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GACEM: Genetic Algorithm Based Classifier Ensemble in a Multi-sensor System

机译:GACEM:多传感器系统中基于遗传算法的分类器集合

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摘要

Multi-sensor systems (MSS) have been increasingly applied in pattern classification while searching for the optimal classification framework is still an open problem. The development of the classifier ensemble seems to provide a promising solution. The classifier ensemble is a learning paradigm where many classifiers are jointly used to solve a problem, which has been proven an effective method for enhancing the classification ability. In this paper, by introducing the concept of Meta-feature (MF) and Trans-function (TF) for describing the relationship between the nature and the measurement of the observed phenomenon, classification in a multi-sensor system can be unified in the classifier ensemble framework. Then an approach called Genetic Algorithm based Classifier Ensemble in Multi-sensor system (GACEM) is presented, where a genetic algorithm is utilized for optimization of both the selection of features subset and the decision combination simultaneously. GACEM trains a number of classifiers based on different combinations of feature vectors at first and then selects the classifiers whose weight is higher than the pre-set threshold to make up the ensemble. An empirical study shows that, compared with the conventional feature-level voting and decision-level voting, not only can GACEM achieve better and more robust performance, but also simplify the system markedly.
机译:多传感器系统(MSS)已越来越多地应用于模式分类,而寻找最佳分类框架仍然是一个未解决的问题。分类器集成的发展似乎提供了有希望的解决方案。分类器集合是一种学习范式,其中许多分类器共同用于解决问题,这已被证明是增强分类能力的有效方法。在本文中,通过引入元特征(MF)和反函数(TF)的概念来描述观测现象的性质和度量之间的关系,可以在分类器中统一多传感器系统中的分类合奏框架。然后提出了一种称为多传感器系统中基于遗传算法的分类器集合的方法(GACEM),其中利用遗传算法同时优化特征子集的选择和决策组合。 GACEM首先根据特征向量的不同组合训练多个分类器,然后选择权重高于预设阈值的分类器以构成整体。实证研究表明,与传统的功能级投票和决策级投票相比,GACEM不仅可以实现更好,更鲁棒的性能,而且可以显着简化系统。

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