Skip to main content

Simple implementation of the papar Adaptive Feature-Space Conformal Transformation for Imbalanced-Data Learning

Project description

Adaptive Feature-Space Conformal Transformation for Imbalanced-Data Learning for Kernel SVM

A simple implementation of Adaptive Feature-Space Conformal Transformationfor any kernel SVM proposed in [2]

Core concept

In [1], the idea of inceasing the separability (margin) of classes for kernel SVM, can be achieved by magnify the spatial resolution in the region around the boundary in the hyperspace, the non-linear serface where $\textbf{x}$ has been already mapped to $\phi(\textbf{x})$ using kernel tricks.

Given $K(\textbf{x}, \textbf{x}') = \langle \phi(\textbf{x}), \phi(\textbf{x}')\rangle$ is a kernel function corresponding to the non-linear mapping function $\phi(\textbf{x})$ for a kernel SVM. We can employ a conformal transformation of kernel:

$$ \begin{aligned} \tilde{K}(\textbf{x}, \textbf{x}') = D(\textbf{x})D(\textbf{x}')K(\textbf{x}, \textbf{x}') \end{aligned} $$

to enlarge the distance near the boundary in non-linear surface in higher dimension by choosing appropriate $D(\textbf{x})$ that has a high value when $\textbf{x}$ is close to the boundary and small when it is far away from the boundary.

In [1], it has been suggested that $D(\textbf{x})$ can be chosen as:

$$ \begin{aligned} D(\textbf{x}) = \sum_{\textbf{x}_k \epsilon SV} e^{ -\frac{1}{\tau_k^{2}}||\textbf{x} - \textbf{x}_k||^{2}} \end{aligned} $$

where

$$ \begin{aligned} \tau_k^{2} = \frac{1}{M} \sum_{\textbf{x}_s \epsilon SV_k} || \textbf{x}_s - \textbf{x}_k||^{2} || \end{aligned} $$

where $SV_{k}$ denotes a set of $M$ support vectors $\textbf{x}_{s}$ that are nearest to support vector $\textbf{x}_k$

In this implementation, we use the $\tau_k^{2}$ proposed in [2]:

$$ \begin{aligned} \tau_k^{2} = AVG_{\textbf{x}_s \epsilon {\textbf{x}_s \epsilon SV | \ || \phi{(\textbf{x}_s)} - \phi{(\textbf{x}_k)} ||^2 < M, \ y_s \ne y_k, }} (|| \phi{(\textbf{x}_s)} - \phi{(\textbf{x}_k)} ||^2) \end{aligned} $$

where $M$ is the mean distance squared (in hyperspace) of the nearest and the farthest support vector from $\phi(\textbf{x}_k)$. It has been mentioned in [2] that by setting $\tau_k$ like this will take into account the spatial distribution of the support vectors in hyperspace.

Note that given kernel function, $K(\textbf{x}, \textbf{x}')$ is known but the mapping function $\phi(\textbf{x})$ is unknown, we can still calculate the distance in hyperspace using Kernel trick

$$ \begin{aligned} | \phi{(\textbf{x}_s)} - \phi{(\textbf{x}_k)} ||^2 = K(\textbf{x}_s, \textbf{x}_s) + K(\textbf{x}_k, \textbf{x}_k) - 2K(\textbf{x}_s, \textbf{x}_k) \end{aligned} $$

Dealing with Imbalaned
It has been stated in [2] that the $\tau_k^{2}$ will be scaled with a larger factor $\eta_p$ if $\textbf{x}_k$ belong to minority class and will be scaled down with a factor $\eta_n$ to address imbalance issue. The paper suggest that we should choose $\eta_p$ and $\eta_n$ proportional to the skew of support vectors. In this version of implementation, I set $\eta_p$ = 1 and $\eta_n = \frac{|SV^{+}|}{|SV^{-}|}$ for now.

Example Usage

installation

pip install afc-svm-imbalanced-learning

Usage

from afc_imbalanced_learning import AFSCTSvm

afc_svm = AFSCTSvm()
afc_svm.fit(X_train, y_train)
y_pred = afc_svm.predict(X_test)

what .fit(X_train, y_train) does is it train kernel svm with laplacian kernel $K(\textbf{x}, \textbf{x}') = e^{-\gamma|\textbf{x} - \textbf{x}'|}$ as used in [2], then it estimates the location of boundary by extracting support vectors and it then calculate $\tau_k$ for every support vectors and then calculate $D(\textbf{x})$ to use for conformal transformation where we'll obtain $\tilde{K}(\textbf{x}, \textbf{x})$ to train our new SVM. We'll then use the new improved Kernel SVM to predict when .predict is called.

Custom initial kernel
you can use your own custom kernel function by parse it to kernel parameter

from sklearn.metrics.pairwise import rbf_kernel
afc_svm = AFSCTSvm(kernel=rbf_kernel)
afc_svm.fit(X_train, y_train)

Note that in this implementation, cost-sensitive svm will be used by default

References

[1] Wu, Si and Shun‐ichi Amari. “Conformal Transformation of Kernel Functions: A Data-Dependent Way to Improve Support Vector Machine Classifiers.” Neural Processing Letters 15 (2002): 59-67.
[2] Wu, Gang & Chang, Edward. (2003). Adaptive Feature-Space Conformal Transformation for Imbalanced-Data Learning. Proceedings, Twentieth International Conference on Machine Learning. 2. 816-823.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

afc_svm_imbalanced_learning-0.3.0.tar.gz (5.5 kB view details)

Uploaded Source

Built Distribution

File details

Details for the file afc_svm_imbalanced_learning-0.3.0.tar.gz.

File metadata

File hashes

Hashes for afc_svm_imbalanced_learning-0.3.0.tar.gz
Algorithm Hash digest
SHA256 fa9e3be2f711dad2b1a15677830bb9acb9a5914632fd0cf2f717f2411734521e
MD5 42c9badd4c0773cf7ea20441517f9f7e
BLAKE2b-256 caefe59aab33697853ecacf53d7eb27b874d92b0200afe20ab2058de01d35ae3

See more details on using hashes here.

File details

Details for the file afc_svm_imbalanced_learning-0.3.0-py3-none-any.whl.

File metadata

File hashes

Hashes for afc_svm_imbalanced_learning-0.3.0-py3-none-any.whl
Algorithm Hash digest
SHA256 4fa30b991bec4b817106b4e49b7746406908dad47cc675aff5e43bba476ae3ba
MD5 efd93e4503d108b957cb88aa813625a6
BLAKE2b-256 25bee71cba0586ed14bd12af815b52fd81f0d69f8f87784b2ec41e9e5520d387

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page