TY - JOUR
T1 - Fighting selection bias in statistical learning
T2 - application to visual recognition from biased image databases
AU - Clémençon, Stephan
AU - Laforgue, Pierre
AU - Vogel, Robin
N1 - Publisher Copyright:
© 2023 American Statistical Association and Taylor & Francis.
PY - 2024/1/1
Y1 - 2024/1/1
N2 - In practice, and especially when training deep neural networks, visual recognition rules are often learned based on various sources of information. On the other hand, the recent deployment of facial recognition systems with uneven performances on different population segments has highlighted the representativeness issues induced by a naive aggregation of the datasets. In this paper, we show how biasing models can remedy these problems. Based on the (approximate) knowledge of the biasing mechanisms at work, our approach consists in reweighting the observations, so as to form a nearly debiased estimator of the target distribution. One key condition is that the supports of the biased distributions must partly overlap, and cover the support of the target distribution. In order to meet this requirement in practice, we propose to use a low dimensional image representation, shared across the image databases. Finally, we provide numerical experiments highlighting the relevance of our approach.
AB - In practice, and especially when training deep neural networks, visual recognition rules are often learned based on various sources of information. On the other hand, the recent deployment of facial recognition systems with uneven performances on different population segments has highlighted the representativeness issues induced by a naive aggregation of the datasets. In this paper, we show how biasing models can remedy these problems. Based on the (approximate) knowledge of the biasing mechanisms at work, our approach consists in reweighting the observations, so as to form a nearly debiased estimator of the target distribution. One key condition is that the supports of the biased distributions must partly overlap, and cover the support of the target distribution. In order to meet this requirement in practice, we propose to use a low dimensional image representation, shared across the image databases. Finally, we provide numerical experiments highlighting the relevance of our approach.
KW - Sampling bias
KW - reliable statistical learning
KW - selection effect
KW - visual recognition
U2 - 10.1080/10485252.2023.2259011
DO - 10.1080/10485252.2023.2259011
M3 - Article
AN - SCOPUS:85171550673
SN - 1048-5252
VL - 36
SP - 780
EP - 803
JO - Journal of Nonparametric Statistics
JF - Journal of Nonparametric Statistics
IS - 3
ER -