利用k近邻预测收益

Peter D. Easton, Martin M. Kapons, Steven J. Monahan, Harm H. Schütt, Eric H. Weisbrod
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引用次数: 0

摘要

我们使用一个简单的k近邻算法(以下简称k-NN*)来预测收益。k-NN*对未来1年、2年和3年收益的预测比现有流行的预测方法更准确。k-NN*对未来两年和三年(一年)每股收益以及三年总每股收益的预测比分析师预测的更准确(更不准确)。k-NN*隐含的意外收益与同期市场调整收益(即收益关联系数(EAC))之间的关联是正的,并且超过了替代方法隐含的意外收益的EAC。做多(做空)k-NN*预测盈利正(负)增长的公司的交易策略,其风险调整后的回报高于基于交替预测的类似交易策略。k-NN*算法生成一个经验上可靠的预测准确性事前指标,用于识别k-NN* EAC较大且k-NN*交易策略更有利可图的情况。数据可用性:数据可从文本中描述的公共来源获得。JEL分类:C21;C53;类型;M41。
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
ABSTRACT We use a simple k-nearest neighbors algorithm (hereafter, k-NN*) to forecast earnings. k-NN* forecasts of one-, two-, and three-year-ahead earnings are more accurate than those generated by popular extant forecasting approaches. k-NN* forecasts of two- and three-year (one-year)-ahead EPS and aggregate three-year EPS are more (less) accurate than those generated by analysts. The association between the unexpected earnings implied by k-NN* and the contemporaneous market-adjusted return (i.e., the earnings association coefficient (EAC)) is positive and exceeds the EAC on unexpected earnings implied by alternate approaches. A trading strategy that is long (short) firms for which k-NN* predicts positive (negative) earnings growth earns positive risk-adjusted returns that exceed those earned by similar trading strategies that are based on alternate forecasts. The k-NN* algorithm generates an empirically reliable ex ante indicator of forecast accuracy that identifies situations when the k-NN* EAC is larger and the k-NN* trading strategy is more profitable. Data Availability: Data are available from the public sources described in the text. JEL Classifications: C21; C53; G17; M41.
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