用最优深度学习支持的大数据分类模型建模类不平衡处理

Pub Date : 2023-11-20 DOI:10.3233/idt-230198
Varshavardhini S, Rajesh A
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引用次数: 0

摘要

大数据是指在内存使用和计算时间方面超过系统处理数据能力的数据量。它通常应用于医疗保健、教育、社交网络、电子商务等领域,因为它们逐渐获得了大量的输入数据。一个主要的研究问题是大数据分析,它可以使用专家系统和深度结构化架构来进行。此外,数据争用和类不平衡数据处理是大数据分析中需要解决的具有挑战性的问题。类不平衡数据会降低分类模型的性能,由于相对庞大的数据集的异构和复杂结构,这仍然是一个具有挑战性的过程。因此,研究重点是提出一种基于最优深度学习的类不平衡处理大数据分类(CIHODL-BDC)框架。CIHODL-BDC框架的核心感知有助于对Hadoop MapReduce框架中的大数据进行分类。为此,所提出的CIHODL-BDC模型首先执行一个数据整理过程,将未细化的数据更改为有用的布局。其次,CIHODL-BDC模型使用灰狼优化器(GWO)和合成少数过采样(SMOTE)技术处理类不平衡问题。此外,采用双向长短期记忆(BiLSTM)方法对大数据进行分类。用两个标准数据集对所提出的CIHODL-BDC模型的结果分析进行了评价。仿真结果表明,与现有方法相比,CIHODL-BDC方法的性能有所提高。
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Modeling of class imbalance handling with optimal deep learning enabled big data classification model
Big data is the amount of data that surpasses the ability to process the data of a system concerning memory usage and computation time. It is commonly applied in several domains like healthcare, education, social networks, e-commerce, etc., as they have progressively obtained a massive quantity of input data. A major research problem is big data analytics, which can be carried out using expert systems and deep structured architectures. Besides, data wrangling and class imbalance data handling are challenging issues that need to be resolved in big data analytics. Class imbalance data degrade the performance of the classification model, which remains a challenging process due to the heterogeneous and complex structure of the comparatively huge datasets. Thus, the research focused on presenting a Class Imbalance Handling with Optimal Deep Learning Enabled Big Data Classification (CIHODL-BDC) framework. The core perception of the CIHODL-BDC framework helps to classify the big data in the Hadoop MapReduce framework. To accomplish this, the presented CIHODL-BDC model initially performs a data wrangling process is performed to alter the unrefined data into a useful layout. Next, the CIHODL-BDC model handles the class imbalance problem using a grey wolf optimizer (GWO) with Synthetic Minority Oversampling (SMOTE) technique. Besides, the Adam optimizer procedure with the Bidirectional Long Short Term Memory (BiLSTM) approach is performed to categorize the big data. The result analysis of the proposed CIHODL-BDC model is evaluated by two standard datasets. The simulation outcomes revealed the elevated performance of the CIHODL-BDC approach over existing methods.
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