A Text Classification Approach using Parallel Naive Bayes in Big Data Context

Houda Amazal, M. Ramdani, M. Kissi
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引用次数: 3

Abstract

Text classification is a domain that has been inspiring researchers since many years. Indeed, several approaches have been developed in order to find methods that improve the performance of text classification. But in last decades, because of the technological evolution, textual data becomes more and more abundant on the web. So that classical classification methods are unable to process this huge amount of data and consequently cannot produce satisfied results. Thus, new ways have been explored; to overcome the big dimensions of data, it was necessary to reduce the size of the features of documents and use parallel processing. For this, in our work, we developed a Term Frequency- Inverse Document Frequency (TF-IDF) parallel model to save only the most relevant words in documents. Then, we feed the dataset to a parallel Naive Bayes classifier. Both, the TF-IDF parallel model and parallel Naïve Bayes classifier were implemented on Hadoop system using the MapReduce architecture. The experimental results demonstrate the efficiency of the proposed method to improve the classification accuracy.
基于并行朴素贝叶斯的大数据文本分类方法
文本分类是一个多年来一直激励着研究者的领域。事实上,为了找到提高文本分类性能的方法,已经开发了几种方法。但在过去的几十年里,由于技术的发展,网络上的文本数据变得越来越丰富。因此,经典的分类方法无法处理如此庞大的数据量,因而无法产生令人满意的结果。因此,探索了新的方法;为了克服数据的大维度,有必要减少文档特征的大小并使用并行处理。为此,在我们的工作中,我们开发了一个术语频率-逆文档频率(TF-IDF)并行模型,以仅保存文档中最相关的单词。然后,我们将数据集馈送给并行朴素贝叶斯分类器。TF-IDF并行模型和并行Naïve贝叶斯分类器均采用MapReduce架构在Hadoop系统上实现。实验结果表明,该方法可以有效地提高分类精度。
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