Kernel embedding of distributions

Summary

In machine learning, the kernel embedding of distributions (also called the kernel mean or mean map) comprises a class of nonparametric methods in which a probability distribution is represented as an element of a reproducing kernel Hilbert space (RKHS).[1] A generalization of the individual data-point feature mapping done in classical kernel methods, the embedding of distributions into infinite-dimensional feature spaces can preserve all of the statistical features of arbitrary distributions, while allowing one to compare and manipulate distributions using Hilbert space operations such as inner products, distances, projections, linear transformations, and spectral analysis.[2] This learning framework is very general and can be applied to distributions over any space on which a sensible kernel function (measuring similarity between elements of ) may be defined. For example, various kernels have been proposed for learning from data which are: vectors in , discrete classes/categories, strings, graphs/networks, images, time series, manifolds, dynamical systems, and other structured objects.[3][4] The theory behind kernel embeddings of distributions has been primarily developed by Alex Smola, Le Song , Arthur Gretton, and Bernhard Schölkopf. A review of recent works on kernel embedding of distributions can be found in.[5]

The analysis of distributions is fundamental in machine learning and statistics, and many algorithms in these fields rely on information theoretic approaches such as entropy, mutual information, or Kullback–Leibler divergence. However, to estimate these quantities, one must first either perform density estimation, or employ sophisticated space-partitioning/bias-correction strategies which are typically infeasible for high-dimensional data.[6] Commonly, methods for modeling complex distributions rely on parametric assumptions that may be unfounded or computationally challenging (e.g. Gaussian mixture models), while nonparametric methods like kernel density estimation (Note: the smoothing kernels in this context have a different interpretation than the kernels discussed here) or characteristic function representation (via the Fourier transform of the distribution) break down in high-dimensional settings.[2]

Methods based on the kernel embedding of distributions sidestep these problems and also possess the following advantages:[6]

  1. Data may be modeled without restrictive assumptions about the form of the distributions and relationships between variables
  2. Intermediate density estimation is not needed
  3. Practitioners may specify the properties of a distribution most relevant for their problem (incorporating prior knowledge via choice of the kernel)
  4. If a characteristic kernel is used, then the embedding can uniquely preserve all information about a distribution, while thanks to the kernel trick, computations on the potentially infinite-dimensional RKHS can be implemented in practice as simple Gram matrix operations
  5. Dimensionality-independent rates of convergence for the empirical kernel mean (estimated using samples from the distribution) to the kernel embedding of the true underlying distribution can be proven.
  6. Learning algorithms based on this framework exhibit good generalization ability and finite sample convergence, while often being simpler and more effective than information theoretic methods

Thus, learning via the kernel embedding of distributions offers a principled drop-in replacement for information theoretic approaches and is a framework which not only subsumes many popular methods in machine learning and statistics as special cases, but also can lead to entirely new learning algorithms.

Definitions edit

Let   denote a random variable with domain   and distribution  . Given a symmetric, positive-definite kernel   the Moore–Aronszajn theorem asserts the existence of a unique RKHS   on   (a Hilbert space of functions   equipped with an inner product   and a norm  ) for which   is a reproducing kernel, i.e., in which the element   satisfies the reproducing property

 

One may alternatively consider   as an implicit feature mapping   (which is therefore also called the feature space), so that   can be viewed as a measure of similarity between points   While the similarity measure is linear in the feature space, it may be highly nonlinear in the original space depending on the choice of kernel.

Kernel embedding edit

The kernel embedding of the distribution   in   (also called the kernel mean or mean map) is given by:[1]

 

If   allows a square integrable density  , then  , where   is the Hilbert–Schmidt integral operator. A kernel is characteristic if the mean embedding   is injective.[7] Each distribution can thus be uniquely represented in the RKHS and all statistical features of distributions are preserved by the kernel embedding if a characteristic kernel is used.

Empirical kernel embedding edit

Given   training examples   drawn independently and identically distributed (i.i.d.) from   the kernel embedding of   can be empirically estimated as

 

Joint distribution embedding edit

If   denotes another random variable (for simplicity, assume the co-domain of   is also   with the same kernel   which satisfies  ), then the joint distribution   can be mapped into a tensor product feature space   via [2]

 

By the equivalence between a tensor and a linear map, this joint embedding may be interpreted as an uncentered cross-covariance operator   from which the cross-covariance of functions   can be computed as [8]

 

Given   pairs of training examples   drawn i.i.d. from  , we can also empirically estimate the joint distribution kernel embedding via

 

Conditional distribution embedding edit

Given a conditional distribution   one can define the corresponding RKHS embedding as [2]

 

Note that the embedding of   thus defines a family of points in the RKHS indexed by the values   taken by conditioning variable  . By fixing   to a particular value, we obtain a single element in  , and thus it is natural to define the operator

 

which given the feature mapping of   outputs the conditional embedding of   given   Assuming that for all   it can be shown that [8]

 

This assumption is always true for finite domains with characteristic kernels, but may not necessarily hold for continuous domains.[2] Nevertheless, even in cases where the assumption fails,   may still be used to approximate the conditional kernel embedding   and in practice, the inversion operator is replaced with a regularized version of itself   (where   denotes the identity matrix).

Given training examples   the empirical kernel conditional embedding operator may be estimated as [2]

 

where   are implicitly formed feature matrices,   is the Gram matrix for samples of  , and   is a regularization parameter needed to avoid overfitting.

Thus, the empirical estimate of the kernel conditional embedding is given by a weighted sum of samples of   in the feature space:

 

where   and  

Properties edit

  • The expectation of any function   in the RKHS can be computed as an inner product with the kernel embedding:
 
  • In the presence of large sample sizes, manipulations of the   Gram matrix may be computationally demanding. Through use of a low-rank approximation of the Gram matrix (such as the incomplete Cholesky factorization), running time and memory requirements of kernel-embedding-based learning algorithms can be drastically reduced without suffering much loss in approximation accuracy.[2]

Convergence of empirical kernel mean to the true distribution embedding edit

  • If   is defined such that   takes values in   for all   with   (as is the case for the widely used radial basis function kernels), then with probability at least  :[6]
 
where   denotes the unit ball in   and   is the Gram matrix with  
  • The rate of convergence (in RKHS norm) of the empirical kernel embedding to its distribution counterpart is   and does not depend on the dimension of  .
  • Statistics based on kernel embeddings thus avoid the curse of dimensionality, and though the true underlying distribution is unknown in practice, one can (with high probability) obtain an approximation within   of the true kernel embedding based on a finite sample of size  .
  • For the embedding of conditional distributions, the empirical estimate can be seen as a weighted average of feature mappings (where the weights   depend on the value of the conditioning variable and capture the effect of the conditioning on the kernel embedding). In this case, the empirical estimate converges to the conditional distribution RKHS embedding with rate   if the regularization parameter   is decreased as   though faster rates of convergence may be achieved by placing additional assumptions on the joint distribution.[2]

Universal kernels edit

  • Let   be a compact metric space and   the set of continuous functions. The reproducing kernel   is called universal if and only if the RKHS   of   is dense in  , i.e., for any   and all   there exists an   such that  .[9] All universal kernels defined on a compact space are characteristic kernels but the converse is not always true.[10]
  • Let   be a continuous translation invariant kernel   with  . Then Bochner's theorem guarantees the existence of a unique finite Borel measure   (called the spectral measure) on   such that
 
For   to be universal it suffices that the continuous part of   in its unique Lebesgue decomposition   is non-zero. Furthermore, if
 
then   is the spectral density of frequencies   in   and   is the Fourier transform of  . If the support of   is all of  , then   is a characteristic kernel as well.[11][12][13]
  • If   induces a strictly positive definite kernel matrix for any set of distinct points, then it is a universal kernel.[6] For example, the widely used Gaussian RBF kernel
 
on compact subsets of   is universal.

Parameter selection for conditional distribution kernel embeddings edit

  • The empirical kernel conditional distribution embedding operator   can alternatively be viewed as the solution of the following regularized least squares (function-valued) regression problem [14]
 
where   is the Hilbert–Schmidt norm.
  • One can thus select the regularization parameter   by performing cross-validation based on the squared loss function of the regression problem.

Rules of probability as operations in the RKHS edit

This section illustrates how basic probabilistic rules may be reformulated as (multi)linear algebraic operations in the kernel embedding framework and is primarily based on the work of Song et al.[2][8] The following notation is adopted:

  •   joint distribution over random variables  
  •   marginal distribution of  ;   marginal distribution of  
  •   conditional distribution of   given   with corresponding conditional embedding operator  
  •   prior distribution over  
  •   is used to distinguish distributions which incorporate the prior from distributions   which do not rely on the prior

In practice, all embeddings are empirically estimated from data   and it assumed that a set of samples   may be used to estimate the kernel embedding of the prior distribution  .

Kernel sum rule edit

In probability theory, the marginal distribution of   can be computed by integrating out   from the joint density (including the prior distribution on  )

 

The analog of this rule in the kernel embedding framework states that   the RKHS embedding of  , can be computed via

 

where   is the kernel embedding of   In practical implementations, the kernel sum rule takes the following form

 

where

 

is the empirical kernel embedding of the prior distribution,    , and   are Gram matrices with entries   respectively.

Kernel chain rule edit

In probability theory, a joint distribution can be factorized into a product between conditional and marginal distributions

 

The analog of this rule in the kernel embedding framework states that   the joint embedding of   can be factorized as a composition of conditional embedding operator with the auto-covariance operator associated with  

 

where

 
 

In practical implementations, the kernel chain rule takes the following form

 

Kernel Bayes' rule edit

In probability theory, a posterior distribution can be expressed in terms of a prior distribution and a likelihood function as

  where  

The analog of this rule in the kernel embedding framework expresses the kernel embedding of the conditional distribution in terms of conditional embedding operators which are modified by the prior distribution

 

where from the chain rule:

 

In practical implementations, the kernel Bayes' rule takes the following form

 

where

 

Two regularization parameters are used in this framework:   for the estimation of   and   for the estimation of the final conditional embedding operator

 

The latter regularization is done on square of   because   may not be positive definite.

Applications edit

Measuring distance between distributions edit

The maximum mean discrepancy (MMD) is a distance-measure between distributions   and   which is defined as the distance between their embeddings in the RKHS [6]

 

While most distance-measures between distributions such as the widely used Kullback–Leibler divergence either require density estimation (either parametrically or nonparametrically) or space partitioning/bias correction strategies,[6] the MMD is easily estimated as an empirical mean which is concentrated around the true value of the MMD. The characterization of this distance as the maximum mean discrepancy refers to the fact that computing the MMD is equivalent to finding the RKHS function that maximizes the difference in expectations between the two probability distributions

 

a form of integral probability metric.

Kernel two-sample test edit

Given n training examples from   and m samples from  , one can formulate a test statistic based on the empirical estimate of the MMD

 

to obtain a two-sample test [15] of the null hypothesis that both samples stem from the same distribution (i.e.  ) against the broad alternative  .

Density estimation via kernel embeddings edit

Although learning algorithms in the kernel embedding framework circumvent the need for intermediate density estimation, one may nonetheless use the empirical embedding to perform density estimation based on n samples drawn from an underlying distribution  . This can be done by solving the following optimization problem [6][16]

  subject to  

where the maximization is done over the entire space of distributions on   Here,   is the kernel embedding of the proposed density   and   is an entropy-like quantity (e.g. Entropy, KL divergence, Bregman divergence). The distribution which solves this optimization may be interpreted as a compromise between fitting the empirical kernel means of the samples well, while still allocating a substantial portion of the probability mass to all regions of the probability space (much of which may not be represented in the training examples). In practice, a good approximate solution of the difficult optimization may be found by restricting the space of candidate densities to a mixture of M candidate distributions with regularized mixing proportions. Connections between the ideas underlying Gaussian processes and conditional random fields may be drawn with the estimation of conditional probability distributions in this fashion, if one views the feature mappings associated with the kernel as sufficient statistics in generalized (possibly infinite-dimensional) exponential families.[6]

Measuring dependence of random variables edit

A measure of the statistical dependence between random variables   and   (from any domains on which sensible kernels can be defined) can be formulated based on the Hilbert–Schmidt Independence Criterion [17]

 

and can be used as a principled replacement for mutual information, Pearson correlation or any other dependence measure used in learning algorithms. Most notably, HSIC can detect arbitrary dependencies (when a characteristic kernel is used in the embeddings, HSIC is zero if and only if the variables are independent), and can be used to measure dependence between different types of data (e.g. images and text captions). Given n i.i.d. samples of each random variable, a simple parameter-free unbiased estimator of HSIC which exhibits concentration about the true value can be computed in   time,[6] where the Gram matrices of the two datasets are approximated using   with  . The desirable properties of HSIC have led to the formulation of numerous algorithms which utilize this dependence measure for a variety of common machine learning tasks such as: feature selection (BAHSIC [18]), clustering (CLUHSIC [19]), and dimensionality reduction (MUHSIC [20]).

HSIC can be extended to measure the dependence of multiple random variables. The question of when HSIC captures independence in this case has recently been studied:[21] for more than two variables

  • on  : the characteristic property of the individual kernels remains an equivalent condition.
  • on general domains: the characteristic property of the kernel components is necessary but not sufficient.

Kernel belief propagation edit

Belief propagation is a fundamental algorithm for inference in graphical models in which nodes repeatedly pass and receive messages corresponding to the evaluation of conditional expectations. In the kernel embedding framework, the messages may be represented as RKHS functions and the conditional distribution embeddings can be applied to efficiently compute message updates. Given n samples of random variables represented by nodes in a Markov random field, the incoming message to node t from node u can be expressed as

 

if it assumed to lie in the RKHS. The kernel belief propagation update message from t to node s is then given by [2]

 

where   denotes the element-wise vector product,   is the set of nodes connected to t excluding node s,  ,   are the Gram matrices of the samples from variables  , respectively, and   is the feature matrix for the samples from  .

Thus, if the incoming messages to node t are linear combinations of feature mapped samples from  , then the outgoing message from this node is also a linear combination of feature mapped samples from  . This RKHS function representation of message-passing updates therefore produces an efficient belief propagation algorithm in which the potentials are nonparametric functions inferred from the data so that arbitrary statistical relationships may be modeled.[2]

Nonparametric filtering in hidden Markov models edit

In the hidden Markov model (HMM), two key quantities of interest are the transition probabilities between hidden states   and the emission probabilities   for observations. Using the kernel conditional distribution embedding framework, these quantities may be expressed in terms of samples from the HMM. A serious limitation of the embedding methods in this domain is the need for training samples containing hidden states, as otherwise inference with arbitrary distributions in the HMM is not possible.

One common use of HMMs is filtering in which the goal is to estimate posterior distribution over the hidden state   at time step t given a history of previous observations   from the system. In filtering, a belief state   is recursively maintained via a prediction step (where updates   are computed by marginalizing out the previous hidden state) followed by a conditioning step (where updates   are computed by applying Bayes' rule to condition on a new observation).[2] The RKHS embedding of the belief state at time t+1 can be recursively expressed as

 

by computing the embeddings of the prediction step via the kernel sum rule and the embedding of the conditioning step via kernel Bayes' rule. Assuming a training sample   is given, one can in practice estimate

 

and filtering with kernel embeddings is thus implemented recursively using the following updates for the weights   [2]

 
 

where   denote the Gram matrices of   and   respectively,   is a transfer Gram matrix defined as   and  

Support measure machines edit

The support measure machine (SMM) is a generalization of the support vector machine (SVM) in which the training examples are probability distributions paired with labels  .[22] SMMs solve the standard SVM dual optimization problem using the following expected kernel

 

which is computable in closed form for many common specific distributions   (such as the Gaussian distribution) combined with popular embedding kernels   (e.g. the Gaussian kernel or polynomial kernel), or can be accurately empirically estimated from i.i.d. samples   via

 

Under certain choices of the embedding kernel  , the SMM applied to training examples   is equivalent to a SVM trained on samples  , and thus the SMM can be viewed as a flexible SVM in which a different data-dependent kernel (specified by the assumed form of the distribution  ) may be placed on each training point.[22]

Domain adaptation under covariate, target, and conditional shift edit

The goal of domain adaptation is the formulation of learning algorithms which generalize well when the training and test data have different distributions. Given training examples   and a test set   where the   are unknown, three types of differences are commonly assumed between the distribution of the training examples   and the test distribution  :[23][24]

  1. Covariate shift in which the marginal distribution of the covariates changes across domains:  
  2. Target shift in which the marginal distribution of the outputs changes across domains:  
  3. Conditional shift in which   remains the same across domains, but the conditional distributions differ:  . In general, the presence of conditional shift leads to an ill-posed problem, and the additional assumption that   changes only under location-scale (LS) transformations on   is commonly imposed to make the problem tractable.

By utilizing the kernel embedding of marginal and conditional distributions, practical approaches to deal with the presence of these types of differences between training and test domains can be formulated. Covariate shift may be accounted for by reweighting examples via estimates of the ratio   obtained directly from the kernel embeddings of the marginal distributions of   in each domain without any need for explicit estimation of the distributions.[24] Target shift, which cannot be similarly dealt with since no samples from   are available in the test domain, is accounted for by weighting training examples using the vector   which solves the following optimization problem (where in practice, empirical approximations must be used) [23]

  subject to  

To deal with location scale conditional shift, one can perform a LS transformation of the training points to obtain new transformed training data   (where   denotes the element-wise vector product). To ensure similar distributions between the new transformed training samples and the test data,   are estimated by minimizing the following empirical kernel embedding distance [23]

 

In general, the kernel embedding methods for dealing with LS conditional shift and target shift may be combined to find a reweighted transformation of the training data which mimics the test distribution, and these methods may perform well even in the presence of conditional shifts other than location-scale changes.[23]

Domain generalization via invariant feature representation edit

Given N sets of training examples sampled i.i.d. from distributions  , the goal of domain generalization is to formulate learning algorithms which perform well on test examples sampled from a previously unseen domain   where no data from the test domain is available at training time. If conditional distributions   are assumed to be relatively similar across all domains, then a learner capable of domain generalization must estimate a functional relationship between the variables which is robust to changes in the marginals  . Based on kernel embeddings of these distributions, Domain Invariant Component Analysis (DICA) is a method which determines the transformation of the training data that minimizes the difference between marginal distributions while preserving a common conditional distribution shared between all training domains.[25] DICA thus extracts invariants, features that transfer across domains, and may be viewed as a generalization of many popular dimension-reduction methods such as kernel principal component analysis, transfer component analysis, and covariance operator inverse regression.[25]

Defining a probability distribution   on the RKHS   with

 

DICA measures dissimilarity between domains via distributional variance which is computed as

 

where

 

so   is a   Gram matrix over the distributions from which the training data are sampled. Finding an orthogonal transform onto a low-dimensional subspace B (in the feature space) which minimizes the distributional variance, DICA simultaneously ensures that B aligns with the bases of a central subspace C for which   becomes independent of   given   across all domains. In the absence of target values  , an unsupervised version of DICA may be formulated which finds a low-dimensional subspace that minimizes distributional variance while simultaneously maximizing the variance of   (in the feature space) across all domains (rather than preserving a central subspace).[25]

Distribution regression edit

In distribution regression, the goal is to regress from probability distributions to reals (or vectors). Many important machine learning and statistical tasks fit into this framework, including multi-instance learning, and point estimation problems without analytical solution (such as hyperparameter or entropy estimation). In practice only samples from sampled distributions are observable, and the estimates have to rely on similarities computed between sets of points. Distribution regression has been successfully applied for example in supervised entropy learning, and aerosol prediction using multispectral satellite images.[26]

Given   training data, where the   bag contains samples from a probability distribution   and the   output label is  , one can tackle the distribution regression task by taking the embeddings of the distributions, and learning the regressor from the embeddings to the outputs. In other words, one can consider the following kernel ridge regression problem  

 

where

 

with a   kernel on the domain of  -s  ,   is a kernel on the embedded distributions, and   is the RKHS determined by  . Examples for   include the linear kernel  , the Gaussian kernel  , the exponential kernel  , the Cauchy kernel  , the generalized t-student kernel  , or the inverse multiquadrics kernel  .

The prediction on a new distribution   takes the simple, analytical form

 

where  ,  ,  ,  . Under mild regularity conditions this estimator can be shown to be consistent and it can achieve the one-stage sampled (as if one had access to the true  -s) minimax optimal rate.[26] In the   objective function  -s are real numbers; the results can also be extended to the case when  -s are  -dimensional vectors, or more generally elements of a separable Hilbert space using operator-valued   kernels.

Example edit

In this simple example, which is taken from Song et al.,[2]   are assumed to be discrete random variables which take values in the set   and the kernel is chosen to be the Kronecker delta function, so  . The feature map corresponding to this kernel is the standard basis vector  . The kernel embeddings of such a distributions are thus vectors of marginal probabilities while the embeddings of joint distributions in this setting are   matrices specifying joint probability tables, and the explicit form of these embeddings is

 
 

The conditional distribution embedding operator,

 

is in this setting a conditional probability table

 

and

 

Thus, the embeddings of the conditional distribution under a fixed value of   may be computed as

 

In this discrete-valued setting with the Kronecker delta kernel, the kernel sum rule becomes

 

The kernel chain rule in this case is given by

 

References edit

  1. ^ a b A. Smola, A. Gretton, L. Song, B. Schölkopf. (2007). A Hilbert Space Embedding for Distributions Archived 2013-12-15 at the Wayback Machine. Algorithmic Learning Theory: 18th International Conference. Springer: 13–31.
  2. ^ a b c d e f g h i j k l m n L. Song, K. Fukumizu, F. Dinuzzo, A. Gretton (2013). Kernel Embeddings of Conditional Distributions: A unified kernel framework for nonparametric inference in graphical models. IEEE Signal Processing Magazine 30: 98–111.
  3. ^ J. Shawe-Taylor, N. Christianini. (2004). Kernel Methods for Pattern Analysis. Cambridge University Press, Cambridge, UK.
  4. ^ T. Hofmann, B. Schölkopf, A. Smola. (2008). Kernel Methods in Machine Learning. The Annals of Statistics 36(3):1171–1220.
  5. ^ Muandet, Krikamol; Fukumizu, Kenji; Sriperumbudur, Bharath; Schölkopf, Bernhard (2017-06-28). "Kernel Mean Embedding of Distributions: A Review and Beyond". Foundations and Trends in Machine Learning. 10 (1–2): 1–141. arXiv:1605.09522. doi:10.1561/2200000060. ISSN 1935-8237.
  6. ^ a b c d e f g h i L. Song. (2008) Learning via Hilbert Space Embedding of Distributions. PhD Thesis, University of Sydney.
  7. ^ K. Fukumizu, A. Gretton, X. Sun, and B. Schölkopf (2008). Kernel measures of conditional independence. Advances in Neural Information Processing Systems 20, MIT Press, Cambridge, MA.
  8. ^ a b c L. Song, J. Huang, A. J. Smola, K. Fukumizu. (2009).Hilbert space embeddings of conditional distributions. Proc. Int. Conf. Machine Learning. Montreal, Canada: 961–968.
  9. ^ *Steinwart, Ingo; Christmann, Andreas (2008). Support Vector Machines. New York: Springer. ISBN 978-0-387-77241-7.
  10. ^ Sriperumbudur, B. K.; Fukumizu, K.; Lanckriet, G.R.G. (2011). "Universality, Characteristic Kernels and RKHS Embedding of Measures". Journal of Machine Learning Research. 12 (70).
  11. ^ Liang, Percy (2016), CS229T/STAT231: Statistical Learning Theory (PDF), Stanford lecture notes
  12. ^ Sriperumbudur, B. K.; Fukumizu, K.; Lanckriet, G.R.G. (2010). On the relation between universality, characteristic kernels and RKHS embedding of measures. Proceedings of the Thirteenth International Conference on Artificial Intelligence and Statistics. Italy.
  13. ^ Micchelli, C.A.; Xu, Y.; Zhang, H. (2006). "Universal Kernels". Journal of Machine Learning Research. 7 (95): 2651–2667.
  14. ^ S. Grunewalder, G. Lever, L. Baldassarre, S. Patterson, A. Gretton, M. Pontil. (2012). Conditional mean embeddings as regressors. Proc. Int. Conf. Machine Learning: 1823–1830.
  15. ^ A. Gretton, K. Borgwardt, M. Rasch, B. Schölkopf, A. Smola. (2012). A kernel two-sample test. Journal of Machine Learning Research, 13: 723–773.
  16. ^ M. Dudík, S. J. Phillips, R. E. Schapire. (2007). Maximum Entropy Distribution Estimation with Generalized Regularization and an Application to Species Distribution Modeling. Journal of Machine Learning Research, 8: 1217–1260.
  17. ^ A. Gretton, O. Bousquet, A. Smola, B. Schölkopf. (2005). Measuring statistical dependence with Hilbert–Schmidt norms. Proc. Intl. Conf. on Algorithmic Learning Theory: 63–78.
  18. ^ L. Song, A. Smola, A. Gretton, K. Borgwardt, J. Bedo. (2007). Supervised feature selection via dependence estimation. Proc. Intl. Conf. Machine Learning, Omnipress: 823–830.
  19. ^ L. Song, A. Smola, A. Gretton, K. Borgwardt. (2007). A dependence maximization view of clustering. Proc. Intl. Conf. Machine Learning. Omnipress: 815–822.
  20. ^ L. Song, A. Smola, K. Borgwardt, A. Gretton. (2007). Colored maximum variance unfolding. Neural Information Processing Systems.
  21. ^ Zoltán Szabó, Bharath K. Sriperumbudur. Characteristic and Universal Tensor Product Kernels. Journal of Machine Learning Research, 19:1–29, 2018.
  22. ^ a b K. Muandet, K. Fukumizu, F. Dinuzzo, B. Schölkopf. (2012). Learning from Distributions via Support Measure Machines. Advances in Neural Information Processing Systems: 10–18.
  23. ^ a b c d K. Zhang, B. Schölkopf, K. Muandet, Z. Wang. (2013). Domain adaptation under target and conditional shift. Journal of Machine Learning Research, 28(3): 819–827.
  24. ^ a b A. Gretton, A. Smola, J. Huang, M. Schmittfull, K. Borgwardt, B. Schölkopf. (2008). Covariate shift and local learning by distribution matching. In J. Quinonero-Candela, M. Sugiyama, A. Schwaighofer, N. Lawrence (eds.). Dataset shift in machine learning, MIT Press, Cambridge, MA: 131–160.
  25. ^ a b c K. Muandet, D. Balduzzi, B. Schölkopf. (2013).Domain Generalization Via Invariant Feature Representation. 30th International Conference on Machine Learning.
  26. ^ a b Z. Szabó, B. Sriperumbudur, B. Póczos, A. Gretton. Learning Theory for Distribution Regression. Journal of Machine Learning Research, 17(152):1–40, 2016.

External links edit

  • Information Theoretical Estimators toolbox (distribution regression demonstration).