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Linking words in economic discourse: Implications for macroeconomic forecasts

机译:在经济话语中链接词:对宏观经济预测的影响

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This paper develops indicators of unstructured press information by exploiting word vector representations. A model is trained using a corpus covering 90 years of Wall Street Journal content. The information content of the indicators is assessed through business cycle forecast exercises. The vector representations can learn meaningful word associations that are exploited to construct indicators of uncertainty. In-sample and out-of-sample forecast exercises show that the indicators contain valuable information regarding future economic activity. The combination of indices associated with different subjective states (e.g., uncertainty, fear, pessimism) results in further gains in information content. The documented performance is unmatched by previous dictionary-based word counting techniques proposed in the literature. (C) 2020 International Institute of Forecasters. Published by Elsevier B.V. All rights reserved.
机译:本文通过利用Word Vector表示,开发非结构化的新闻信息的指标。使用涵盖90年的华尔街日志内容的语料库进行培训。指标的信息内容通过商业周期预测练习进行评估。矢量表示可以学习被利用的有意义的单词关联,以构建不确定性指标。在样本和样本外预测练习表明该指标包含有关未来经济活动的有价值的信息。与不同主观状态(例如,不确定性,恐惧,悲观)相关的指数的组合导致信息内容的进一步提升。记录的性能是由文献中提出的基于先前的基于词典的单词计数技术无与伦比的性能。 (c)2020国际预测研究所。由elsevier b.v出版。保留所有权利。

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