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   Wsrf: An R package for classification with scalable weighted subspace random forests  
   
نویسنده zhao h. ,williams g.j. ,huang j.z.
منبع journal of statistical software - 2017 - دوره : 77 - شماره : 1
چکیده    We describe a parallel implementation in r of the weighted subspace random forest algorithm (xu,huang,williams,wang,and ye 2012) available as the wsrf package. a novel variable weighting method is used for variable subspace selection in place of the traditional approach of random variable sampling. this new approach is particularly useful in building models for high dimensional data - often consisting of thousands of variables. parallel computation is used to take advantage of multi-core machines and clusters of machines to build random forest models from high dimensional data in considerably shorter times. a series of experiments presented in this paper demonstrates that wsrf is faster than existing packages whilst retaining and often improving on the classification performance,particularly for high dimensional data. © 2017,american statistical association. all rights reserved.
کلیدواژه Big data; Parallel computation; Scalable; Weighted random forests; Wsrf
آدرس shenzhen college of advanced technology university of chinese academy of sciences shenzhen institutes of advanced technology (siat),chinese academy of sciences,shenzhen university town,1068 xueyuan avenue,shenzhen, China, shenzhen college of advanced technology university of chinese academy of sciences shenzhen institutes of advanced technology (siat),chinese academy of sciences,shenzhen university town,1068 xueyuan avenue,shenzhen, China, college of computer science & software engineering,shenzhen university,nanhai ave 3688,shenzhen, China
 
     
   
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