We introduce an on-line classification algorithm based on the hierarchical partitioning of the feature space which provides a powerful performance under the defined empirical loss. The algorithm adaptively partitions the feature space and at each region trains a different classifier. As a final classification result algorithm adaptively combines the outputs of these basic models which enables it to create a linear piecewise classifier model that can work well under highly non-linear complex data. The introduced algorithm also have scalable computational complexity that scales linearly with dimension of the feature space, depth of the partitioning and number of processed data. Through experiments we show that the introduced algorithm outperf...
Inspired by the feedforward multilayer perceptron (FF-MLP), decision tree (DT) and extreme learning ...
The evaluation of the intrinsic complexity of a supervised domain plays an important role in devisin...
Selective ensemble learning is a technique that selects a subset of diverse and accurate basic model...
The authors study online supervised learning under the empirical zero-one loss and introduce a novel...
textThis research focused on the development of a hierarchical approach for classification that is ...
summary:In this paper we present a novel approach to decomposing high dimensional spaces using a mul...
In this paper, we study the binary classification problem in machine learning and introduce a novel ...
Surveillance sensors are a major source of unstructured Big Data. Discovering and recognizing spatio...
Recently, we have observed the traditional feature representations are being rapidly replaced by the...
The Reduction by Space Partitioning (RSP3) algorithm is a well-known data reduction technique. It su...
Recently the maximum margin criterion has been employed to learn a discriminative class hierarchical...
International audienceGoing beyond the traditional text classification, involving a few tens of clas...
The Internet of Things (IoT) generates lots of high-dimensional sensor intelligent data. The process...
In this paper, a novel hierarchical prototype-based approach for classification is proposed. This ap...
In kernel-based classification models, given limited computational power and storage capacity, opera...
Inspired by the feedforward multilayer perceptron (FF-MLP), decision tree (DT) and extreme learning ...
The evaluation of the intrinsic complexity of a supervised domain plays an important role in devisin...
Selective ensemble learning is a technique that selects a subset of diverse and accurate basic model...
The authors study online supervised learning under the empirical zero-one loss and introduce a novel...
textThis research focused on the development of a hierarchical approach for classification that is ...
summary:In this paper we present a novel approach to decomposing high dimensional spaces using a mul...
In this paper, we study the binary classification problem in machine learning and introduce a novel ...
Surveillance sensors are a major source of unstructured Big Data. Discovering and recognizing spatio...
Recently, we have observed the traditional feature representations are being rapidly replaced by the...
The Reduction by Space Partitioning (RSP3) algorithm is a well-known data reduction technique. It su...
Recently the maximum margin criterion has been employed to learn a discriminative class hierarchical...
International audienceGoing beyond the traditional text classification, involving a few tens of clas...
The Internet of Things (IoT) generates lots of high-dimensional sensor intelligent data. The process...
In this paper, a novel hierarchical prototype-based approach for classification is proposed. This ap...
In kernel-based classification models, given limited computational power and storage capacity, opera...
Inspired by the feedforward multilayer perceptron (FF-MLP), decision tree (DT) and extreme learning ...
The evaluation of the intrinsic complexity of a supervised domain plays an important role in devisin...
Selective ensemble learning is a technique that selects a subset of diverse and accurate basic model...