支持向量机分类的特征感知在线学习方法

Fang Liu, Kee Jin Lee, Jihoon Hong
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引用次数: 1

摘要

特别是在工业4.0时代,在线机器学习算法越来越受到关注。原因是传统的批处理学习算法无法处理感测机器产生的流数据并进行实时决策。本文提出了一种基于特征感知的支持向量机(FSVM)在线学习方法。通常,由于资源和计算的限制,在线学习算法对流数据的访问有限。在FSVM中,我们引入了一种特征向量选择方法,在不丢失关键信息的情况下减少训练数据集的大小,并保持可接受的分类精度。在这里,这样小的选择特征向量集就可以表示原始数据集。此外,我们可以通过检查一个新的输入数据是否可以被当前的特征向量表示来检测特征漂移。我们基于几个真实世界的数据集评估了FSVM的性能。结果表明,即使用10%左右的数据训练SVM模型,也能达到可接受的误分类率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Feature-Aware Online Learning Approach for Support Vector Machine Classification
Online machine learning algorithm has attracted increasing attention especially in the era of Industry 4.0. The reason is that traditional batch learning algorithm cannot deal with the streaming data produced by sensorized machines and make real-time decisions. In this paper, we propose a Feature-aware online learning approach of Support Vector Machine (FSVM) for classification problem. Usually, online learning algorithm has limited access to streaming data due to resource and computation constraints. In FSVM, we introduced a feature vector selection method to reduce the size of training dataset without losing key information and maintain an acceptable classification accuracy. Here, such small set of selected feature vectors is able to represent the original dataset. What is more, we can detect feature drifting by checking whether or not a new input data can be represented by the current feature vectors. We evaluate the performance of FSVM based on several realworld datasets. The results show that even train the SVM model with around 10% data, an acceptable misclassification rate can be reached.
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