A Dynamic Data-Driven Fine-Tuning Approach for Stacked Auto-Encoder Neural Network

Szu-Yin Lin, C. Chiang, Zih-Siang Hung, Yu-Hui Zou
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引用次数: 5

Abstract

With the advent of the big data era, dynamic and real-time data have increased in both volume and varieties. It is a difficult task to achieve an accurate prediction results to rapidly dynamic changing data. The stacked auto-encoder is a neural network approach in machine learning for feature extraction. It attempts to model high-level abstractions and dimension reduction in data by using multiple processing layers. However, some of the common issues may occur during the implementation process of deep learning or neural network, such as input data having over-complicated dimension, and unable to execute in a dynamic environment. Therefore, it will be helpful if we combine dynamic data-driven concept with stacked auto-encoder neural network to obtain the dynamic data correlation or relationship between prediction results and actual data in a dynamic environment. This study applies the concept of dynamic data-driven to obtain the correlations between the prediction goals and numbers of different combination results. The methods of association analysis, sequence analysis, and stacked auto-encoder neural network are applied to design a dynamic data-driven system based on deep learning.
堆叠自编码器神经网络的动态数据驱动微调方法
随着大数据时代的到来,动态和实时的数据在数量和种类上都有所增加。对于快速动态变化的数据,如何获得准确的预测结果是一项艰巨的任务。层叠式自编码器是一种用于特征提取的机器学习神经网络方法。它试图通过使用多个处理层对数据进行高级抽象和降维建模。然而,在深度学习或神经网络的实现过程中,可能会出现一些常见的问题,例如输入数据维度过于复杂,无法在动态环境中执行。因此,如果将动态数据驱动概念与堆叠自编码器神经网络相结合,将有助于在动态环境中获得动态数据相关性或预测结果与实际数据之间的关系。本研究运用动态数据驱动的概念,获得预测目标与不同组合结果数量之间的相关性。应用关联分析、序列分析和堆叠自编码器神经网络等方法,设计了一个基于深度学习的动态数据驱动系统。
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