Convolution Neural Networks trained for the task of lens finding with similar
architecture and training data as is commonly found in the literature are
biased classifiers. An understanding of the selection function of lens finding
neural networks will be key to fully realising the potential of the large
samples of strong gravitational lens systems that will be found in upcoming
wide-field surveys. We use three training datasets, representative of those
used to train galaxy-galaxy and galaxy-quasar lens finding neural networks. The
networks preferentially select systems with larger Einstein radii and larger
sources with more concentrated source-light distributions. Increasing the
detection significance threshold to 12σ from 8σ results in 50 per
cent of the selected strong lens systems having Einstein radii
θE​≥ 1.04 arcsec from θE​≥ 0.879
arcsec, source radii RS​≥ 0.194 arcsec from RS​≥ 0.178 arcsec and
source S\'ersic indices nScS​≥ 2.62 from
nScS​≥ 2.55. The model trained to find lensed
quasars shows a stronger preference for higher lens ellipticities than those
trained to find lensed galaxies. The selection function is independent of the
slope of the power-law of the mass profiles, hence measurements of this
quantity will be unaffected. The lens finder selection function reinforces that
of the lensing cross-section, and thus we expect our findings to be a general
result for all galaxy-galaxy and galaxy-quasar lens finding neural networks.Comment: Submitted to MNRA