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Combining time-series and textual data for taxi demand prediction in event areas: A deep learning approach

机译:结合事件领域的出租车需求预测的时间序列和文本数据:深度学习方法

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摘要

Accurate time-series forecasting is vital for numerous areas of application such as transportation, energy, finance, economics, etc. However, while modern techniques are able to explore large sets of temporal data to build forecasting models, they typically neglect valuable information that is often available under the form of unstructured text. Although this data is in a radically different format, it often contains contextual explanations for many of the patterns that are observed in the temporal data. In this paper, we propose two deep learning architectures that leverage word embeddings, convolutional layers and attention mechanisms for combining text information with time-series data. We apply these approaches for the problem of taxi demand forecasting in event areas. Using publicly available taxi data from New York, we empirically show that by fusing these two complementary cross-modal sources of information, the proposed models are able to significantly reduce the error in the forecasts.
机译:准确的时序预测对于许多应用领域至关重要,如运输,能源,金融,经济学等,而现代技术能够探索大量的时间数据来构建预测模型,它们通常会忽略有价值的信息通常以非结构化文本的形式提供。虽然该数据以完全不同的格式,但它通常包含在时间数据中观察到的许多模式的上下文解释。在本文中,我们提出了两个深入学习架构,利用了用时间序列数据组合文本信息的单词嵌入,卷积层和注意机制。我们将这些方法应用于事件领域的出租车需求预测问题。使用来自纽约的公共出租车数据,我们经验证明,通过融合这两个互补的跨模式信息,所提出的模型能够显着降低预测中的错误。

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