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朱杰. 云计算在基于贝叶斯分类的垃圾短信过滤中的研究与应用[D]: [硕士学位论文]. 成都: 电子科技大学, 2010.

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  • 标题: 基于MapReduce的朴素贝叶斯垃圾短信过滤研究Research on Naive Bayesian Spam SMS Filtering Based on MapReduce

    作者: 赵彩迪, 朱有产, 符佳慧

    关键字: 垃圾短信, 短信过滤, 朴素贝叶斯, MapReduceSpam SMS, SMS Filter, Naive Bayesian, MapReduce

    期刊名称: 《Computer Science and Application》, Vol.6 No.7, 2016-07-29

    摘要: 针对海量短信文本的挖掘过滤需要很大的存储空间以及更强的计算能力,提出一种基于MapReduce的朴素贝叶斯的垃圾短信过滤方法;基于改进的朴素贝叶斯垃圾短信分类算法,利用MapReduce模型并行化对海量数据处理的优势进行短信文本的训练和测试。实验表明:利用计算集群实现海量垃圾短信过滤在召回率、查准率方面有所提高,垃圾短信过滤效率随着集群规模的扩增而提升较快。 The massive text mining filter requires a lot of storage space and stronger computing ability, so a spam message filtering method of MapReduce-based Bayesian is proposed. Based on the improved Naive Bayesian spam SMS classification algorithm, taking the advantage of MapReduce model pa-rallelization on massive data processing is used to train and test SMS text. Results show that using compute cluster to achieve massive spam filtering can improve the efficiency of recalling and pre-cision, and with the expansion of cluster size spam SMS filtering efficiency improve faster.

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