AI中文摘要
因子模型的表现不仅取决于模型本身,还取决于测试资产的构建方式。我们从广泛的CRSP范围内形成特征未排序的随机投资组合,并改变股票选择、初始加权、持有期和再平衡。排名发生实质性变化:买入持有策略偏好FF5和FF6,而每日恒定加权偏好FF3,这是跨设计最稳定的模型。尽管q5在因子跨度测试中达到了最高的最大夏普比率,但它对随机投资组合留下了相对较大且对构建敏感的定价误差。这些结果反映了每个模型定价误差向量的构建特定加权。因此,测试资产构建,包括动态权重管理,是模型评估中的一个设计选择。
英文摘要
Factor-model performance depends not only on the model but also on how test assets are constructed. We form characteristic-unsorted random portfolios from a broad CRSP universe and vary stock selection, initial weighting, holding, and rebalancing. Rankings shift materially: buy-and-hold favors FF5 and FF6, whereas daily constant-weighting favors FF3, the most stable model across designs. Although q5 attains the highest maximum Sharpe ratio in factor-spanning tests, it leaves comparatively large and construction-sensitive pricing errors on random portfolios. These results reflect construction-specific weighting of each model's pricing-error vector. Test-asset construction, including dynamic weight management, is therefore a design choice in model evaluation.