scispace - formally typeset
Open AccessJournal ArticleDOI

Structural Minimax Probability Machine

Reads0
Chats0
TLDR
This paper uses two finite mixture models to capture the structural information of the data from binary classification and proposes a structural MPM, which can be interpreted as a large margin classifier and can be transformed to support vector machine and maxi–min margin machine under certain special conditions.
Abstract
Minimax probability machine (MPM) is an interesting discriminative classifier based on generative prior knowledge. It can directly estimate the probabilistic accuracy bound by minimizing the maximum probability of misclassification. The structural information of data is an effective way to represent prior knowledge, and has been found to be vital for designing classifiers in real-world problems. However, MPM only considers the prior probability distribution of each class with a given mean and covariance matrix, which does not efficiently exploit the structural information of data. In this paper, we use two finite mixture models to capture the structural information of the data from binary classification. For each subdistribution in a finite mixture model, only its mean and covariance matrix are assumed to be known. Based on the finite mixture models, we propose a structural MPM (SMPM). SMPM can be solved effectively by a sequence of the second-order cone programming problems. Moreover, we extend a linear model of SMPM to a nonlinear model by exploiting kernelization techniques. We also show that the SMPM can be interpreted as a large margin classifier and can be transformed to support vector machine and maxi–min margin machine under certain special conditions. Experimental results on both synthetic and real-world data sets demonstrate the effectiveness of SMPM.

read more

Citations
More filters
Journal ArticleDOI

A novel intelligent diagnosis method using optimal LS-SVM with improved PSO algorithm

TL;DR: The fuzzy information entropy can accurately and more completely extract the characteristics of the vibration signal, the improved PSO algorithm can effectively improve the classification accuracy of LS-SVM, and the proposed fault diagnosis method outperforms the other mentioned methods.
Journal ArticleDOI

Study on an improved adaptive PSO algorithm for solving multi-objective gate assignment

TL;DR: The experiment results show that the DOADAPO algorithm can improve the convergence speed and enhance the local search ability and global search ability, and the multi-objective optimization model of gate assignment can improved the comprehensive service of gate assignments.
Journal ArticleDOI

Privacy-preserving outsourced classification in cloud computing

TL;DR: This work proposes a framework for privacy-preserving outsourced classification in cloud computing (POCC), and proves that the scheme is secure in the semi-honest model.
Journal ArticleDOI

A Novel Fault Diagnosis Method Based on Integrating Empirical Wavelet Transform and Fuzzy Entropy for Motor Bearing

TL;DR: Results show that the EWT outperforms empirical mode decomposition for decomposing the signal into multiple components, and the proposed EWTFSFD method can accurately and effectively achieve the fault diagnosis of motor bearing.
Journal ArticleDOI

Text classification based on deep belief network and softmax regression

TL;DR: A novel hybrid text classification model based on deep belief network and softmax regression that can converge at fine-tuning stage and perform significantly better than the classical algorithms, such as SVM and KNN.
References
More filters
Journal ArticleDOI

Multiclass Support Vector Machines With Example-Dependent Costs Applied to Plankton Biomass Estimation

TL;DR: A new multiclass cost-sensitive algorithm, in which each example has attached its corresponding misclassification cost, which improves the performance of traditional multiclass classification approaches that optimize the accuracy.
Journal ArticleDOI

Regularized mixture discriminant analysis

TL;DR: The experimental results show that the proposed Gaussian mixture model of the class-conditional densities for plug-in Bayes classification has the potential to produce parameterizations of the covariance matrices of the GMMs which are better than the parameterizations used in other methods.
Dissertation

Hybrids of generative and discriminative methods for machine learning

TL;DR: A hybrid generative / discriminative method Hybrid BP that significantly reduces the state space of each node in the Markov random field and an effective method for learning the parameters which exploits the memory savings provided by Hybrid BP are presented.
Journal ArticleDOI

Bounds on the Bayes Error Given Moments

TL;DR: This approach makes use of Curto and Fialkow's solutions for the truncated moment problem and constructs an upper bound for the supremum Bayes error by constraining the decision boundary to be linear.
Journal ArticleDOI

Ordinal-class core vector machine

TL;DR: Experiments on several synthetic and real world datasets demonstrate that OCVM scales well with the size of the dataset and can achieve comparable generalization performance with existing SVM implementations.
Related Papers (5)