Deep Learning Models for Heterogeneous Big Data Analytics

Mohamed Elsayed, Hatem M. Abdelkader, A. Abdelwahab
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Abstract

in recent times, Big data is modifying the style life of workplaces and thinking by improved performance in knowledge discovering and decision making ever-greater volumes of data are being produced data due to the network of sensors and communication technologies Heterogeneous data is a category of unstructured data with an unknown pace in several ways. Current data analysis techniques are inadequate to handle the huge volumes of data produced, this data difficult to manage, store, handle, interpret, analyze using traditional techniques. Deep learning (DL) is extremely popular among many data scientists and experts thanks to the high precision in speech recognition, image handling, and data analytics. DL has become much more important because it can be used for largescale heterogeneous data. DL has been applied efficiently in several fields and has exceeded most of the traditional techniques, DL algorithmic can study large unclassified data with the ability to select features. This study concentrates on the discussion of a variety of new algorithms that handle this data and DL models that provide greater accuracy for heterogeneous data.
异构大数据分析的深度学习模型
近年来,大数据通过提高知识发现和决策的性能,正在改变工作场所的生活方式和思维方式。由于传感器和通信技术的网络,产生了越来越多的数据。异构数据是一种非结构化数据,在几个方面具有未知的速度。当前的数据分析技术不足以处理产生的海量数据,这些数据难以用传统技术进行管理、存储、处理、解释、分析。由于在语音识别、图像处理和数据分析方面的高精度,深度学习(DL)在许多数据科学家和专家中非常受欢迎。深度学习变得越来越重要,因为它可以用于大规模的异构数据。深度学习算法已经在多个领域得到了有效的应用,并且已经超越了大多数传统的技术,它可以研究大量的未分类数据,并具有特征选择的能力。本研究集中讨论了处理这些数据的各种新算法和为异构数据提供更高精度的DL模型。
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