------------------------------------------
// ----------------------------------------------------------------------------------------
307
308
309
310
311
312
313
314
315

void sample_hmm (
    dlib::rand& rnd,
    const matrix<double>& transition_probabilities,
    const matrix<double>& emission_probabilities,
    unsigned long previous_label,
    unsigned long& next_label,
    unsigned long& next_sample
)
Davis King's avatar
Davis King committed
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
331
332
333
/*!
    requires
        - previous_label < transition_probabilities.nr()
        - transition_probabilities.nr() == transition_probabilities.nc()
        - transition_probabilities.nr() == emission_probabilities.nr()
        - The rows of transition_probabilities and emission_probabilities must sum to 1.
          (i.e. sum_cols(transition_probabilities) and sum_cols(emission_probabilities)
          must evaluate to vectors of all 1s.)
    ensures
        - This function randomly samples the HMM defined by transition_probabilities
          and emission_probabilities assuming that the previous hidden state
          was previous_label. 
        - The HMM is defined by:
            - P(next_label |previous_label) == transition_probabilities(previous_label, next_label)
            - P(next_sample|next_label)     == emission_probabilities  (next_label,     next_sample)
        - #next_label == the sampled value of the hidden state
        - #next_sample == the sampled value of the observed state
!*/
334
{
Davis King's avatar
Davis King committed
335
    // sample next_label
336
337
338
339
340
341
342
    double p = rnd.get_random_double();
    for (long c = 0; p >= 0 && c < transition_probabilities.nc(); ++c)
    {
        next_label = c;
        p -= transition_probabilities(previous_label, c);
    }

Davis King's avatar
Davis King committed
343
    // now sample next_sample
344
345
346
347
348
349
350
351
352
353
354
355
    p = rnd.get_random_double();
    for (long c = 0; p >= 0 && c < emission_probabilities.nc(); ++c)
    {
        next_sample = c;
        p -= emission_probabilities(next_label, c);
    }
}

// ----------------------------------------------------------------------------------------

void make_dataset (
    const matrix<double>& transition_probabilities,
Davis King's avatar
Davis King committed
356
    const matrix<double>& emission_probabilities,
357
358
359
360
361
362
363
364
365
366
367
368
369
    std::vector<std::vector<unsigned long> >& samples,
    std::vector<std::vector<unsigned long> >& labels,
    unsigned long dataset_size
)
{
    samples.clear();
    labels.clear();

    dlib::rand rnd;

    // now randomly sample some labeled sequences from our Hidden Markov Model
    for (unsigned long iter = 0; iter < dataset_size; ++iter)
    {
Davis King's avatar
Davis King committed
370
371
372
        const unsigned long sequence_size = rnd.get_random_32bit_number()%20+3;
        std::vector<unsigned long> sample(sequence_size);
        std::vector<unsigned long> label(sequence_size);
373
374
375
376
377
378
379
380
381
382
383
384
385
386
387
388
389
390
391
392
393

        unsigned long previous_label = rnd.get_random_32bit_number()%num_label_states;
        for (unsigned long i = 0; i < sample.size(); ++i)
        {
            unsigned long next_label, next_sample;
            sample_hmm(rnd, transition_probabilities, emission_probabilities, 
                       previous_label, next_label, next_sample);

            label[i] = next_label;
            sample[i] = next_sample;

            previous_label = next_label;
        }

        samples.push_back(sample);
        labels.push_back(label);
    }
}

// ----------------------------------------------------------------------------------------