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Instance-based classification with Ant Colony Optimization

机译:蚁群优化的基于实例的分类

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Instance-based learning (IBL) methods predict the class label of a new instance based directly on the distance between the new unlabeled instance and each labeled instance in the training set, without constructing a classification model in the training phase. In this paper, we introduce a novel class-based feature weighting technique, in the context of instance-based distance methods, using the Ant Colony Optimization meta-heuristic. We address three different approaches of instance-based classification: k-Nearest Neighbours, distance-based Nearest Neighbours, and Gaussian Kernel Estimator. We present a multi-archive adaptation of the ACO(R) algorithm and apply it to the optimization of the key parameter in each IBL algorithm and of the class-based feature weights. We also propose an ensemble of classifiers approach that makes use of the archived populations of the ACO(R) algorithm. We empirically evaluate the performance of our proposed algorithms on 36 benchmark datasets, and compare them with conventional instance-based classification algorithms, using various parameter settings, as well as with a state-of-the-art coevolutionary algorithm for instance selection and feature weighting for Nearest Neighbours classifiers.
机译:基于实例的学习(IBL)方法直接基于新的未标记实例与训练集中每个标记实例之间的距离来预测新实例的类标记,而无需在训练阶段构造分类模型。在本文中,我们采用蚁群优化元启发式方法,在基于实例的距离方法的背景下,介绍了一种新颖的基于类的特征加权技术。我们介绍了三种不同的基于实例的分类方法:k最近邻居,基于距离的最近邻居和高斯核估计器。我们提出了ACO(R)算法的多归档自适应,并将其应用于每个IBL算法中关键参数的优化以及基于类的特征权重。我们还提出了一种利用ACO(R)算法的归档总体的分类器方法的集合。我们根据经验评估了我们提出的算法在36个基准数据集上的性能,并将它们与常规的基于实例的分类算法(使用各种参数设置)以及最新的协同进化算法进行实例选择和特征加权进行比较最近邻分类器。

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