Journal Article10.1109/TPAMI.2009.188
L₂ Kernel Classification
JooSeuk Kim,Clayton Scott +1 more
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TL;DR: This work proposes a kernel classifier that optimizes the L2 or integrated squared error of a “difference of densities” of the Gaussian kernel and extends the method through the introduction of a natural regularization parameter, which allows it to remain competitive with the SVM in high dimensions.
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Abstract: Nonparametric kernel methods are widely used and proven to be successful in many statistical learning problems. Well--known examples include the kernel density estimate (KDE) for density estimation and the support vector machine (SVM) for classification. We propose a kernel classifier that optimizes the L2 or integrated squared error (ISE) of a “difference of densities.” We focus on the Gaussian kernel, although the method applies to other kernels suitable for density estimation. Like a support vector machine (SVM), the classifier is sparse and results from solving a quadratic program. We provide statistical performance guarantees for the proposed L2 kernel classifier in the form of a finite sample oracle inequality and strong consistency in the sense of both ISE and probability of error. A special case of our analysis applies to a previously introduced ISE-based method for kernel density estimation. For dimensionality greater than 15, the basic L2 kernel classifier performs poorly in practice. Thus, we extend the method through the introduction of a natural regularization parameter, which allows it to remain competitive with the SVM in high dimensions. Simulation results for both synthetic and real-world data are presented.
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Citations
Robust kernel density estimation
Joo Seuk Kim,Clayton Scott +1 more
- 12 May 2008
TL;DR: In this paper, the authors propose a method for robust kernel density estimation based on the inner product between a mapped test point and the centroid of mapped training points in kernel feature space.
Robust kernel density estimation
Joo Seuk Kim,Clayton Scott +1 more
TL;DR: This paper interprets a KDE with Gaussian kernel as the inner product between a mapped test point and the centroid of mapped training points in kernel feature space and proves the IRWLS method monotonically decreases its objective value at every iteration for a broad class of robust loss functions.
245
A data-level fusion approach for degradation modeling and prognostic analysis under multiple failure modes
TL;DR: A data-level fusion methodology to construct a composite failure-mode index, named FM-INDEX, via the fusion of multiple sensor data to better characterize the failure mode of an operating unit in real time, thus leading to better degradation modeling and prognostic analysis.
80
The integrated squared error estimation of parameters.
Jamal-Dine Chergui
- 01 Jan 1996
TL;DR: In this paper, the problem of estimation in the parametric case for discrete random variables was dealt with by the powerful method of probability generating function, which is facilitated by the power of probability generation function.
48
Direct learning of sparse changes in markov networks by density ratio estimation
TL;DR: In this article, instead of fitting two Markov network models separately to the two data sets and figuring out their difference, they directly learn the network structure change by estimating the ratio of Markov networks models.
References
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Chih-Chung Chang,Chih-Jen Lin +1 more
TL;DR: Issues such as solving SVM optimization problems theoretical convergence multiclass classification probability estimates and parameter selection are discussed in detail.
Support-Vector Networks
Corinna Cortes,Vladimir Vapnik +1 more
TL;DR: High generalization ability of support-vector networks utilizing polynomial input transformations is demonstrated and the performance of the support- vector network is compared to various classical learning algorithms that all took part in a benchmark study of Optical Character Recognition.
Least Squares Support Vector Machine Classifiers
TL;DR: A least squares version for support vector machine (SVM) classifiers that follows from solving a set of linear equations, instead of quadratic programming for classical SVM's.
An introduction to kernel-based learning algorithms
TL;DR: This paper provides an introduction to support vector machines, kernel Fisher discriminant analysis, and kernel principal component analysis, as examples for successful kernel-based learning methods.
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