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Learning continuous time bayesian network classifiers using mapreduce
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نویسنده
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villa s. ,rossetti m.
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منبع
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journal of statistical software - 2015 - دوره : 62 - - کد همایش: - صفحه:1 -25
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چکیده
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Parameter and structural learning on continuous time bayesian network classifiers are challenging tasks when you are dealing with big data. this paper describes an effcient scalable parallel algorithm for parameter and structural learning in the case of complete data using the mapreduce framework. two popular instances of classifiers are analyzed,namely the continuous time naive bayes and the continuous time tree augmented naive bayes. details of the proposed algorithm are presented using hadoop,an open-source implementation of a distributed file system and the mapreduce framework for distributed data processing. performance evaluation of the designed algorithm shows a robust parallel scaling. © 2014,american statistical association. all rights reserved.
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کلیدواژه
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Big data analysis; Continuous time Bayesian network classifiers; Hadoop; MapReduce; Parameter learning; Structural learning
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آدرس
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university of milano-bicocca, Italy, university of milano-bicocca, Italy
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Authors
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