In this paper, we study the binary classification problem in machine learning and introduce a novel classification algorithm based on the 'Context Tree Weighting Method'. The introduced algorithm incrementally learns a classification model through sequential updates in the course of a given data stream, i.e., each data point is processed only once and forgotten after the classifier is updated, and asymptotically achieves the performance of the best piecewise linear classifiers defined by the 'context tree'. Since the computational complexity is only linear in the depth of the context tree, our algorithm is highly scalable and appropriate for real time processing. We present experimental results on several benchmark data sets and demonstrate...
[EN] Nowadays, there is an increasing demand for machine learning techniques which can deal with pro...
This paper considers the problem of online piecewise linear regression for big data applications. We...
We provide a new formulation for the problem of learning the optimal classification tree of a given ...
Supervised learning has become an essential part of data mining for industry, military, science and ...
We investigate the problem of sequential piecewise linear regression from a competitive framework. F...
We introduce a highly efficient online nonlinear regression algorithm. We process the data in a trul...
We introduce an on-line classification algorithm based on the hierarchical partitioning of the featu...
summary:We propose a new method to construct piecewise linear classifiers. This method constructs hy...
The paper presents a new binary classification method based on the minimization of the slack variabl...
The authors study online supervised learning under the empirical zero-one loss and introduce a novel...
This paper presents a binary classification algorithm that is based on the minimization of the energ...
Classifiers favoring sparse solutions, such as support vector machines, relevance vector machines, L...
Nonsmooth optimization provides efficient algorithms for solving many machine learning problems. In ...
In this work we are motivated by the question: "How to automatically adapt to, or learn, structure i...
Online algorithms are an important class of learning machines as they are extremely simple and compu...
[EN] Nowadays, there is an increasing demand for machine learning techniques which can deal with pro...
This paper considers the problem of online piecewise linear regression for big data applications. We...
We provide a new formulation for the problem of learning the optimal classification tree of a given ...
Supervised learning has become an essential part of data mining for industry, military, science and ...
We investigate the problem of sequential piecewise linear regression from a competitive framework. F...
We introduce a highly efficient online nonlinear regression algorithm. We process the data in a trul...
We introduce an on-line classification algorithm based on the hierarchical partitioning of the featu...
summary:We propose a new method to construct piecewise linear classifiers. This method constructs hy...
The paper presents a new binary classification method based on the minimization of the slack variabl...
The authors study online supervised learning under the empirical zero-one loss and introduce a novel...
This paper presents a binary classification algorithm that is based on the minimization of the energ...
Classifiers favoring sparse solutions, such as support vector machines, relevance vector machines, L...
Nonsmooth optimization provides efficient algorithms for solving many machine learning problems. In ...
In this work we are motivated by the question: "How to automatically adapt to, or learn, structure i...
Online algorithms are an important class of learning machines as they are extremely simple and compu...
[EN] Nowadays, there is an increasing demand for machine learning techniques which can deal with pro...
This paper considers the problem of online piecewise linear regression for big data applications. We...
We provide a new formulation for the problem of learning the optimal classification tree of a given ...