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Beating the market with small portfolios: Evidence from Brazil

机译:用小型投资组合打败市场:来自巴西的证据

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Optimal portfolios with a restriction on the number of assets, also referred to as cardinality-constrained portfolios, have been receiving attention in the literature due to its popularity among market practitioners and retail investors. In most cases, however, the interest is in proposing efficient optimization methods to solve the problem, with little or no attention to the characteristics of the resulting portfolio such as risk-adjusted performance and turnover. We address this question by implementing a tractable reformulation of the cardinality-constrained version of the minimum variance portfolio. We analyze the out-of-sample performance of cardinality-constrained portfolios according to alternative criteria and check the robustness of the results for portfolios with alternative number of assets and under alternative re-balancing frequencies. Our empirical application for the Brazilian equities market shows that cardinality-constrained minimum variance portfolios with very few assets, e.g. 3 stocks, can deliver statistically lower portfolio risk and higher Sharpe ratios in comparison to the market index. Similar results are obtained for constrained portfolios with 5 and 10 assets and under daily, weekly, and monthly re-balancing frequencies. Our evidence indicates that it is possible to obtain better risk-adjusted performance with fewer securities in the portfolio by using an improved allocation scheme.
机译:资产数量受到限制的最优投资组合,也称为基数约束投资组合,由于其在市场从业者和散户投资者中的受欢迎程度而备受关注。但是,在大多数情况下,人们的兴趣是提出有效的优化方法来解决问题,而很少或根本没有注意最终投资组合的特征,例如风险调整后的业绩和营业额。我们通过对最小方差投资组合的基数约束版本进行易于处理的重新表述来解决这个问题。我们根据替代标准分析了基数受限的投资组合的样本外绩效,并检查了具有替代资产数量和替代再平衡频率的投资组合结果的稳健性。我们对巴西股票市场的经验应用表明,基数受限的最小方差投资组合资产很少,例如与市场指数相比,3只股票可以提供统计学上更低的投资组合风险和更高的夏普比率。对于具有5个和10个资产的受约束投资组合以及每天,每周和每月的重新平衡频率,也获得了类似的结果。我们的证据表明,通过使用改进的分配方案,可以用更少的投资组合中的证券获得更好的风险调整业绩。

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