Using Convolutional Neural Networks to Analyze Function Properties from Images (Demonstration)

  • Yoad Lewenberg ,
  • Yoram Bachrach ,
  • Ian Kash ,
  • Peter Key

AAAI 2016 |

We propose a system for determining properties of mathematical functions given an image of their graph representation. We demonstrate our approach for two dimensional graphs(curves of single variable functions) and three-dimensional graphs (surfaces of two variable functions), studying the properties of convexity and symmetry. Our method uses a Convolutional Neural Network which classifies functions according to these properties, without using any hand-crafted features. We propose algorithms for randomly constructing functions with convexity or symmetry properties, and use the images generated by these algorithms to train our network. Our system achieves a high accuracy on this task, even for functions where humans find it difficult to determine the function’s properties from its image.