Deep Neural Networks are able to solve many complex tasks with less engineering effort and better performance. However, these networks often use data for training and evaluation without investigating its representation, i.e.~the form of the used data. In the present paper, we analyze the impact of data representations on the performance of Deep Neural Networks using energy time series forecasting. Based on an overview of exemplary data representations, we select four exemplary data representations and evaluate them using two different Deep Neural Network architectures and three forecasting horizons on real-world energy time series. The results show that, depending on the forecast horizon, the same data representations can have a positive or negative impact on the accuracy of Deep Neural Networks.
翻译:深神经网络能够以较少的工程努力和较好的性能解决许多复杂任务,然而,这些网络往往在不调查其代表性(即使用的数据形式)的情况下,将数据用于培训和评估,即使用的数据形式。在本文件中,我们分析了数据表述对利用能源时间序列预测的深神经网络绩效的影响。根据对示范性数据表述的概述,我们选择了四个模范数据表述,并使用两个不同的深神经网络架构和现实世界能源时间序列的三个预测视野来评价它们。结果显示,根据预测的视野,同样的数据表述可能对深神经网络的准确性产生正负影响。