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A fuzzy model of the MSCI EURO index based on content analysis of European Central Bank statements

机译:基于欧洲中央银行对账单内容分析的MSCI欧元指数模糊模型

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In this paper we investigate whether the MSCI EURO index can be predicted based on the content of European Central Bank (ECB) statements. We propose a new model to retrieve information from free text and transform it into a quantitative output. For this purpose, we first identify all adjectives in an ECB statement by using the Stanford Part-of-Speech Tagger and feed these to the General Inquirer (GI) content analysis tool. From GI we obtain a matrix that provides for each document and for each content category the percentage of words in the document that fall under each category. After normalizing the data, we develop a Takagi-Sugeno (TS) fuzzy model using fuzzy c-means clustering. The TS fuzzy system is used to model the levels of the MSCI EURO index. To determine the performance of the model, we focus on the accuracy of predicting upward or downward movement in the index, and obtain, on average, an accuracy of 66%, that corresponds to an improvement of 16% over a random classifier.
机译:在本文中,我们研究了根据欧洲中央银行(ECB)声明的内容是否可以预测MSCI EURO指数。我们提出了一种新模型,该模型可以从自由文本中检索信息并将其转换为定量输出。为此,我们首先使用斯坦福词性标注器识别ECB语句中的所有形容词,并将其输入到通用查询(GI)内容分析工具中。从GI中,我们获得了一个矩阵,该矩阵为每个文档和每个内容类别提供了属于每个类别的文档中单词的百分比。将数据标准化后,我们使用模糊c均值聚类开发了Takagi-Sugeno(TS)模糊模型。 TS模糊系统用于对MSCI EURO指数的水平进行建模。为了确定模型的性能,我们将重点放在预测索引中向上或向下移动的准确性上,并平均获得66%的准确性,与随机分类器相比,该准确性提高了16%。

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