愉快的学习就从翻译开始吧_Multi-step Time Series Forecasting with Long Short-Term Memory Networks in Python_0
The Long Short-Term Memory network or LSTM is a recurrent neural network that can learn and forecast long sequences.
长短期记忆网络或者LSTM是一种可以学习和预测长序列的递归神经网络
A benefit of LSTMs in addition to learning long sequences is that they can learn to make a one-shot multi-step forecast which may be useful for time series forecasting.
除了学习长序列之外,LSTM的好处是他们可以学习做出一步式多步预测(一步输入,输出多步),这对于时间序列预测也许是有用的
A difficulty with LSTMs is that they can be tricky to configure and it can require a lot of preparation to get the data in the right format for learning.
LSTM的困难在于它们配置起来可能很棘手,并且需要大量的准备才能以正确的格式获取数据以进行学习
In this tutorial, you will discover how you can develop an LSTM for multi-step time series forecasting in Python with Keras.
在本教程中,您将了解如何使用Keras在Python中开发用于多步时间序列预测的LSTM。
After completing this tutorial, you will know:
完成本教程后,您将知道:
- How to prepare data for multi-step time series forecasting.
如何为多步时间序列预测准备数据 - How to develop an LSTM model for multi-step time series forecasting.
如何开发一个多步时间序列预测的LSTM模型 - How to evaluate a multi-step time series forecast.
如何评估一个多步时间序列预测
Let’s get started.
让我们开始吧
Multi-step Time Series Forecasting with Long Short-Term Memory Networks in Python
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