利用k近邻预测收益

Peter Easton, Martin M. Kapons, S. Monahan, H. Schütt, Eric Weisbrod
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引用次数: 4

摘要

我们使用一个简单的k近邻(k-NN)模型,通过将其最近的盈利历史与可比公司的盈利历史相匹配,然后从可比公司的领先收益中推断出预测,来预测目标公司的年度收益。我们的模型生成的样本外预测比随机漫步生成的预测更准确;更复杂的k-NN模型;Blouin、Core和Guay(2010)开发的匹配方法;流行的回归模型。这些结果是可靠的。我们的模型的优势适用于不同的误差指标,适用于有分析师跟踪的公司和没有分析师跟踪的公司,适用于不同的预测范围。我们的模型还产生了预测不准确性的一个新的事前指标。这个指标等于可比公司领先收益的四分位数范围,是可靠和有用的。它预测预测的准确性,并确定我们的预测是未来股票回报的强(弱)预测因素的情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting Earnings Using k-Nearest Neighbors
We use a simple k-nearest neighbors (k-NN) model to forecast a subject firm’s annual earnings by matching its recent earnings history to earnings histories of comparable firms, and then extrapolating the forecast from the comparable firms’ lead earnings. Out-of-sample forecasts generated by our model are more accurate than forecasts generated by the random walk; more complicated k-NN models; the matching approach developed by Blouin, Core, and Guay (2010); and popular regression models. These results are robust. Our model’s superiority holds for different error metrics, for firms that are followed by analysts and firms that are not, and for different forecast horizons. Our model also generates a novel ex ante indicator of forecast inaccuracy. This indicator, which equals the interquartile range of the comparable firms’ lead earnings, is reliable and useful. It predicts forecast accuracy and it identifies situations when our forecasts are strong (weak) predictors of future stock returns.
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