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An AI with an Agenda: How Our Biases Leak Into ...

An AI with an Agenda: How Our Biases Leak Into Machine Learning (MDC 2020)

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Arthur Doler

May 04, 2020
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  1. Arthur Doler @arthurdoler [email protected] Slides: Handout: AN AI WITH AN

    AGENDA How Our Biases Leak Into Machine Learning bit.ly/art-ai-agenda-necode2019 None
  2. Class I – Phantoms of False Correlation Class II –

    Specter of Biased Sample Data Class III – Shade of Overly-Simplistic Maximization (Class IV is boring) Class V – The Simulation Surprise Class VI – Apparition of Fairness Class VII – The Feedback Devil
  3. KEEP IN MIND YOU NEED TO KNOW WHO CAN BE

    AFFECTED IN ORDER TO UN-BIAS
  4. CLASS I - PHANTOMS OF FALSE CORRELATION Know what question

    you’re asking Trust conditional probability over straight correlation
  5. CLASS II - SPECTER OF BIASED SAMPLE DATA Recognize data

    is biased even at rest Make sure your sample set is crafted properly Excise problematic predictors, but beware their shadow columns Build a learning system that can incorporate false positives and false negatives as you find them Try using adversarial techniques to detect bias
  6. CLASS III - SHADE OF OVERLY-SIMPLISTIC MAXIMIZATION Remember models tell

    you what was, not what should be Try combining dependent columns and predicting that Try complex algorithms that allow more flexible reinforcement
  7. CLASS V – THE SIMULATION SURPRISE Don’t confuse the map

    with the territory Always reality-check solutions from simulations
  8. CLASS VI - APPARITION OF FAIRNESS Consider predictive accuracy as

    a resource to be allocated Possibly seek external auditing of results, or at least another team
  9. CLASS VII - THE FEEDBACK DEVIL Ignore or adjust for

    algorithm-suggested results Look to control engineering for potential answers
  10. AI Now Institute Georgetown Law Center on Privacy and Technology

    Knight Foundation’s AI ethics initiative fast.ai Algorithmic Justice League