Evaluating Generative Adversarial Networks for particle hit generation in a cylindrical drift chamber using Fréchet Inception Distancehttp://www-comet.kek.jp/COMET5/publications/evaluating-generative-adversarial-networks-for-particle-hit-generation-in-a-cylindrical-drift-chamber-using-frechet-inception-distancehttp://www-comet.kek.jp/COMET5/@@site-logo/logo.png
Evaluating Generative Adversarial Networks for particle hit generation in a cylindrical drift chamber using Fréchet Inception Distance
I. Andreou and N. Mouelle
Department of Physics, Imperial College London, Prince Consort Road,London,United Kingdom
We use Fréchet Inception Distance (FID) measured in the latent spaces of pre-trained, fine-tuned and custom-made inception networks to evaluate Generative Adversarial Networks (GANs) developed by the COherent Muon to Electron Transition (COMET) collaboration to generate sequences of background hits in a Cylindrical Drift Chamber (CDC). We validate the convergence of the GANs' training and show that the use of self-attention layers reduces FID. Our method enables the use of FID as an evaluation metric even when an application-specific inception network is not readily available, making it transferable to other GAN applications in High Energy Physics.