Least squares support vector machine

Least squares support vector machines (LS-SVM) are least squares versions of support vector machines (SVM), which are a set of related supervised learning methods that analyze data and recognize patterns, and which are used for classification and regression analysis. In this version one finds the solution by solving a set of linear equations instead of a convex quadratic programming (QP) problem for classical SVMs. Least squares SVM classifiers, were proposed by Suykens and Vandewalle.[1] LS-SVMs are a class of kernel-based learning methods.

From support vector machine to least squares support vector machine

Given a training set with input data and corresponding binary class labels , the SVM[2] classifier, according to Vapnik’s original formulation, satisfies the following conditions:

The spiral data for blue data point for red data point

Which is equivalent to

where is the nonlinear map from original space to the high (and possibly infinite) dimensional space.

Inseparable data

In case such a separating hyperplane does not exist, we introduce so-called slack variables such that

According to the structural risk minimization principle, the risk bound is minimized by the following minimization problem:

The result of the SVM classifier

To solve this problem, we could construct the Lagrangian function:

where are the Lagrangian multipliers. The optimal point will be in the saddle point of the Lagrangian function, and then we obtain

By substituting by its expression in the Lagrangian formed from the appropriate objective and constraints, we will get the following quadratic programming problem:

where is called the kernel function. Solving this QP problem subject to constraints in (8), we will get the hyperplane in the high-dimensional space and hence the classifier in the original space.

Least squares SVM formulation

The least squares version of the SVM classifier is obtained by reformulating the minimization problem as:

subject to the equality constraints:

The least squares SVM (LS-SVM) classifier formulation above implicitly corresponds to a regression interpretation with binary targets .

Using , we have

with Notice, that this error would also make sense for least squares data fitting, so that the same end results holds for the regression case.

Hence the LS-SVM classifier formulation is equivalent to

with and

The result of the LS-SVM classifier

Both and should be considered as hyperparameters to tune the amount of regularization versus the sum squared error. The solution does only depend on the ratio , therefore the original formulation uses only as tuning parameter. We use both and as parameters in order to provide a Bayesian interpretation to LS-SVM.

The solution of LS-SVM regressor will be obtained after we construct the Lagrangian function:

where are the Lagrange multipliers. The conditions for optimality are

Elimination of and will yield a linear system instead of a quadratic programming problem:

with , and . Here, is an identity matrix, and is the kernel matrix defined by .

Kernel function K

For the kernel function K(•, •) one typically has the following choices:

where , , , and are constants. Notice that the Mercer condition holds for all and values in the polynomial and RBF case, but not for all possible choices of and in the MLP case. The scale parameters , and determine the scaling of the inputs in the polynomial, RBF and MLP kernel function. This scaling is related to the bandwidth of the kernel in statistics, where it is shown that the bandwidth is an important parameter of the generalization behavior of a kernel method.

Bayesian interpretation for LS-SVM

A Bayesian interpretation of the SVM has been proposed by Smola et al. They showed that the use of different kernels in SVM can be regarded as defining different prior probability distributions on the functional space, as . Here is a constant and is the regularization operator corresponding to the selected kernel.

A general Bayesian evidence framework was developed by MacKay,[3][4][5] and MacKay has used it to the problem of regression, forward neural network and classification network. Provided data set , a model with parameter vector and a so-called hyperparameter or regularization parameter , Bayesian inference is constructed with 3 levels of inference:

We can see that Bayesian evidence framework is a unified theory for learning the model and model selection. Kwok used the Bayesian evidence framework to interpret the formulation of SVM and model selection. And he also applied Bayesian evidence framework to support vector regression.

Now, given the data points and the hyperparameters and of the model , the model parameters and are estimated by maximizing the posterior . Applying Bayes’ rule, we obtain:

Where is a normalizing constant such the integral over all possible and is equal to 1. We assume and are independent of the hyperparameter , and are conditional independent, i.e., we assume

When , the distribution of will approximate a uniform distribution. Furthermore, we assume and are Gaussian distribution, so we obtain the a priori distribution of and with to be:

Here is the dimensionality of the feature space, same as the dimensionality of .

The probability of is assumed to depend only on and . We assume that the data points are independently identically distributed (i.i.d.), so that:

In order to obtain the least square cost function, it is assumed that the probability of a data point is proportional to:

A Gaussian distribution is taken for the errors as:

It is assumed that the and are determined in such a way that the class centers and are mapped onto the target -1 and +1, respectively. The projections of the class elements follow a multivariate Gaussian distribution, which have variance .

Combining the preceding expressions, and neglecting all constants, Bayes’ rule becomes

The maximum posterior density estimates and are then be obtained by minimizing the negative logarithm of (26), so we arrive (10).

References

  1. Suykens, J.A.K.; Vandewalle, J. (1999) "Least squares support vector machine classifiers", Neural Processing Letters, 9 (3), 293-300.
  2. Vapnik, V. The nature of statistical learning theory. Springer-Verlag, New York, 1995
  3. MacKay, D.J.C. Bayesian Interpolation. Neural Computation, 4(3): 415-447, May 1992.
  4. MacKay, D.J.C. A practical Bayesian framework for backpropagation networks. Neural Computation, 4(3): 448-472, May 1992.
  5. MacKay, D.J.C. The evidence framework applied to classification networks. Neural Computation, 4(5): 720-736, Sept. 1992.

Bibliography

External links

This article is issued from Wikipedia - version of the 8/5/2015. The text is available under the Creative Commons Attribution/Share Alike but additional terms may apply for the media files.