使用深度学习的基于社交媒体数据的商业智能分析模型

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摘要

深度学习(DL)是数据科学的领导者,这激发了研究人员和商业人士对机器学习的兴趣。在深度学习的模型构建过程中使用了多层表征数据理论。模型转移(MT)、卷积神经网络(CNN)和生成对抗网络(GAN)只是从根本上改变了我们对数据处理观点的几个主要深度学习方法。事实上,当应用于分析图片、文本和声音时,深度学习的处理能力是惊人的。由于数字化社交媒体(SM)的快速扩张和广泛可用性,使用传统方法和技术评估这些数据是困难和难以管理的。预测DL技术提供的解决方案在处理这些问题方面是有效的。因此,我们考虑了已经在社交媒体分析(SMA)方面实施的预构建DL方法。我们没有关注深度学习的具体细节,而是关注对深度学习构成重大障碍的问题域,并就如何克服这些障碍提出建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social Media Data-Based Business Intelligence Analysis Model Using Deep Learning
Deep learning (DL) is the leader in data science, and this has piqued the interest of researchers and businesspeople alike in machine learning. Multiple layers of representational data theories are used in DL's model-building process. Model transfer (MT), convolutional neural networks (CNN), and generative adversarial networks (GAN) are just a few of the main DL approaches that have fundamentally reworked our view of data processing. In fact, DL's processing capacity is astounding when applied to the analysis of pictures, texts, and voices. Evaluation of this data using traditional methods and techniques is hard and unmanageable due to the fast expansion and broad availability of digitalized social media (SM). The solutions provided by DL techniques are predicted to be effective in dealing with these issues. Thus, we consider the pre-built DL approaches that have been implemented with respect to social media analytics (SMA). Instead of focusing on the nuts and bolts of DL, we focus on problem domains that provide significant obstacles to SM and offer suggestions on how to overcome them.
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