In the era of big data, it is highly desired to develop efficient machine learning algorithms to tackle massive data challenges such as storage bottleneck, algorithmic scalability, and interpretability. In this paper, we develop a novel efficient classification algorithm, called fast polynomial kernel classification (FPC), to conquer the scalability and storage challenges. Our main tools are a suitable selected feature mapping based on polynomial kernels and an alternating direction method of multipliers (ADMM) algorithm for a related non-smooth convex optimization problem. Fast learning rates as well as feasibility verifications including the convergence of ADMM and the selection of center points are established to justify theoretical beha...
[EN] According to recent reports, over the course of 2018, the volume of data generated, captured an...
A new incremental learning algorithm is described which approximates the maximal margin hyperplane ...
In this paper, we propose a new classifier named kernel group sparse representation via structural a...
Traditional machine learning has been largely concerned with developing techniques for small or mode...
Huge data sets containing millions of training examples with a large number of attributes are relati...
This paper proposes a new learning system of low computational cost, called fast polynomial kernel l...
For classification problems with millions of training examples or dimensions, accuracy, training and...
For classification problems with millions of training examples or dimensions, accuracy, training and...
With an immense growth in data, there is a great need for training and testing machine learning mode...
We present fast classification techniques for sparse generalized linear and additive models. These t...
In this paper, we present a new adaptive feature scaling scheme for ultrahigh-dimensional feature se...
Abstract. The recently proposed Polynomial MPMC Cascade (PMC) algorithm is a nonparametric classifie...
Polynomial Support Vector Machine models of degree d are linear functions in a feature space of mono...
Kernel matrices are crucial in many learning tasks such as support vector machines or kernel ridge r...
Many Kernel Learning Algorithms(KLA), including Support Vector Machine (SVM), result in a Kernel Mac...
[EN] According to recent reports, over the course of 2018, the volume of data generated, captured an...
A new incremental learning algorithm is described which approximates the maximal margin hyperplane ...
In this paper, we propose a new classifier named kernel group sparse representation via structural a...
Traditional machine learning has been largely concerned with developing techniques for small or mode...
Huge data sets containing millions of training examples with a large number of attributes are relati...
This paper proposes a new learning system of low computational cost, called fast polynomial kernel l...
For classification problems with millions of training examples or dimensions, accuracy, training and...
For classification problems with millions of training examples or dimensions, accuracy, training and...
With an immense growth in data, there is a great need for training and testing machine learning mode...
We present fast classification techniques for sparse generalized linear and additive models. These t...
In this paper, we present a new adaptive feature scaling scheme for ultrahigh-dimensional feature se...
Abstract. The recently proposed Polynomial MPMC Cascade (PMC) algorithm is a nonparametric classifie...
Polynomial Support Vector Machine models of degree d are linear functions in a feature space of mono...
Kernel matrices are crucial in many learning tasks such as support vector machines or kernel ridge r...
Many Kernel Learning Algorithms(KLA), including Support Vector Machine (SVM), result in a Kernel Mac...
[EN] According to recent reports, over the course of 2018, the volume of data generated, captured an...
A new incremental learning algorithm is described which approximates the maximal margin hyperplane ...
In this paper, we propose a new classifier named kernel group sparse representation via structural a...