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Lookback Period, Epochs and Hidden States Effect on Time Series Prediction Using a LSTM based Neural Network

机译:使用基于LSTM的神经网络的时间序列预测的研究时期,时期和隐藏状态

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Forecasting time series problem occurs in various subject areas. Recently neural network techniques have been used for solving such tasks. However, they have not been sufficiently studied. The article explores the influence of the lookback period, the training epochs, and hidden state dimensionality in forecasting time series using long short-term memory. Numerical experiments with example financial data show that using more lags does not improve the results. Such a study of model parameters is important for their proper selection.
机译:在各个主题领域发生预测时间序列问题。最近,神经网络技术已被用于解决这些任务。但是,他们没有得到充分研究。该文章探讨了使用长短期记忆预测时间序列中的Lookbace期间,训练时期和隐藏状态维度的影响。具有示例财务数据的数值实验表明,使用更多滞后不会改善结果。这种模型参数的研究对于他们的正确选择很重要。

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