多元混沌时间序列的神经网络分析

Avani Sharma, Sumit Dhariwal
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引用次数: 0

摘要

随着时间序列预测在多学科领域的应用,多变量混沌时间序列(MCTS)预测成为研究的热点。天气预报、库存预测、医疗保障等多种应用都部署了这种预测方法,根据过去的观测结果预测时间序列的未来。在文献中,已经探索并提出了各种解决方案来预测时间序列数据的未来值。考虑到神经网络对未来数据预测的适用性,人们已经在利用各种神经网络进行时间序列预测方面做出了重大努力。然而,对这些现有方法缺乏全面的评价,这需要关注时间序列数据的准确和高效预测。在本文中,我们在不同的动态生成数据集上应用和评估了各种深度学习技术。此外,参考性能矩阵平均绝对误差观察到的损失,对不同的技术进行了全面的比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Multivariate Chaotic Time Series using Neural Networks
With the advent of time series prediction in multidisciplinary domains, Multivariate Chaotic Time Series (MCTS) prediction has become a popular topic of re-search. Manifold applications like weather forecasting, stocks prediction, medical support, etc., deploy such kind prediction approach to predict the future of the time series based on past observations. In literature, various solutions have been explored and proposed to forecast future values in time series data. Significant efforts have been made to utilize various Neural Networks for time series prediction considering their applicability for future data prediction. However, a comprehensive evaluation of such existing methods is missing which demands attention for accurate and efficient prediction of time series data. In this paper, we have applied and evaluated various deep learning techniques on different dynamically generated data sets. Further, a comprehensive comparison of different techniques have been presented referencing loss observed with performance matrix Mean Absolute Error.
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