2000 character limit reached
Topological Understanding of Neural Networks, a survey (2301.09742v1)
Published 23 Jan 2023 in cs.LG and math.AT
Abstract: We look at the internal structure of neural networks which is usually treated as a black box. The easiest and the most comprehensible thing to do is to look at a binary classification and try to understand the approach a neural network takes. We review the significance of different activation functions, types of network architectures associated to them, and some empirical data. We find some interesting observations and a possibility to build upon the ideas to verify the process for real datasets. We suggest some possible experiments to look forward to in three different directions.