Paper ID: 2408.16686

CW-CNN & CW-AN: Convolutional Networks and Attention Networks for CW-Complexes

Rahul Khorana

We present a novel framework for learning on CW-complex structured data points. Recent advances have discussed CW-complexes as ideal learning representations for problems in cheminformatics. However, there is a lack of available machine learning methods suitable for learning on CW-complexes. In this paper we develop notions of convolution and attention that are well defined for CW-complexes. These notions enable us to create the first neural network that can receive a CW-complex as input. We illustrate and interpret this framework in the context of supervised prediction.

Submitted: Aug 29, 2024