We consider the problem of kernel classification. Works on kernel regression have shown that the rate of decay of the prediction error with the number of samples for a large class of data-sets is well characterized by two quantities: the capacity and source of the data-set. In this work, we compute the decay rates for the misclassification (prediction) error under the Gaussian design, for data-sets satisfying source and capacity assumptions. We derive the rates as a function of the source and capacity coefficients for two standard kernel classification settings, namely margin-maximizing Support Vector Machines (SVM) and ridge classification, and contrast the two methods. As a consequence, we find that the known worst-case rates are loose fo...
In this paper we propose a new learning algorithm for kernel classifiers. Former approaches like Qua...
Kernel machines such as kernel SVM and kernel ridge regression usually con-struct high quality model...
Kernel approximation is commonly used to scale kernel-based algorithms to applications contain-ing a...
We consider the problem of kernel classification. While worst-case bounds on the decay rate of the p...
One well-known use of kernel density estimates is in nonparametric discriminant analysis, and its po...
Consider the problem of learning a kernel for use in SVM classification. We bound the estimation err...
Abstract: One well-known use of kernel density estimates is in nonparametric discriminant analysis, ...
We consider the problem of reconstructing a function from a finite set of noise-corrupted samples. T...
Learning from data under constraints on model complexity is studied in terms of rates of approximate...
We present distribution independent bounds on the generalization misclassification performance of a ...
We derive in this work new upper bounds for estimating the generalization error of kernel classifier...
AbstractA family of classification algorithms generated from Tikhonov regularization schemes are con...
Support Vector (SV) Machines combine several techniques from statistics, machine learning and neural...
We study the worst case error of kernel density estimates via subset approximation. A kernel density...
Kernel Learning is widely used in pattern recognition and classification problems. We look at the be...
In this paper we propose a new learning algorithm for kernel classifiers. Former approaches like Qua...
Kernel machines such as kernel SVM and kernel ridge regression usually con-struct high quality model...
Kernel approximation is commonly used to scale kernel-based algorithms to applications contain-ing a...
We consider the problem of kernel classification. While worst-case bounds on the decay rate of the p...
One well-known use of kernel density estimates is in nonparametric discriminant analysis, and its po...
Consider the problem of learning a kernel for use in SVM classification. We bound the estimation err...
Abstract: One well-known use of kernel density estimates is in nonparametric discriminant analysis, ...
We consider the problem of reconstructing a function from a finite set of noise-corrupted samples. T...
Learning from data under constraints on model complexity is studied in terms of rates of approximate...
We present distribution independent bounds on the generalization misclassification performance of a ...
We derive in this work new upper bounds for estimating the generalization error of kernel classifier...
AbstractA family of classification algorithms generated from Tikhonov regularization schemes are con...
Support Vector (SV) Machines combine several techniques from statistics, machine learning and neural...
We study the worst case error of kernel density estimates via subset approximation. A kernel density...
Kernel Learning is widely used in pattern recognition and classification problems. We look at the be...
In this paper we propose a new learning algorithm for kernel classifiers. Former approaches like Qua...
Kernel machines such as kernel SVM and kernel ridge regression usually con-struct high quality model...
Kernel approximation is commonly used to scale kernel-based algorithms to applications contain-ing a...