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An Approach to Incremental SVM Learning Algorithm

机译:增量SVM学习算法的方法

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摘要

Support vector machine (SVM) is an algorithm based on structure risk minimizing principle and has high generalization ability, but sometimes we prefer to incremental learning algorithms to handle very vast data for training SVM is very costly in time and memory consumption or because the data available are obtained at different intervals. SVM works well for incremental learning model with impressive performance for its outstanding power to summarize the data space in a concise way. This paper proposes an intercross iterative approach for training SVM to incremental learning taking the possible impact of new training data to history data each other into account. The objective is to maintain an updated representation of training dataset and new incremental dataset, and use respective hyperplane to classify each other crossed to find more possible support vectors. The experiment results show that this approach has more satisfying accuracy in classification precision.
机译:支持向量机(SVM)是一种基于结构风险最小化原理的算法,具有高的泛化能力,但有时我们更喜欢增量学习算法来处理非常庞大的训练SVM数据的时间和内存消耗非常昂贵,或者是可用的数据以不同的间隔获得。 SVM适用于增量学习模型,其出色的优势表现出色的表现,以简明的方式总结数据空间。本文提出了一种训练SVM的迭代迭代方法,以增量学习为彼此逐步影响新的培训数据。目的是维持训练数据集和新增量数据集的更新表示,并使用相应的超平面来分类互相分类,以查找更可能的支持向量。实验结果表明,这种方法在分类精度方面更具令人满意的准确性。

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