The effects of implementing phenomenology in a deep neural network

Heliyon. 2021 Jun 8;7(6):e07246. doi: 10.1016/j.heliyon.2021.e07246. eCollection 2021 Jun.

Abstract

There have been several recent attempts at using Artificial Intelligence systems to model aspects of consciousness (Gamez, 2008; Reggia, 2013). Deep Neural Networks have been given additional functionality in the present attempt, allowing them to emulate phenological aspects of consciousness by self-generating information representing multi-modal inputs as either sounds or images. We added these functions to determine whether knowledge of the input's modality aids the networks' learning. In some cases, these representations caused the model to be more accurate after training and for less training to be required for the model to reach its highest accuracy scores.

Keywords: Hebbian learning; Neural network; Synthetic phenomenology.