.. _library_kernel_svm_classifier:

``kernel_svm_classifier``
=========================

Kernel support vector machine classifier using one-vs-rest dual margin
models with linear, polynomial, and radial basis function kernels. The
implementation encodes tabular datasets using the shared linear encoder
pipeline so mixed continuous and categorical datasets are handled
consistently with the existing linear classifiers.

The library implements the ``classifier_protocol`` defined in the
``classification_protocols`` library. It provides predicates for
learning a classifier from a dataset, using it to make predictions,
estimating class probabilities, and exporting it as a list of predicate
clauses or to a file.

Datasets are represented as objects implementing the
``dataset_protocol`` protocol from the ``classification_protocols``
library. Continuous, categorical, and mixed-feature datasets are
supported.

API documentation
-----------------

Open the
`../../docs/library_index.html#kernel_svm_classifier <../../docs/library_index.html#kernel_svm_classifier>`__
link in a web browser.

Loading
-------

To load this library, load the ``loader.lgt`` file:

::

   | ?- logtalk_load(kernel_svm_classifier(loader)).

Testing
-------

To test this library predicates, load the ``tester.lgt`` file:

::

   | ?- logtalk_load(kernel_svm_classifier(tester)).

Features
--------

- **Binary and Multiclass Classification**: Learns one-vs-rest dual
  models and predicts the class with the highest decision score.
- **Multiple Kernels**: Supports ``linear``,
  ``polynomial(Degree, Gamma, Coef0)``, and ``rbf(Gamma)`` kernels.
- **Mixed Features**: Reuses the shared tabular encoders for continuous
  and categorical attributes, including missing-value indicators.
- **Probability Estimation**: Provides class probabilities using a
  softmax over kernel decision scores.
- **Regularized Training**: Supports configurable learning-rate
  scheduling, tolerance, and L2 regularization.
- **Classifier Export**: Learned classifiers can be exported as
  predicate clauses or written to a file.

Options
-------

The ``learn/3`` predicate supports these options:

- ``kernel/1`` - kernel function to use (default: ``linear``)
- ``learning_rate/1`` - base learning rate for the dual optimization
  loop (default: ``0.5``)
- ``learning_schedule/1`` - learning-rate schedule, either ``constant``
  or ``inverse_scaling(Power)`` (default: ``constant``)
- ``maximum_iterations/1`` - maximum number of optimization epochs
  (default: ``25``)
- ``tolerance/1`` - convergence threshold for the maximum parameter
  update (default: ``1.0e-5``)
- ``l2_regularization/1`` - L2 penalty factor applied during
  optimization (default: ``0.001``)
- ``feature_scaling/1`` - whether to standardize continuous attributes
  before encoding (default: ``true``)

Usage
-----

Learning a classifier
~~~~~~~~~~~~~~~~~~~~~

::

   | ?- kernel_svm_classifier::learn(weather, Classifier).

   | ?- kernel_svm_classifier::learn(mixed, Classifier, [kernel(rbf(0.5)), maximum_iterations(50)]).

Making predictions
~~~~~~~~~~~~~~~~~~

::

   | ?- kernel_svm_classifier::learn(mixed, Classifier),
        kernel_svm_classifier::predict(Classifier, [age-35, income-65000, student-yes, credit_rating-fair], Class).

   | ?- kernel_svm_classifier::learn(weather, Classifier),
        kernel_svm_classifier::predict_probabilities(Classifier, [outlook-sunny, temperature-hot, humidity-high, windy-false], Probabilities).

Exporting the classifier
~~~~~~~~~~~~~~~~~~~~~~~~

::

   | ?- kernel_svm_classifier::learn(weather, Classifier),
        kernel_svm_classifier::export_to_clauses(weather, Classifier, classify, Clauses).

   | ?- kernel_svm_classifier::learn(weather, Classifier),
        kernel_svm_classifier::export_to_file(weather, Classifier, classify, 'classifier.pl').

Classifier representation
-------------------------

The learned classifier is represented as a compound term with the form:

::

   kernel_svm_classifier(Classes, Encoders, Kernel, TrainingRows, Models, Options)

Where:

- ``Classes``: list of class labels
- ``Encoders``: list of continuous scaling descriptors and categorical
  value encoders
- ``Kernel``: selected kernel specification
- ``TrainingRows``: encoded feature vectors for the training examples
- ``Models``: list of ``class_model(Class, Bias, Coefficients)`` terms
- ``Options``: merged training options used to learn the classifier

When exported using ``export_to_clauses/4`` or ``export_to_file/4``,
this classifier term is serialized directly as the single argument of
the generated predicate clause so that the exported model can be loaded
and reused as-is.

References
----------

1. Cortes, C. and Vapnik, V. (1995). "Support-Vector Networks".
2. Scholkopf, B. and Smola, A.J. (2002). "Learning with Kernels".
3. Bishop, C.M. (2006). "Pattern Recognition and Machine Learning".
   Chapter 7.
