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Beating Human Analysts in Nowcasting Corporate Earnings by using Publicly Available Stock Price and Correlation Features

机译:通过使用公开的股票价格和相关性,击败人类分析师在北卡斯特公司盈利

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Corporate earnings are a crucial indicator for investment and business valuation. Despite their importance and the fact that classic econometric approaches fail to match analyst forecasts by orders of magnitude, the automatic prediction of corporate earnings from public data is not in the focus of current machine learning research. In this paper, we present for the first time a fully automatized machine learning method for earnings prediction that at the same time a) only relies on publicly available data and b) can outperform human analysts. The latter is shown empirically in an experiment involving all S&P 100 companies in a test period from 2008 to 2012. The approach employs a simple linear regression model based on a novel feature space of stock market prices and their pairwise correlations. With this work we follow the recent trend of nowcasting, i.e., of creating accurate contemporary forecasts of undisclosed target values based on publicly observable proxy variables.
机译:企业盈利是投资和商业估值的重要指标。尽管他们重要性和经典的经济学方法未能按数量级匹配分析师预测,但公共数据的企业收入的自动预测不在当前机器学习研究的重点中。在本文中,我们首次出现了一个完全自动化的机器学习方法的收益预测,同时a)仅依赖于公开的数据和b)可以胜过人类分析师。后者在经验上显示,在2008年至2012年的测试期间涉及所有标准普尔100家公司的实验。该方法基于一部基于新颖的股票市场价格及其成对相关性的新颖特征空间采用简单的线性回归模型。有了这项工作,我们遵循最近的潮流,即,基于公开可观察的代理变量创建准确的当代预测未公开的目标值。

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