نتایج جستجو برای: sequential forward feature selection method

تعداد نتایج: 2206699  

2004
Ludmila Kuncheva C. Whitaker P. Cockcroft Z. S. Hoare

Suppose that the only available information in a multi-class problem are expert estimates of the conditional probabilities of occurrence for a set of binary features. The aim is to select a subset of features to be measured in subsequent data collection experiments. In the lack of any information about the dependencies between the features, we assume that all features are conditionally independ...

Journal: :CoRR 2017
Yifan Chen Xiang Zhao

Top-N recommender systems typically utilize side information to address the problem of data sparsity. As nowadays side information is growing towards high dimensionality, the performances of existing methods deteriorate in terms of both effectiveness and efficiency, which imposes a severe technical challenge. In order to take advantage of high-dimensional side information, we propose in this pa...

2004
Ludmila I. Kuncheva Christopher J. Whitaker Peter D. Cockcroft Z. S. J. Hoare

Suppose that the only available information in a multi-class problem are expert estimates of the conditional probabilities of occurrence for a set of binary features. The aim is to select a subset of features to be measured in subsequent data collection experiments. In the lack of any information about the dependencies between the features, we assume that all features are conditionally independ...

2004
V. C. Chen

In this paper, we introduce the basic concepts of some state-of-the-art classification methods, including independent component analysis (ICA), principal component analysis (PCA), Bayes method, and support vector machine (SVM) or kernel machine. We discuss their function in the classification and evaluate their performance for different applications. 1 STATISTICAL CLASSIFICATION Classification ...

Journal: :Bioinformatics 2006
Chao Sima Edward R. Dougherty

MOTIVATION High-throughput technologies for rapid measurement of vast numbers of biological variables offer the potential for highly discriminatory diagnosis and prognosis; however, high dimensionality together with small samples creates the need for feature selection, while at the same time making feature-selection algorithms less reliable. Feature selection must typically be carried out from ...

2005
Domonkos Tikk Szilveszter Kovács Tamás D. Gedeon Kok Wai Wong

This paper presents a feature ranking method adapted to fuzzy modelling with output from a continuous range. Existing feature selection/ranking techniques are mostly suitable for classification problems, where the range of the output is discrete. These techniques result in a ranking of the input feature (variables). Our approach exploits an arbitrary fuzzy clustering of the model output data. U...

2003
Alexey Tsymbal Mykola Pechenizkiy Pádraig Cunningham

Ensembles of learnt models constitute one of the main current directions in machine learning and data mining. Ensembles allow us to achieve higher accuracy, which is often not achievable with single models. It was shown theoretically and experimentally that in order for an ensemble to be effective, it should consist of high-accuracy base classifiers that should have high diversity in their pred...

2003
Domonkos Tikk Tamás D. Gedeon Kok Wai Wong

This paper presents a feature ranking method adapted to fuzzy modelling with output from a continuous range. Existing feature selection/ranking techniques are mostly suitable for classification problems, where the range of the output is discrete. These techniques result in a ranking of the input feature (variables). Our approach exploits an arbitrary fuzzy clustering of the model output data. U...

Journal: :Remote Sensing 2017
Yuanyuan Fu Chunjiang Zhao Jihua Wang Xiuping Jia Guijun Yang Xiaoyu Song Haikuan Feng

Due to the advances in hyperspectral sensor technology, hyperspectral images have gained great attention in precision agriculture. In practical applications, vegetation classification is usually required to be conducted first and then the vegetation of interest is discriminated from the others. This study proposes an integrated scheme (SpeSpaVS_ClassPair_ScatterMatrix) for vegetation classifica...

2013
João André Gonçalves Sargo

The aim of the present paper is to develop efficient feature selection approaches. A novel wrapper methodology for feature selection is formulated based on the Fish School Search (FSS) optimization algorithm, intended to cope with premature convergence. In order to use this population based optimization algorithm in feature selection problems, the use of binary encoding for the internal mechani...

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