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Identification of Important News for Exchange Rate Modeling

机译:识别汇率建模的重要新闻

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摘要

Associating the pattern in text data with the pattern with time series data is a novel task. In this paper, an approach that utilizes the features of the time series data and domain knowledge is proposed and used to identify the patterns for exchange rate modeling. A set of rules to identify the patterns are firstly specified using domain knowledge. The text data are then associated with the exchange rate data and pre-classified according to the trend of the time series. The rules are further refined by the characteristics of the pre-classified data. Classification solely based on time series data requires precise and timely data, which are difficult to obtain from financial market reports. On the other hand, domain knowledge is often very expensive to be acquired and often has a modest inter-rater reliability. The proposed method combines both methods, leading to a "grey box" approach that can handle the data with some time delay and overcome these drawbacks.
机译:将文本数据中的模式与具有时间序列数据的模式相关联是一项新颖的任务。在本文中,提出了一种利用时间序列数据和领域知识的特征的方法,并将其用于识别汇率建模的模式。首先使用领域知识来指定一组用于识别模式的规则。然后,将文本数据与汇率数据关联,并根据时间序列的趋势进行预分类。通过预分类数据的特征进一步完善规则。仅基于时间序列数据进行分类需要准确,及时的数据,而这些数据很难从金融市场报告中获得。另一方面,领域知识的获取通常非常昂贵,并且通常具有中等的评估者间可靠性。所提出的方法结合了这两种方法,从而导致了一种“灰盒”方法,该方法可以在一定时间延迟下处理数据并克服这些缺点。

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