Introduction


  • There is potential for machine learning models to cause harm.
  • Researchers are increasingly required to reflect on the impact of their work.
  • Regulation and oversight are in their infancy.

Tasks


  • Not all applications of machine learning are for the public good.

Data


  • Data is fundamental to the field of machine learning.
  • Datasheets can help us to reflect on the process of data creation and distribution.

Fairness


  • Biases in data lead to biased models.
  • All current models are likely to exhibit some form of bias.
  • Achieving fairness is an increasingly active area of research.

Dataset shift


  • Dataset shift can result from changes in technology, population, and behaviour.
  • Dataset shift can lead to deterioration of models after deployment.
  • Dataset shift is a major issue in terms of deployment of machine learning models.

Explainability


  • “The importance of explainability is a matter of debate.”
  • “Saliency maps highlight regions of data that most strongly contributed to a decision.”

Attacks


  • Models are susceptible to manipulation.