Data-Driven Investigation into Anomaly Trading Strategies: Evidence with Econometrics

J. French
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Abstract

This chapter used empirical data from five developed markets and five emerging markets to perform an examination of anomalies using common financial economic approaches along with more innovative econometric models. Of the methodologies used to test for anomalies, the data-driven panel and quantile regressions were empirically found to be better suited over the traditionally common approaches to describe the non-linear, switching behavior of the anomalies. In the developed markets, the statistically significant small firms (size) had the highest average returns. In the developing markets, the lower price-to-earnings (P/E) ratios (value) had the highest average returns. In addition, the research found (1) a small country effect, (2) sales had a negative relationship with returns, and (3) a lower (higher) book-to-market (B/M) was associated with higher returns in the developed (developing) markets, indicating investors received a higher premium for growth (value) equities. The semi-strong form of the efficient market hypothesis was also found to be violated. The anomalies’ behavior varied between sorted portfolios, industries, and developed to emerging markets; though it was found to be consistent through time (not disrupted by bear or bull markets).
数据驱动的异常交易策略研究:计量经济学证据
本章使用来自五个发达市场和五个新兴市场的经验数据,使用常见的金融经济方法以及更具创新性的计量经济模型对异常进行检查。在用于测试异常的方法中,数据驱动面板和分位数回归被经验地发现比传统的通用方法更适合描述异常的非线性、切换行为。在发达市场,统计上显著的小公司(规模)有最高的平均回报。在发展中市场,较低的市盈率(P/E)(价值)具有最高的平均回报。此外,研究发现(1)小国效应,(2)销售与回报呈负相关关系,(3)较低(较高)的账面市值比(B/M)与发达(发展中)市场的高回报相关,表明投资者获得了更高的成长型(价值)股票溢价。有效市场假说的半强形式也被发现是违反的。这些异常行为在分类投资组合、行业、发达市场和新兴市场之间存在差异;尽管人们发现它在时间上是一致的(不受熊市或牛市的影响)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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