TY - UNPB
T1 - Non-standard errors in portfolio sorts
AU - Walter, Dominik
AU - Weber, Rüdiger
AU - Weiss, Patrick
PY - 2022/7/7
Y1 - 2022/7/7
N2 - We study the size and drivers of non-standard errors (Menkveld et al., 2021) in portfolio sorts across 14 common methodological decision nodes and 40 sorting variables. These non-standard errors range between 0.05 and 0.26 percent and are, on average, larger than standard errors. Supposedly innocuous decisions cause large variation in estimated premiums, standard errors, non-standard errors, and t-statistics. The impact of decision nodes varies widely across sorting variables. Irrespective of choices in portfolio sorts, we find pervasively positive premiums and alphas for almost all sorting variables. This suggests that while the size of these premiums is uncertain, their sign is remarkably stable. Our code is publicly available.
AB - We study the size and drivers of non-standard errors (Menkveld et al., 2021) in portfolio sorts across 14 common methodological decision nodes and 40 sorting variables. These non-standard errors range between 0.05 and 0.26 percent and are, on average, larger than standard errors. Supposedly innocuous decisions cause large variation in estimated premiums, standard errors, non-standard errors, and t-statistics. The impact of decision nodes varies widely across sorting variables. Irrespective of choices in portfolio sorts, we find pervasively positive premiums and alphas for almost all sorting variables. This suggests that while the size of these premiums is uncertain, their sign is remarkably stable. Our code is publicly available.
KW - Non-standard errors
KW - portfolio sorts
KW - data mining
KW - p-hacking
KW - risk factors
KW - anomalies
U2 - 10.2139/ssrn.4164117
DO - 10.2139/ssrn.4164117
M3 - Working Paper/Preprint
BT - Non-standard errors in portfolio sorts
ER -