plda.cc
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// ivector/plda.cc
// Copyright 2013 Daniel Povey
// 2015 David Snyder
// See ../../COPYING for clarification regarding multiple authors
//
// Licensed under the Apache License, Version 2.0 (the "License");
// you may not use this file except in compliance with the License.
// You may obtain a copy of the License at
//
// http://www.apache.org/licenses/LICENSE-2.0
//
// THIS CODE IS PROVIDED *AS IS* BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY
// KIND, EITHER EXPRESS OR IMPLIED, INCLUDING WITHOUT LIMITATION ANY IMPLIED
// WARRANTIES OR CONDITIONS OF TITLE, FITNESS FOR A PARTICULAR PURPOSE,
// MERCHANTABLITY OR NON-INFRINGEMENT.
// See the Apache 2 License for the specific language governing permissions and
// limitations under the License.
#include <vector>
#include "ivector/plda.h"
namespace kaldi {
void Plda::Write(std::ostream &os, bool binary) const {
WriteToken(os, binary, "<Plda>");
mean_.Write(os, binary);
transform_.Write(os, binary);
psi_.Write(os, binary);
WriteToken(os, binary, "</Plda>");
}
void Plda::Read(std::istream &is, bool binary) {
ExpectToken(is, binary, "<Plda>");
mean_.Read(is, binary);
transform_.Read(is, binary);
psi_.Read(is, binary);
ExpectToken(is, binary, "</Plda>");
ComputeDerivedVars();
}
template<class Real>
/// This function computes a projection matrix that when applied makes the
/// covariance unit (i.e. all 1).
static void ComputeNormalizingTransform(const SpMatrix<Real> &covar,
MatrixBase<Real> *proj) {
int32 dim = covar.NumRows();
TpMatrix<Real> C(dim); // Cholesky of covar, covar = C C^T
C.Cholesky(covar);
C.Invert(); // The matrix that makes covar unit is C^{-1}, because
// C^{-1} covar C^{-T} = C^{-1} C C^T C^{-T} = I.
proj->CopyFromTp(C, kNoTrans); // set "proj" to C^{-1}.
}
void Plda::ComputeDerivedVars() {
KALDI_ASSERT(Dim() > 0);
offset_.Resize(Dim());
offset_.AddMatVec(-1.0, transform_, kNoTrans, mean_, 0.0);
}
/**
This comment explains the thinking behind the function LogLikelihoodRatio.
The reference is "Probabilistic Linear Discriminant Analysis" by
Sergey Ioffe, ECCV 2006.
I'm looking at the un-numbered equation between eqs. (4) and (5),
that says
P(u^p | u^g_{1...n}) = N (u^p | \frac{n \Psi}{n \Psi + I} \bar{u}^g, I + \frac{\Psi}{n\Psi + I})
Here, the superscript ^p refers to the "probe" example (e.g. the example
to be classified), and u^g_1 is the first "gallery" example, i.e. the first
training example of that class. \psi is the between-class covariance
matrix, assumed to be diagonalized, and I can be interpreted as the within-class
covariance matrix which we have made unit.
We want the likelihood ratio P(u^p | u^g_{1..n}) / P(u^p), where the
numerator is the probability of u^p given that it's in that class, and the
denominator is the probability of u^p with no class assumption at all
(e.g. in its own class).
The expression above even works for n = 0 (e.g. the denominator of the likelihood
ratio), where it gives us
P(u^p) = N(u^p | 0, I + \Psi)
i.e. it's distributed with zero mean and covarance (within + between).
The likelihood ratio we want is:
N(u^p | \frac{n \Psi}{n \Psi + I} \bar{u}^g, I + \frac{\Psi}{n \Psi + I}) /
N(u^p | 0, I + \Psi)
where \bar{u}^g is the mean of the "gallery examples"; and we can expand the
log likelihood ratio as
- 0.5 [ (u^p - m) (I + \Psi/(n \Psi + I))^{-1} (u^p - m) + logdet(I + \Psi/(n \Psi + I)) ]
+ 0.5 [u^p (I + \Psi) u^p + logdet(I + \Psi) ]
where m = (n \Psi)/(n \Psi + I) \bar{u}^g.
*/
double Plda::GetNormalizationFactor(
const VectorBase<double> &transformed_ivector,
int32 num_examples) const {
KALDI_ASSERT(num_examples > 0);
// Work out the normalization factor. The covariance for an average over
// "num_examples" training iVectors equals \Psi + I/num_examples.
Vector<double> transformed_ivector_sq(transformed_ivector);
transformed_ivector_sq.ApplyPow(2.0);
// inv_covar will equal 1.0 / (\Psi + I/num_examples).
Vector<double> inv_covar(psi_);
inv_covar.Add(1.0 / num_examples);
inv_covar.InvertElements();
// "transformed_ivector" should have covariance (\Psi + I/num_examples), i.e.
// within-class/num_examples plus between-class covariance. So
// transformed_ivector_sq . (I/num_examples + \Psi)^{-1} should be equal to
// the dimension.
double dot_prod = VecVec(inv_covar, transformed_ivector_sq);
return sqrt(Dim() / dot_prod);
}
double Plda::TransformIvector(const PldaConfig &config,
const VectorBase<double> &ivector,
int32 num_examples,
VectorBase<double> *transformed_ivector) const {
KALDI_ASSERT(ivector.Dim() == Dim() && transformed_ivector->Dim() == Dim());
double normalization_factor;
transformed_ivector->CopyFromVec(offset_);
transformed_ivector->AddMatVec(1.0, transform_, kNoTrans, ivector, 1.0);
if (config.simple_length_norm)
normalization_factor = sqrt(transformed_ivector->Dim())
/ transformed_ivector->Norm(2.0);
else
normalization_factor = GetNormalizationFactor(*transformed_ivector,
num_examples);
if (config.normalize_length)
transformed_ivector->Scale(normalization_factor);
return normalization_factor;
}
// "float" version of TransformIvector.
float Plda::TransformIvector(const PldaConfig &config,
const VectorBase<float> &ivector,
int32 num_examples,
VectorBase<float> *transformed_ivector) const {
Vector<double> tmp(ivector), tmp_out(ivector.Dim());
float ans = TransformIvector(config, tmp, num_examples, &tmp_out);
transformed_ivector->CopyFromVec(tmp_out);
return ans;
}
// There is an extended comment within this file, referencing a paper by
// Ioffe, that may clarify what this function is doing.
double Plda::LogLikelihoodRatio(
const VectorBase<double> &transformed_train_ivector,
int32 n, // number of training utterances.
const VectorBase<double> &transformed_test_ivector) const {
int32 dim = Dim();
double loglike_given_class, loglike_without_class;
{ // work out loglike_given_class.
// "mean" will be the mean of the distribution if it comes from the
// training example. The mean is \frac{n \Psi}{n \Psi + I} \bar{u}^g
// "variance" will be the variance of that distribution, equal to
// I + \frac{\Psi}{n\Psi + I}.
Vector<double> mean(dim, kUndefined);
Vector<double> variance(dim, kUndefined);
for (int32 i = 0; i < dim; i++) {
mean(i) = n * psi_(i) / (n * psi_(i) + 1.0)
* transformed_train_ivector(i);
variance(i) = 1.0 + psi_(i) / (n * psi_(i) + 1.0);
}
double logdet = variance.SumLog();
Vector<double> sqdiff(transformed_test_ivector);
sqdiff.AddVec(-1.0, mean);
sqdiff.ApplyPow(2.0);
variance.InvertElements();
loglike_given_class = -0.5 * (logdet + M_LOG_2PI * dim +
VecVec(sqdiff, variance));
}
{ // work out loglike_without_class. Here the mean is zero and the variance
// is I + \Psi.
Vector<double> sqdiff(transformed_test_ivector); // there is no offset.
sqdiff.ApplyPow(2.0);
Vector<double> variance(psi_);
variance.Add(1.0); // I + \Psi.
double logdet = variance.SumLog();
variance.InvertElements();
loglike_without_class = -0.5 * (logdet + M_LOG_2PI * dim +
VecVec(sqdiff, variance));
}
double loglike_ratio = loglike_given_class - loglike_without_class;
return loglike_ratio;
}
void Plda::SmoothWithinClassCovariance(double smoothing_factor) {
KALDI_ASSERT(smoothing_factor >= 0.0 && smoothing_factor <= 1.0);
// smoothing_factor > 1.0 is possible but wouldn't really make sense.
KALDI_LOG << "Smoothing within-class covariance by " << smoothing_factor
<< ", Psi is initially: " << psi_;
Vector<double> within_class_covar(Dim());
within_class_covar.Set(1.0); // It's now the current within-class covariance
// (a diagonal matrix) in the space transformed
// by transform_.
within_class_covar.AddVec(smoothing_factor, psi_);
/// We now revise our estimate of the within-class covariance to this
/// larger value. This means that the transform has to change to as
/// to make this new, larger covariance unit. And our between-class
/// covariance in this space is now less.
psi_.DivElements(within_class_covar);
KALDI_LOG << "New value of Psi is " << psi_;
within_class_covar.ApplyPow(-0.5);
transform_.MulRowsVec(within_class_covar);
ComputeDerivedVars();
}
void Plda::ApplyTransform(const Matrix<double> &in_transform) {
KALDI_ASSERT(in_transform.NumRows() <= Dim()
&& in_transform.NumCols() == Dim());
// Apply in_transform to mean_.
Vector<double> mean_new(in_transform.NumRows());
mean_new.AddMatVec(1.0, in_transform, kNoTrans, mean_, 0.0);
mean_.Resize(in_transform.NumRows());
mean_.CopyFromVec(mean_new);
SpMatrix<double> between_var(in_transform.NumCols()),
within_var(in_transform.NumCols()),
psi_mat(in_transform.NumCols()),
between_var_new(Dim()),
within_var_new(Dim());
Matrix<double> transform_invert(transform_);
// Next, compute the between_var and within_var that existed
// prior to diagonalization.
psi_mat.AddDiagVec(1.0, psi_);
transform_invert.Invert();
within_var.AddMat2(1.0, transform_invert, kNoTrans, 0.0);
between_var.AddMat2Sp(1.0, transform_invert, kNoTrans, psi_mat, 0.0);
// Next, transform the variances using the input transformation.
between_var_new.AddMat2Sp(1.0, in_transform, kNoTrans, between_var, 0.0);
within_var_new.AddMat2Sp(1.0, in_transform, kNoTrans, within_var, 0.0);
// Finally, we need to recompute psi_ and transform_. The remainder of
// the code in this function is a lightly modified copy of
// PldaEstimator::GetOutput().
Matrix<double> transform1(Dim(), Dim());
ComputeNormalizingTransform(within_var_new, &transform1);
// Now transform is a matrix that if we project with it,
// within_var becomes unit.
// between_var_proj is between_var after projecting with transform1.
SpMatrix<double> between_var_proj(Dim());
between_var_proj.AddMat2Sp(1.0, transform1, kNoTrans, between_var_new, 0.0);
Matrix<double> U(Dim(), Dim());
Vector<double> s(Dim());
// Do symmetric eigenvalue decomposition between_var_proj = U diag(s) U^T,
// where U is orthogonal.
between_var_proj.Eig(&s, &U);
KALDI_ASSERT(s.Min() >= 0.0);
int32 n;
s.ApplyFloor(0.0, &n);
if (n > 0) {
KALDI_WARN << "Floored " << n << " eigenvalues of between-class "
<< "variance to zero.";
}
// Sort from greatest to smallest eigenvalue.
SortSvd(&s, &U);
// The transform U^T will make between_var_proj diagonal with value s
// (i.e. U^T U diag(s) U U^T = diag(s)). The final transform that
// makes within_var unit and between_var diagonal is U^T transform1,
// i.e. first transform1 and then U^T.
transform_.Resize(Dim(), Dim());
transform_.AddMatMat(1.0, U, kTrans, transform1, kNoTrans, 0.0);
psi_.Resize(Dim());
psi_.CopyFromVec(s);
ComputeDerivedVars();
}
void PldaStats::AddSamples(double weight,
const Matrix<double> &group) {
if (dim_ == 0) {
Init(group.NumCols());
} else {
KALDI_ASSERT(dim_ == group.NumCols());
}
int32 n = group.NumRows(); // number of examples for this class
Vector<double> *mean = new Vector<double>(dim_);
mean->AddRowSumMat(1.0 / n, group);
offset_scatter_.AddMat2(weight, group, kTrans, 1.0);
// the following statement has the same effect as if we
// had first subtracted the mean from each element of
// the group before the statement above.
offset_scatter_.AddVec2(-n * weight, *mean);
class_info_.push_back(ClassInfo(weight, mean, n));
num_classes_ ++;
num_examples_ += n;
class_weight_ += weight;
example_weight_ += weight * n;
sum_.AddVec(weight, *mean);
}
PldaStats::~PldaStats() {
for (size_t i = 0; i < class_info_.size(); i++)
delete class_info_[i].mean;
}
bool PldaStats::IsSorted() const {
for (size_t i = 0; i + 1 < class_info_.size(); i++)
if (class_info_[i+1] < class_info_[i])
return false;
return true;
}
void PldaStats::Init(int32 dim) {
KALDI_ASSERT(dim_ == 0);
dim_ = dim;
num_classes_ = 0;
num_examples_ = 0;
class_weight_ = 0.0;
example_weight_ = 0.0;
sum_.Resize(dim);
offset_scatter_.Resize(dim);
KALDI_ASSERT(class_info_.empty());
}
PldaEstimator::PldaEstimator(const PldaStats &stats):
stats_(stats) {
KALDI_ASSERT(stats.IsSorted());
InitParameters();
}
double PldaEstimator::ComputeObjfPart1() const {
// Returns the part of the objf relating to offsets from the class means.
// within_class_count equals the sum over the classes, of the weight of that
// class (normally 1) times (1 - #examples) of that class, which equals the
// rank of the covariance we're modeling. We imagine that we're modeling (1 -
// #examples) separate samples, each with the within-class covariance.. the
// argument is a little complicated and involves an orthogonal complement of a
// matrix whose first row computes the mean.
double within_class_count = stats_.example_weight_ - stats_.class_weight_,
within_logdet, det_sign;
SpMatrix<double> inv_within_var(within_var_);
inv_within_var.Invert(&within_logdet, &det_sign);
KALDI_ASSERT(det_sign == 1 && "Within-class covariance is singular");
double objf = -0.5 * (within_class_count * (within_logdet + M_LOG_2PI * Dim())
+ TraceSpSp(inv_within_var, stats_.offset_scatter_));
return objf;
}
double PldaEstimator::ComputeObjfPart2() const {
double tot_objf = 0.0;
int32 n = -1; // the number of examples for the current class
SpMatrix<double> combined_inv_var(Dim());
// combined_inv_var = (between_var_ + within_var_ / n)^{-1}
double combined_var_logdet;
for (size_t i = 0; i < stats_.class_info_.size(); i++) {
const ClassInfo &info = stats_.class_info_[i];
if (info.num_examples != n) {
n = info.num_examples;
// variance of mean of n examples is between-class + 1/n * within-class
combined_inv_var.CopyFromSp(between_var_);
combined_inv_var.AddSp(1.0 / n, within_var_);
combined_inv_var.Invert(&combined_var_logdet);
}
Vector<double> mean (*(info.mean));
mean.AddVec(-1.0 / stats_.class_weight_, stats_.sum_);
tot_objf += info.weight * -0.5 * (combined_var_logdet + M_LOG_2PI * Dim()
+ VecSpVec(mean, combined_inv_var, mean));
}
return tot_objf;
}
double PldaEstimator::ComputeObjf() const {
double ans1 = ComputeObjfPart1(),
ans2 = ComputeObjfPart2(),
ans = ans1 + ans2,
example_weights = stats_.example_weight_,
normalized_ans = ans / example_weights;
KALDI_LOG << "Within-class objf per sample is " << (ans1 / example_weights)
<< ", between-class is " << (ans2 / example_weights)
<< ", total is " << normalized_ans;
return normalized_ans;
}
void PldaEstimator::InitParameters() {
within_var_.Resize(Dim());
within_var_.SetUnit();
between_var_.Resize(Dim());
between_var_.SetUnit();
}
void PldaEstimator::ResetPerIterStats() {
within_var_stats_.Resize(Dim());
within_var_count_ = 0.0;
between_var_stats_.Resize(Dim());
between_var_count_ = 0.0;
}
void PldaEstimator::GetStatsFromIntraClass() {
within_var_stats_.AddSp(1.0, stats_.offset_scatter_);
// Note: in the normal case, the expression below will be equal to the sum
// over the classes, of (1-n), where n is the #examples for that class. That
// is the rank of the scatter matrix that "offset_scatter_" has for that
// class. [if weights other than 1.0 are used, it will be different.]
within_var_count_ += (stats_.example_weight_ - stats_.class_weight_);
}
/**
GetStatsFromClassMeans() is the more complicated part of PLDA estimation.
Let's suppose the mean of a particular class is m, and suppose that
that class had n examples. We suppose that
m ~ N(0, between_var_ + 1/n within_var_)
i.e. m is Gaussian-distributed with zero mean and variance equal to the
between-class variance plus 1/n times the within-class variance. Now, m
is observed (as stats_.class_info_[something].mean). We're doing an E-M
procedure where we treat m as the sum of two variables:
m = x + y
where
x ~ N(0, between_var_)
y ~ N(0, 1/n * within_var_)
The distribution of x will contribute to the stats of between_var_, and
y to within_var_. Now, y = m - x, so we can focus on working out the
distribution of x and then we can very simply get the distribution of y.
The following expression also includes the likelihood of y as a function of
x. Note: the C is different from line to line.
log p(x) = C - 0.5 ( x^T between_var^{-1} x + (m-x)^T (1/n within_var)^{-1) (m-x) )
= C - 0.5 x^T (between_var^{-1} + n within_var^{-1}) x + x^T z
where z = n within_var^{-1} m, and we can write this as:
log p(x) = C - 0.5 (x-w)^T (between_var^{-1} + n within_var^{-1}) (x-w)
where x^T (between_var^{-1} + n within_var^{-1}) w = x^T z, i.e.
(between_var^{-1} + n within_var^{-1}) w = z = n within_var^{-1} m, so
w = (between_var^{-1} + n within_var^{-1})^{-1} * n within_var^{-1} m
We can see that the distribution over x is Gaussian, with mean w and variance
(between_var^{-1} + n within_var^{-1})^{-1}.
The distribution over y is Gaussian with the same variance, and mean m - w.
So the update to the between-var stats will be:
between-var-stats += w w^T + (between_var^{-1} + n within_var^{-1})^{-1}.
and the update to the within-var stats will be:
within-var-stats += n ( (m-w) (m-w)^T (between_var^{-1} + n within_var^{-1})^{-1} ).
The drawback of this formulation is that each time we encounter a different
value of n (number of examples) we will have to do a different matrix
inversion. We'll try to improve on this later using a suitable transform.
*/
void PldaEstimator::GetStatsFromClassMeans() {
SpMatrix<double> between_var_inv(between_var_);
between_var_inv.Invert();
SpMatrix<double> within_var_inv(within_var_);
within_var_inv.Invert();
// mixed_var will equal (between_var^{-1} + n within_var^{-1})^{-1}.
SpMatrix<double> mixed_var(Dim());
int32 n = -1; // the current number of examples for the class.
for (size_t i = 0; i < stats_.class_info_.size(); i++) {
const ClassInfo &info = stats_.class_info_[i];
double weight = info.weight;
if (info.num_examples != n) {
n = info.num_examples;
mixed_var.CopyFromSp(between_var_inv);
mixed_var.AddSp(n, within_var_inv);
mixed_var.Invert();
}
Vector<double> m = *(info.mean); // the mean for this class.
m.AddVec(-1.0 / stats_.class_weight_, stats_.sum_); // remove global mean
Vector<double> temp(Dim()); // n within_var^{-1} m
temp.AddSpVec(n, within_var_inv, m, 0.0);
Vector<double> w(Dim()); // w, as defined in the comment.
w.AddSpVec(1.0, mixed_var, temp, 0.0);
Vector<double> m_w(m); // m - w
m_w.AddVec(-1.0, w);
between_var_stats_.AddSp(weight, mixed_var);
between_var_stats_.AddVec2(weight, w);
between_var_count_ += weight;
within_var_stats_.AddSp(weight * n, mixed_var);
within_var_stats_.AddVec2(weight * n, m_w);
within_var_count_ += weight;
}
}
void PldaEstimator::EstimateFromStats() {
within_var_.CopyFromSp(within_var_stats_);
within_var_.Scale(1.0 / within_var_count_);
between_var_.CopyFromSp(between_var_stats_);
between_var_.Scale(1.0 / between_var_count_);
KALDI_LOG << "Trace of within-class variance is " << within_var_.Trace();
KALDI_LOG << "Trace of between-class variance is " << between_var_.Trace();
}
void PldaEstimator::EstimateOneIter() {
ResetPerIterStats();
GetStatsFromIntraClass();
GetStatsFromClassMeans();
EstimateFromStats();
KALDI_VLOG(2) << "Objective function is " << ComputeObjf();
}
void PldaEstimator::Estimate(const PldaEstimationConfig &config,
Plda *plda) {
KALDI_ASSERT(stats_.example_weight_ > 0 && "Cannot estimate with no stats");
for (int32 i = 0; i < config.num_em_iters; i++) {
KALDI_LOG << "Plda estimation iteration " << i
<< " of " << config.num_em_iters;
EstimateOneIter();
}
GetOutput(plda);
}
void PldaEstimator::GetOutput(Plda *plda) {
plda->mean_ = stats_.sum_;
plda->mean_.Scale(1.0 / stats_.class_weight_);
KALDI_LOG << "Norm of mean of iVector distribution is "
<< plda->mean_.Norm(2.0);
Matrix<double> transform1(Dim(), Dim());
ComputeNormalizingTransform(within_var_, &transform1);
// now transform is a matrix that if we project with it,
// within_var_ becomes unit.
// between_var_proj is between_var after projecting with transform1.
SpMatrix<double> between_var_proj(Dim());
between_var_proj.AddMat2Sp(1.0, transform1, kNoTrans, between_var_, 0.0);
Matrix<double> U(Dim(), Dim());
Vector<double> s(Dim());
// Do symmetric eigenvalue decomposition between_var_proj = U diag(s) U^T,
// where U is orthogonal.
between_var_proj.Eig(&s, &U);
KALDI_ASSERT(s.Min() >= 0.0);
int32 n;
s.ApplyFloor(0.0, &n);
if (n > 0) {
KALDI_WARN << "Floored " << n << " eigenvalues of between-class "
<< "variance to zero.";
}
// Sort from greatest to smallest eigenvalue.
SortSvd(&s, &U);
// The transform U^T will make between_var_proj diagonal with value s
// (i.e. U^T U diag(s) U U^T = diag(s)). The final transform that
// makes within_var_ unit and between_var_ diagonal is U^T transform1,
// i.e. first transform1 and then U^T.
plda->transform_.Resize(Dim(), Dim());
plda->transform_.AddMatMat(1.0, U, kTrans, transform1, kNoTrans, 0.0);
plda->psi_ = s;
KALDI_LOG << "Diagonal of between-class variance in normalized space is " << s;
if (GetVerboseLevel() >= 2) { // at higher verbose levels, do a self-test
// (just tests that this function does what it
// should).
SpMatrix<double> tmp_within(Dim());
tmp_within.AddMat2Sp(1.0, plda->transform_, kNoTrans, within_var_, 0.0);
KALDI_ASSERT(tmp_within.IsUnit(0.0001));
SpMatrix<double> tmp_between(Dim());
tmp_between.AddMat2Sp(1.0, plda->transform_, kNoTrans, between_var_, 0.0);
KALDI_ASSERT(tmp_between.IsDiagonal(0.0001));
Vector<double> psi(Dim());
psi.CopyDiagFromSp(tmp_between);
AssertEqual(psi, plda->psi_);
}
plda->ComputeDerivedVars();
}
void PldaUnsupervisedAdaptor::AddStats(double weight,
const Vector<double> &ivector) {
if (mean_stats_.Dim() == 0) {
mean_stats_.Resize(ivector.Dim());
variance_stats_.Resize(ivector.Dim());
}
KALDI_ASSERT(weight >= 0.0);
tot_weight_ += weight;
mean_stats_.AddVec(weight, ivector);
variance_stats_.AddVec2(weight, ivector);
}
void PldaUnsupervisedAdaptor::AddStats(double weight,
const Vector<float> &ivector) {
Vector<double> ivector_dbl(ivector);
this->AddStats(weight, ivector_dbl);
}
void PldaUnsupervisedAdaptor::UpdatePlda(const PldaUnsupervisedAdaptorConfig &config,
Plda *plda) const {
KALDI_ASSERT(tot_weight_ > 0.0);
int32 dim = mean_stats_.Dim();
KALDI_ASSERT(dim == plda->Dim());
Vector<double> mean(mean_stats_);
mean.Scale(1.0 / tot_weight_);
SpMatrix<double> variance(variance_stats_);
variance.Scale(1.0 / tot_weight_);
variance.AddVec2(-1.0, mean); // Make it the uncentered variance.
// mean_diff of the adaptation data from the training data. We optionally add
// this to our total covariance matrix
Vector<double> mean_diff(mean);
mean_diff.AddVec(-1.0, plda->mean_);
KALDI_ASSERT(config.mean_diff_scale >= 0.0);
variance.AddVec2(config.mean_diff_scale, mean_diff);
// update the plda's mean data-member with our adaptation-data mean.
plda->mean_.CopyFromVec(mean);
// transform_model_ is a row-scaled version of plda->transform_ that
// transforms into the space where the total covariance is 1.0. Because
// plda->transform_ transforms into a space where the within-class covar is
// 1.0 and the the between-class covar is diag(plda->psi_), we need to scale
// each dimension i by 1.0 / sqrt(1.0 + plda->psi_(i))
Matrix<double> transform_mod(plda->transform_);
for (int32 i = 0; i < dim; i++)
transform_mod.Row(i).Scale(1.0 / sqrt(1.0 + plda->psi_(i)));
// project the variance of the adaptation set into this space where
// the total covariance is unit.
SpMatrix<double> variance_proj(dim);
variance_proj.AddMat2Sp(1.0, transform_mod, kNoTrans,
variance, 0.0);
// Do eigenvalue decomposition of variance_proj; this will tell us the
// directions in which the adaptation-data covariance is more than
// the training-data covariance.
Matrix<double> P(dim, dim);
Vector<double> s(dim);
variance_proj.Eig(&s, &P);
SortSvd(&s, &P);
KALDI_LOG << "Eigenvalues of adaptation-data total-covariance in space where "
<< "training-data total-covariance is unit, is: " << s;
// W, B are the (within,between)-class covars in the space transformed by
// transform_mod.
SpMatrix<double> W(dim), B(dim);
for (int32 i = 0; i < dim; i++) {
W(i, i) = 1.0 / (1.0 + plda->psi_(i)),
B(i, i) = plda->psi_(i) / (1.0 + plda->psi_(i));
}
// OK, so variance_proj (projected by transform_mod) is P diag(s) P^T.
// Suppose that after transform_mod we project by P^T. Then the adaptation-data's
// variance would be P^T P diag(s) P^T P = diag(s), and the PLDA model's
// within class variance would be P^T W P and its between-class variance would be
// P^T B P. We'd still have that W+B = I in this space.
// First let's compute these projected variances... we call the "proj2" because
// it's after the data has been projected twice (actually, transformed, as there is no
// dimension loss), by transform_mod and then P^T.
SpMatrix<double> Wproj2(dim), Bproj2(dim);
Wproj2.AddMat2Sp(1.0, P, kTrans, W, 0.0);
Bproj2.AddMat2Sp(1.0, P, kTrans, B, 0.0);
Matrix<double> Ptrans(P, kTrans);
SpMatrix<double> Wproj2mod(Wproj2), Bproj2mod(Bproj2);
for (int32 i = 0; i < dim; i++) {
// For this eigenvalue, compute the within-class covar projected with this direction,
// and the same for between.
BaseFloat within = Wproj2(i, i),
between = Bproj2(i, i);
KALDI_LOG << "For " << i << "'th eigenvalue, value is " << s(i)
<< ", within-class covar in this direction is " << within
<< ", between-class is " << between;
if (s(i) > 1.0) {
double excess_eig = s(i) - 1.0;
double excess_within_covar = excess_eig * config.within_covar_scale,
excess_between_covar = excess_eig * config.between_covar_scale;
Wproj2mod(i, i) += excess_within_covar;
Bproj2mod(i, i) += excess_between_covar;
} /*
Below I was considering a method like below, to try to scale up
the dimensions that had less variance than expected in our sample..
this didn't help, and actually when I set that power to +0.2 instead
of -0.5 it gave me an improvement on sre08. But I'm not sure
about this.. it just doesn't seem right.
else {
BaseFloat scale = pow(std::max(1.0e-10, s(i)), -0.5);
BaseFloat max_scale = 10.0; // I'll make this configurable later.
scale = std::min(scale, max_scale);
Ptrans.Row(i).Scale(scale);
} */
}
// combined transform "transform_mod" and then P^T that takes us to the space
// where {W,B}proj2{,mod} are.
Matrix<double> combined_trans(dim, dim);
combined_trans.AddMatMat(1.0, Ptrans, kNoTrans,
transform_mod, kNoTrans, 0.0);
Matrix<double> combined_trans_inv(combined_trans); // ... and its inverse.
combined_trans_inv.Invert();
// Wmod and Bmod are as Wproj2 and Bproj2 but taken back into the original
// iVector space.
SpMatrix<double> Wmod(dim), Bmod(dim);
Wmod.AddMat2Sp(1.0, combined_trans_inv, kNoTrans, Wproj2mod, 0.0);
Bmod.AddMat2Sp(1.0, combined_trans_inv, kNoTrans, Bproj2mod, 0.0);
TpMatrix<double> C(dim);
// Do Cholesky Wmod = C C^T. Now if we use C^{-1} as a transform, we have
// C^{-1} W C^{-T} = I, so it makes the within-class covar unit.
C.Cholesky(Wmod);
TpMatrix<double> Cinv(C);
Cinv.Invert();
// Bmod_proj is Bmod projected by Cinv.
SpMatrix<double> Bmod_proj(dim);
Bmod_proj.AddTp2Sp(1.0, Cinv, kNoTrans, Bmod, 0.0);
Vector<double> psi_new(dim);
Matrix<double> Q(dim, dim);
// Do symmetric eigenvalue decomposition of Bmod_proj, so
// Bmod_proj = Q diag(psi_new) Q^T
Bmod_proj.Eig(&psi_new, &Q);
SortSvd(&psi_new, &Q);
// This means that if we use Q^T as a transform, then Q^T Bmod_proj Q =
// diag(psi_new), hence Q^T diagonalizes Bmod_proj (while leaving the
// within-covar unit).
// The final transform we want, that projects from our original
// space to our newly normalized space, is:
// first Cinv, then Q^T, i.e. the
// matrix Q^T Cinv.
Matrix<double> final_transform(dim, dim);
final_transform.AddMatTp(1.0, Q, kTrans, Cinv, kNoTrans, 0.0);
KALDI_LOG << "Old diagonal of between-class covar was: "
<< plda->psi_ << ", new diagonal is "
<< psi_new;
plda->transform_.CopyFromMat(final_transform);
plda->psi_.CopyFromVec(psi_new);
}
} // namespace kaldi