AI RESEARCH

On the explainability of max-plus neural networks

arXiv CS.LG

ArXi:2605.00889v1 Announce Type: cross We investigate the explanability properties of the recently proposed linear-min-max neural networks. At initialization, they can be interpreted as k-medoids with the infinity norm as a distance. Then, they are trained using subgradient descent to better fit the data. The model has been shown to be a universal approximator. Yet, we can trace the decision process because a single most activated neuron is responsible for the value of the output.