TU3.R1: Deep Learning in Communications
Tue, 9 Jul, 14:25 - 15:45
Location: Ballroom II & III
Session Chair: Iñaki Esnaola,
Track: 8: Deep Learning (such as understanding large language models)
Tue, 9 Jul, 14:25 - 14:45

TU3.R1.1: PAC Learnability for Reliable Communication over Discrete Memoryless Channels

Jiakun Liu, Wenyi Zhang, University of Science and Technology of China, China; H. Vincent Poor, Princeton University, United States
Tue, 9 Jul, 14:45 - 15:05

TU3.R1.2: Neural Estimation of Multi-User Capacity Regions over Discrete Channels

Bashar Huleihel, Dor Tsur, Ziv Aharoni, Ben Gurion University of the Negev, Israel; Oron Sabag, The Hebrew University of Jerusalem, Israel; Haim Permuter, Ben Gurion University of the Negev, Israel
Tue, 9 Jul, 15:05 - 15:25

TU3.R1.3: Neural Network Equalizers and Successive Interference Cancellation for Bandlimited Channels with a Nonlinearity

Daniel Plabst, Tobias Prinz, Francesca Diedolo, Thomas Wiegart, Technical University of Munich, Germany; Georg Böcherer, Huawei Technologies Düsseldorf GmbH, Germany; Norbert Hanik, Gerhard Kramer, Technical University of Munich, Germany
Tue, 9 Jul, 15:25 - 15:45

TU3.R1.4: Graph Neural Network-based Joint Equalization and Decoding

Jannis Clausius, Marvin Geiselhart, Daniel Tandler, Stephan ten Brink, University of Stuttgart, Germany