/usr/include/torch/Distribution.h is in libtorch3-dev 3.1-2.1.
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//
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#ifndef DISTRIBUTION_INC
#define DISTRIBUTION_INC
#include "GradientMachine.h"
namespace Torch {
/** This class is designed to handle generative distribution models
such as Gaussian Mixture Models and Hidden Markov Models. As
distribution inherits from GradientMachine, they can be trained
by gradient descent or by Expectation Maximization (EM) or even
Viterbi.
Note that the output of a distribution is the negative log likelihood.
@author Samy Bengio (bengio@idiap.ch)
*/
class Distribution : public GradientMachine
{
public:
/// the log likelihood
real log_probability;
/// the log likelihood for each frame when available
Sequence* log_probabilities;
///
Distribution(int n_inputs_,int n_params_=0);
/// Returns the log probability of a sequence represented by #inputs#
virtual real logProbability(Sequence* inputs);
/// Returns the viterbi score of a sequence represented by #inputs#
virtual real viterbiLogProbability(Sequence* inputs);
/// Returns the log probability of a frame of a sequence
virtual real frameLogProbability(int t, real *f_inputs);
/// Returns the log probability of a frame of a sequence on viterbi mode
virtual real viterbiFrameLogProbability(int t, real *f_inputs);
virtual void frameGenerate(int t, real *inputs);
/** Methods used to initialize the model at the beginning of each
EM iteration
*/
virtual void eMIterInitialize();
/** Methods used to initialize the model at the beginning of each
gradient descent iteration
*/
virtual void iterInitialize();
/** Methods used to initialize the model at the beginning of each
example during EM training
*/
virtual void eMSequenceInitialize(Sequence* inputs);
/** Methods used to initialize the model at the beginning of each
example during gradient descent training
*/
virtual void sequenceInitialize(Sequence* inputs);
/// The backward step of EM for a sequence
virtual void eMAccPosteriors(Sequence *inputs, real log_posterior);
/// The backward step of EM for a frame
virtual void frameEMAccPosteriors(int t, real *f_inputs, real log_posterior);
/// The backward step of Viterbi learning for a sequence
virtual void viterbiAccPosteriors(Sequence *inputs, real log_posterior);
/// The backward step of Viterbi for a frame
virtual void frameViterbiAccPosteriors(int t, real *f_inputs, real log_posterior);
/// The update after each iteration for EM
virtual void eMUpdate();
/// The update after each gradient iteration
virtual void update();
/// For some distribution like SpeechHMM, decodes the most likely path
virtual void decode(Sequence *inputs);
virtual void forward(Sequence *inputs);
/// Same as forward, but for EM
virtual void eMForward(Sequence *inputs);
/// Same as forward, but for Viterbi
virtual void viterbiForward(Sequence *inputs);
virtual void backward(Sequence *inputs, Sequence *alpha);
/// Same as backward, but for one frame only
virtual void frameBackward(int t, real *f_inputs, real *beta_, real *f_outputs, real *alpha_);
/// Same as backward, but for Viterbi
virtual void viterbiBackward(Sequence *inputs, Sequence *alpha);
virtual void loadXFile(XFile *file);
/// Returns the decision of the distribution
/// decision is expectation for regression, class likelihoods for classif
virtual void decision(Sequence* decision);
/// Returns the decision of a frame of a sequence
virtual void frameDecision(int t, real *decision);
virtual ~Distribution();
};
}
#endif
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