• Challenges of Machine Learning: It is not trivial to handle data structures other than vectors in Machine Learning (does it mean non-mainstream?).
    • For example, graphs.
    • If we can handle graphs, we can use them for various things such as friend relationships or compounds (just an example).
    • Graph kernels.
  • Graph Deep Learning.
    • Using Neural Networks for feature extraction from graph structures.
  • Graph Convolution.
    • Similar to CNN, it involves incorporating information from neighboring vertices and compressing it. (Expert in Information Science)