探索深度学习以确定股票预测分析的最佳环境

Renuka Sharma, K. Mehta, Ochin Sharma
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引用次数: 2

摘要

时间序列数据及其分析是一项具有挑战性的任务,因为数据不断变化,并且基于新数据的到来,以前的分析可能经常显得过时。时间序列数据是时间顺序数据集,是数据分析的一个更高级的领域。在评估时间序列时,必须考虑许多方面,这些方面可以用来帮助解释时间序列。为了准确快速地分析时间序列数据,深度学习是非常有帮助的。此外,深度学习也面临着一些挑战,因为有几个激活函数,损失函数,优化器,深度层的数量。本文通过实验,对时间序列数据进行深度学习的各种参数测试,以确定股票预测分析的最优环境。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Deep Learning to Determine the Optimal Environment for Stock Prediction Analysis
Time series data and its analysis is a challenging task as data kept changing continuously and based upon the new data arriving, the previous analysis might often seem obsolete. Time series data is time-ordered datasets, which is a more advanced area of data analysis. When evaluating a time series, many aspects must be considered, that can be used to help the explain time series. To analyse time series data accurately and rapidly, deep learning is quite helpful. Further, deep learning is also abiding with a couple of challenges, as there are several activation functions, loss functions, optimizers, number of deep layers. In this paper, experimentally, the various parameters of deep learning would be testing upon time series data to determine the optimal environment for stock prediction analysis.
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