Deep Neural Network
Deep neural networks (DNNs) are complex computational models aiming to mimic the human brain's learning capabilities, primarily focusing on achieving high accuracy and efficiency in various tasks. Current research emphasizes understanding DNN training dynamics, including phenomena like neural collapse and the impact of architectural choices (e.g., convolutional, transformer, and operator networks) and training strategies (e.g., weight decay, knowledge distillation, active learning). This understanding is crucial for improving DNN performance, robustness (including against adversarial attacks and noisy data), and resource efficiency in diverse applications ranging from image recognition and natural language processing to scientific modeling and edge computing.
Papers
Distributed Semantic Segmentation with Efficient Joint Source and Task Decoding
Danish Nazir, Timo Bartels, Jan Piewek, Thorsten Bagdonat, Tim Fingscheidt
On-Device Training of Fully Quantized Deep Neural Networks on Cortex-M Microcontrollers
Mark Deutel, Frank Hannig, Christopher Mutschler, Jürgen Teich
Understanding the Dependence of Perception Model Competency on Regions in an Image
Sara Pohland, Claire Tomlin
An Adaptive Indoor Localization Approach Using WiFi RSSI Fingerprinting with SLAM-Enabled Robotic Platform and Deep Neural Networks
Seyed Alireza Rahimi Azghadi, Atah Nuh Mih, Asfia Kawnine, Monica Wachowicz, Francis Palma, Hung Cao
A Scale-Invariant Diagnostic Approach Towards Understanding Dynamics of Deep Neural Networks
Ambarish Moharil, Damian Tamburri, Indika Kumara, Willem-Jan Van Den Heuvel, Alireza Azarfar
Evaluating Deep Neural Networks in Deployment (A Comparative and Replicability Study)
Eduard Pinconschi, Divya Gopinath, Rui Abreu, Corina S. Pasareanu
Causal inference through multi-stage learning and doubly robust deep neural networks
Yuqian Zhang, Jelena Bradic
Graph Expansions of Deep Neural Networks and their Universal Scaling Limits
Nicola Muca Cirone, Jad Hamdan, Cristopher Salvi
Using deep neural networks to detect non-analytically defined expert event labels in canoe sprint force sensor signals
Sarah Rockstrok, Patrick Frenzel, Daniel Matthes, Kay Schubert, David Wollburg, Mirco Fuchs
SwishReLU: A Unified Approach to Activation Functions for Enhanced Deep Neural Networks Performance
Jamshaid Ul Rahman, Rubiqa Zulfiqar, Asad Khan, Nimra