A Novel Multiple Classifier Generation and Combination Framework Based on Fuzzy Clustering and Individualized Ensemble Construction

Zhenzhu Gao, Maryam Zand, Jianhua Ruan
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引用次数: 1

Abstract

Multiple classifier system (MCS) has become a successful alternative for improving classification performance. However, studies have shown inconsistent results for different MCSs, and it is often difficult to predict which MCS algorithm works the best on a particular problem. We believe that the two crucial steps of MCS - base classifier generation and multiple classifier combination, need to be designed coordinately to produce robust results. In this work, we show that for different testing instances, better classifiers may be trained from different subdomains of training instances including, for example, neighboring instances of the testing instance, or even instances far away from the testing instance. To utilize this intuition, we propose Individualized Classifier Ensemble (ICE). ICE groups training data into overlapping clusters, builds a classifier for each cluster, and then associates each training instance to the top-performing models while taking into account model types and frequency. In testing, ICE finds the k most similar training instances for a testing instance, then predicts class label of the testing instance by averaging the prediction from models associated with these training instances. Evaluation results on 49 benchmarks show that ICE has a stable improvement on a significant proportion of datasets over existing MCS methods. ICE provides a novel choice of utilizing internal patterns among instances to improve classification, and can be easily combined with various classification models and applied to many application domains.
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基于模糊聚类和个性化集成构建的多分类器生成与组合框架
多分类器系统(MCS)已成为提高分类性能的成功替代方案。然而,研究表明不同MCS的结果不一致,并且通常很难预测哪种MCS算法在特定问题上效果最好。我们认为两个关键步骤——基于MCS的分类器生成和多分类器组合,需要协调设计才能产生鲁棒性结果。在这项工作中,我们表明,对于不同的测试实例,更好的分类器可以从训练实例的不同子域中训练,例如,测试实例的邻近实例,甚至远离测试实例的实例。为了利用这种直觉,我们提出了个性化分类器集成(ICE)。ICE将训练数据分组到重叠的聚类中,为每个聚类构建分类器,然后将每个训练实例与表现最好的模型相关联,同时考虑模型类型和频率。在测试中,ICE为测试实例找到k个最相似的训练实例,然后通过与这些训练实例相关的模型的平均预测来预测测试实例的类标签。49个基准的评估结果表明,与现有的MCS方法相比,ICE在相当大比例的数据集上有稳定的改进。ICE提供了一种利用实例之间的内部模式来改进分类的新颖选择,并且可以很容易地与各种分类模型组合并应用于许多应用程序领域。
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