Gang Liu, Michael Sun, et al.
ICLR 2025
We present methods to systematically design a feedforward neural-network detector from the knowledge of the channel characteristics. Its performance is compared with the conventional linear equalizer in a magnetic recording channel suffering from signal-dependent noise and nonlinear intersymbol interference. The superiority of the nonlinear schemes are clearly observed in all cases studied, especially in the presence of severe nonlinearity and noise. We also show that the decision boundaries formed by a theoretically derived neural-network classifier are geometrically close to those of a neural network trained by the backpropagation algorithm. The approach in this work is suitable for quantifying the gain in using a neural-network method as opposed to linear methods in the classification of noisy patterns. © 1997 IEEE.
Gang Liu, Michael Sun, et al.
ICLR 2025
Amy Lin, Sujit Roy, et al.
AGU 2024
Tim Erdmann, Stefan Zecevic, et al.
ACS Spring 2024
Michael Muller, Anna Kantosalo, et al.
CHI 2024