DSAE – Deep Stack Auto Encoder and RCBO – Rider Chaotic Biogeography Optimization Algorithm for Big Data Classification

A. Brahmane, D. B. C. Krishna
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Abstract

In today’s era Big data classification is a very crucial and equally widely arise issue is many applications. Not only engineering applications but also in social, agricultural, banking, educational and many more applications are there in science and engineering where accurate big data classification is required. We proposed a very novel and efficient methodology for big data classification using Deep stack encoder and Rider chaotic biogeography algorithms. Our proposed algorithms are the combinations of two algorithms. First one is Rider Optimization algorithm and second one is chaotic biogeography-based optimization algorithm. So, we named it as RCBO which is integration is ROA and CBBO. Our proposed system also uses the Deep stack auto encoder for the purpose of training the system which actually produced the accurate classification. The Apache spark platform is used initial distribution of the data from master node to slave nodes. Our proposed system is tested and executed on the UCI Machine learning data set which gives the excellent results while comparing with other algorithms such as KNN classification, Extreme Learning Machine Random Forest algorithms.
DSAE -深度堆栈自动编码器和RCBO - Rider大数据分类混沌生物地理优化算法
在当今时代,大数据分类是一个非常关键的,同样广泛出现的问题是许多应用。不仅是工程应用,在社会、农业、银行、教育以及更多的科学和工程应用中都需要准确的大数据分类。本文提出了一种基于Deep stack encoder和Rider混沌生物地理算法的大数据分类方法。我们提出的算法是两种算法的组合。一是Rider优化算法,二是基于混沌生物地理的优化算法。我们把它命名为RCBO也就是ROA和CBBO的结合。我们提出的系统还使用深度堆栈自动编码器来训练系统,从而实际产生准确的分类。使用Apache spark平台将数据从主节点初始分发到从节点。我们提出的系统在UCI机器学习数据集上进行了测试和执行,并与其他算法(如KNN分类、极限学习机随机森林算法)进行了比较,得到了很好的结果。
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