因子(编程语言)
条件作用
计量经济学
计算机科学
统计
数学
程序设计语言
作者
Wayne E. Ferson,Andrew F. Siegel,Junbo L. Wang
标识
DOI:10.1017/s002210902400005x
摘要
Abstract We develop methods for testing factor models when the weights in portfolios of factors and test assets can vary with lagged information. We derive and evaluate consistent standard errors and finite sample bias adjustments for unconditional maximum squared Sharpe ratios and their differences. Bias adjustment using a second-order approximation performs well. We derive optimal zero-beta rates for models with dynamically trading portfolios. Factor models’ Sharpe ratios are larger but standard test asset portfolios’ maximum Sharpe ratios are larger still when there is dynamic trading. As a result, most of the popular factor models are rejected.
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