This paper presents a novel method for simultaneous feature selection and classification by incorporating a robust L1-norm into the objective function of Minimax Probability Machine (MPM). A fractional programming framework is derived by using a bound on the misclassification error involving the mean and covariance of the data. Furthermore, the problems are solved by the Quadratic Interpolation method. Experiments show that our methods can select fewer features to improve the generalization compared to MPM, which illustrates the effectiveness of the proposed algorithms
22nd International Conference on Pattern Recognition, ICPR 2014, Sweden, 24-28 August 2014This paper...
Abstract. This paper presents an algorithmic framework for feature selection, which selects a subset...
Feature selection methods are used in machine learning and data analysis to select a subset of featu...
In this paper, a kernel-free minimax probability machine model for imbalanced classification is prop...
The Minimax Probability Machine Classification (MPMC) framework [Lanckriet et al., 2002] builds cla...
In this paper, we propose a novel binary classification method called the kernel-free quadratic surf...
When constructing a classifier, the probability of correct classification of future data points shou...
Abstract. We propose the so-called Support Feature Machine (SFM) as a novel approach to feature sele...
Abstract—This paper presents feature selection algorithms for multilayer perceptrons (MLPs) and mult...
Feature transformation (FT) for dimensionality reduction has been deeply studied in the past decades...
Feature selection plays an important role in many machine learning and data mining applications. In ...
The problem of discriminating between two finite point sets in n-dimensional feature space by a sepa...
The paper presents a novel approach for feature selection based on extreme learning machine (ELM) an...
© 2018 Elsevier Inc. Minimax Probability Machine (MPM) is a binary classifier that optimizes the upp...
Feature selection methods are used in machine learning and data analysis to select a subset of featu...
22nd International Conference on Pattern Recognition, ICPR 2014, Sweden, 24-28 August 2014This paper...
Abstract. This paper presents an algorithmic framework for feature selection, which selects a subset...
Feature selection methods are used in machine learning and data analysis to select a subset of featu...
In this paper, a kernel-free minimax probability machine model for imbalanced classification is prop...
The Minimax Probability Machine Classification (MPMC) framework [Lanckriet et al., 2002] builds cla...
In this paper, we propose a novel binary classification method called the kernel-free quadratic surf...
When constructing a classifier, the probability of correct classification of future data points shou...
Abstract. We propose the so-called Support Feature Machine (SFM) as a novel approach to feature sele...
Abstract—This paper presents feature selection algorithms for multilayer perceptrons (MLPs) and mult...
Feature transformation (FT) for dimensionality reduction has been deeply studied in the past decades...
Feature selection plays an important role in many machine learning and data mining applications. In ...
The problem of discriminating between two finite point sets in n-dimensional feature space by a sepa...
The paper presents a novel approach for feature selection based on extreme learning machine (ELM) an...
© 2018 Elsevier Inc. Minimax Probability Machine (MPM) is a binary classifier that optimizes the upp...
Feature selection methods are used in machine learning and data analysis to select a subset of featu...
22nd International Conference on Pattern Recognition, ICPR 2014, Sweden, 24-28 August 2014This paper...
Abstract. This paper presents an algorithmic framework for feature selection, which selects a subset...
Feature selection methods are used in machine learning and data analysis to select a subset of featu...