Thibert, Nathalie C. M.
Abstract:
Using a sample of galaxies (M⋆ ≥ 1010.5M⊙) covering an effective area of ∼ 20 deg2 in the CLAUDS+HSC survey, we apply a Random Forest Classifier to automatically identify merger candidates in deep r-band images. We identify a largely pure, ∼ 90% complete sample of mergers which we use to derive the evolution in the merger fraction from 0.25 ≤ zphot ≤ 1.0. We parameterize the merger fraction evolution with a power law of the form fm = f0(1+z)m . Simulating the effects of increasing redshift on the detectability of mergers, we correct our merger fractions for incompleteness to obtain a local merger fraction of f0 = 1.0%±0.2% and power-law index of m = 2.3±0.4, which is inconsistent with the mild or non-evolving merger scenario (m < 1.5) with 96.6% confidence. Finally, we estimate 0.3 merging events to occur per massive galaxy since z = 1.