A Hypothesis for the Aesthetic Appreciation in Neural Networks

Cheng, Xu, Wang, Xin, Xue, Haotian, Liang, Zhengyang, Zhang, Quanshi

arXiv.org Artificial Intelligence 

This paper proposes a hypothesis for the aesthetic appreciation that aesthetic images make a neural network strengthen salient concepts and discard inessential concepts. In order to verify this hypothesis, we use multi-variate interactions to represent salient concepts and inessential concepts contained in images. Furthermore, we design a set of operations to revise images towards more beautiful ones. In experiments, we find that the revised images are more aesthetic than the original ones to some extent. The code will be released when the paper is accepted.