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引用次数: 7

摘要

未知数据集的分类可以通过几种方法获得。事实证明,集成分类器是一种较好的分类方法。Learn++,一种增量学习算法,它允许监督分类算法从新的数据中学习,而不会忘记以前获得的知识,即使以前使用的数据不再可用。当被要求学习新类时,learning++存在固有的“out-voting问题”,这导致它生成不必要的大量分类器。此外,在lear++中,基于复合假设性能的分布更新规则用于选择下一个弱分类器的训练集,当引入新类时,它允许有效的增量学习能力。而在AdaBoost中,基于个体假设的分布更新规则保证了鲁棒性,防止了性能下降。该算法结合了两种方法的优点。给出了基于单个假设和复合假设相结合的权重更新规则,从而提供了最优的性能水平。
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Ensemble systems and incremental learning
Classification of the unknown dataset can be obtained by several methods. Ensemble classifier methods are proved to be the better for classification. Learn++, An incremental learning algorithm, which allows supervised classification algorithms to learn from new data without forgetting previously acquired knowledge even when the previously used data is no longer available. Learn++ suffers from inherent “out-voting problem when asked to learn new classes, which causes it to generate an unnecessarily large number of classifiers. Also, in Learn++, distribution update rule based on performance of compound hypothesis, for selecting training set of the next weak classifier, it allows an efficient incremental learning capability when new classes are introduced. Whereas, in AdaBoost distribution update rule based on individual hypothesis guarantees robustness and prevents performance deterioration. In proposed algorithm, it combines the advantages of both the methods. It provides weight updating rule based on a combination of individual hypothesis and compound hypothesis which provide optimum performance level.
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