5.1 False Positives and Negatives

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Topic Icon - 5.1 False Positives and Negatives.png

How confident should we be about an apparent signal before we make decisions based upon it? What if we are wrong? These are questions faced by every medical patient, police officer, and president. The answer depends not only on the facts about the signal, but also on the perceived severity of the outcome in the event of an error—a signal falsely identified or inadvertently missed.

The Lesson in Context

This lesson gives students hands-on examples of false positives and negatives through a Jupyter notebook, in which they are asked to make moral judgments on the threshold for a positive test result based on the consequences of a false positive or negative.

Earlier Lessons

2.2 Systematic and Statistical UncertaintyTopic Icon - 2.2 Systematic and Statistical Uncertainty.png
  • In an earlier lesson, students explored how statistical and systematic uncertainty can make data suggest false inferences, through either random variation within an insufficiently large sample (statistical uncertainty) or some systematic bias in the data (systematic uncertainty). Both of these sources of uncertainty can lead to either false positives or false negatives.
3.1 Probabilistic ReasoningTopic Icon - 3.1 Probabilistic Reasoning.png
  • In this lesson, students will learn to use numeric credence levels to track and communicate their confidence levels about various claims and predictions. Credence levels can be a good way to make explicit the likelihood of false positives and false negatives in a given case, and one's tolerance for the two types of errors.
4.2 Finding Patterns in Random NoiseTopic Icon - 4.2 Finding Patterns in Random Noise.png
  • In the previous lesson, students explored how we often mistake noise for signal, because we are always looking for patterns through which to make sense of the world. This constant search for patterns can lead to false positives. On the other hand, sometimes there is so much noise that we miss real patterns, leading to false negatives.

Later Lessons

5.2 Scientific OptimismTopic Icon - 5.2 Scientific Optimism.png
  • "Scientific optimism" is a can-do attitude adopted by scientists by which they convince themselves that even difficult problems are solvable. With this "scientific optimism," scientists can successfully take on problems that take years or even decades to solve, with hundreds of steps and iterations involved in developing techniques, inventing technologies, collecting and analyzing data. Scientific optimism may also help scientists continue to detect false positives and false negatives in their previous work, iteratively improving our scientific understanding as we accumulate more evidence.

Takeaways

After this lesson, students should

  1. Understand that there is always the inevitability of a trade-off—for a given test, one can reduce the risk of false positives by increasing the risk of false negatives, and vice versa. You make this trade-off when you determine what the threshold is (e.g. convict someone if you're 99% or 70% certain that they're guilty).
  2. Understand that whether false positive or negative is preferable depends on a human values judgement on the consequences of either: (e.g. "innocent people shouldn't be in jail") and risks (e.g. dangerous people committing more crimes).
  3. (Data science) Recognise that maximising the overall accuracy of a classification problem may sometimes be undesirable.
  4. (Data science) Identify where a subtle classification problem may be hidden in a machine learning application.

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