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Design and analysis of a general vector space model for data classification in Internet of Things

机译:互联网数据分类的一般矢量空间模型的设计与分析

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The amount of information increases explosively in Internet of Things, because more and more data are sensed by large amount of sensors. The explosive growth of information makes it difficult to access information efficiently, so it is an effective method to decrease the amount of information to be transferred on network by text classification. This paper proposes a new text classification algorithm based on vector space model. This algorithm improves the feature selection and weighting methods by introducing synonym replacement to traditional text classification algorithms. The experimental results show that the proposed classification algorithm has considerably improved the precision and recall of classification.
机译:信息量的信息量在互联网上增加,因为大量传感器感测了越来越多的数据。 信息的爆炸性增长使得难以有效地访问信息,因此它是通过文本分类减少在网络上传输的信息量的有效方法。 本文提出了一种基于向量空间模型的新文本分类算法。 该算法通过向传统文本分类算法引入同义词替换来改善特征选择和加权方法。 实验结果表明,该拟议的分类算法大大提高了分类的精度和回忆。

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