top of page

Data bias: when the information is favorable to a group

  • Writer: Jorge Guerra Pires
    Jorge Guerra Pires
  • Oct 23, 2022
  • 1 min read


ree

Daniel Kahneman brought to attention that humans are biased and noisy. The former means it tends to decide on a direction, whereas the latter, it can be influenced by random factors. One can be indentified, the other not.


Some biases we may have one datasets:

  1. Gender bias;

  2. Color bias;

  3. Nationality bias

  4. Surname bias

  5. Past bias

Make sure if you a data scientist, keep you dataset well-represented to all the group sets you want to model!



ree
Biased dataset in Portuguese creates prejudice on machine


Did you know: our world is designed for men


It may sound like dummy feminism, but we have real effects. One is, say, for medical treatments, or even female officers.

Of course, AI should be the biggest concern, since it is here to stay, and soon may be taking decisions. Initial voice recognitions could not recognize female voice.



ree











Comments


Subscribe Form

Thanks for submitting!

©2022 by IdeaCodingLab

bottom of page