@article {86, title = {Efficient antihydrogen detection in antimatter physics by deep learning}, journal = {Journal of Physics Communications}, volume = {1}, year = {2017}, pages = {025001}, abstract = {Antihydrogen is at the forefront of antimatter research at the CERN Antiproton Decelerator. Experiments aiming to test the fundamental CPT symmetry and antigravity effects require the efficient detection of antihydrogen annihilation events, which is performed using highly granular tracking detectors installed around an antimatter trap. Improving the efficiency of the antihydrogen annihilation detection plays a central role in the final sensitivity of the experiments. We propose deep learning as a novel technique to analyze antihydrogen annihilation data, and compare its performance with a traditional track and vertex reconstruction method. We report that the deep learning approach yields significant improvement, tripling event coverage while simultaneously improving performance in terms of AUC by 5\%.}, url = {http://stacks.iop.org/2399-6528/1/i=2/a=025001}, author = {P Sadowski and B Radics and Ananya and Y Yamazaki and P Baldi} }