Litcius/Paper detail

Black Boxes or Unflattering Mirrors? Comparative Bias in the Science of Machine Behaviour

Cameron Buckner

2021The British Journal for the Philosophy of Science47 citationsDOI

Abstract

The last 5 years have seen a series of remarkable achievements in deep-neural-network-based artificial intelligence research, and some modellers have argued that their performance compares favourably to human cognition. Critics, however, have argued that processing in deep neural networks is unlike human cognition for four reasons: they are (i) data-hungry, (ii) brittle, and (iii) inscrutable black boxes that merely (iv) reward-hack rather than learn real solutions to problems. This article rebuts these criticisms by exposing comparative bias within them, in the process extracting some more general lessons that may also be useful for future debates.

Topics & Concepts

CognitionArtificial neural networkComputer scienceArtificial intelligenceProcess (computing)Cognitive scienceEpistemologyPsychologyPhilosophyOperating systemNeuroscienceExplainable Artificial Intelligence (XAI)Reinforcement Learning in Robotics