Return Predictability in Santiago Stock Exchange: An Empirical Analysis Using Portfolio Method

Carlos G. Elías, Rokas Kirlys, K. Topyan
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Abstract

This paper provides a comprehensive analysis on stock return predictability in Santiago Stock Exchange from January 2007 to January 2016 by employing portfolio method. In the risk-related predictors, we found no statistically significant predictive power of beta, total volatility, and idiosyncratic volatility in all stock sets. In addition to market cap and short-term reversal, the two cheapness variables, book-to-market and cash-flow-to-price ratios showed consistent economically and statistically significant predictive powers in determining the stock returns in the Santiago Stock Exchange. We also found that regrouping the stocks as small and large, low and high book-to-market, beta, and momentum according to the median values adds insights to the analysis. Our results show that the set of large stocks in the exchange is the least predictable set of stocks, however, momentum is efficiently predicted their return. Momentum is significant only for the large stocks and low book-to-market stocks, and risk-related predictors are good for high beta stocks only.
圣地亚哥证券交易所收益可预测性:基于投资组合方法的实证分析
本文采用投资组合法对圣地亚哥证券交易所2007年1月至2016年1月股票收益的可预测性进行了综合分析。在风险相关的预测因子中,我们发现在所有股票集中beta、总波动率和特殊波动率的预测能力在统计上没有显著性。除了市值和短期反转外,两个便宜变量,账面市值比和现金流价格比在决定圣地亚哥证券交易所股票回报方面表现出一致的经济和统计显著的预测能力。我们还发现,根据中位数将股票重新分组为小型和大型,低和高账面市值比,beta和动量增加了分析的洞察力。我们的研究结果表明,交易所中的大型股票集合是最难以预测的股票集合,然而动量可以有效地预测它们的收益。动量只对大股和账面市值比低的股票有意义,风险相关的预测指标只对高贝塔系数的股票有效。
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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