Systematic comparison of neural networks used in discovering strong gravitational lenses
Anupreeta More, Raoul Canameras, Anton T. Jaelani, Yiping Shu,, Yuichiro Ishida, Kenneth C. Wong, Kaiki Taro Inoue, Stefan Schuldt, and, Alessandro Sonnenfeld

TL;DR
This paper systematically compares neural networks from four teams in discovering strong gravitational lenses using HSC Survey data, highlighting the importance of training datasets and network robustness for future large-scale surveys.
Contribution
It provides the first systematic benchmarking of different neural networks for gravitational lens detection, analyzing the impact of training data and network architecture.
Findings
Networks perform similarly on real candidate lenses and non-lenses.
Swapping training datasets can improve network performance.
Training data selection significantly influences network effectiveness.
Abstract
Efficient algorithms are being developed to search for strong gravitational lens systems owing to increasing large imaging surveys. Neural networks have been successfully used to discover galaxy-scale lens systems in imaging surveys such as the Kilo Degree Survey, Hyper-Suprime Cam (HSC) Survey and Dark Energy Survey over the last few years. Thus, it has become imperative to understand how some of these networks compare, their strengths and the role of the training datasets as most of the networks make use of supervised learning algorithms. In this work, we present the first-of-its-kind systematic comparison and benchmarking of networks from four teams that have analysed the HSC Survey data. Each team has designed their training samples and developed neural networks independently but coordinated apriori in reserving specific datasets strictly for test purposes. The test sample consists…
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