| > When talking about systemic bias, I think it's less about intent, but that is one of the things that makes it so dangerous in terms of the level and longevity of impact; it's much more difficult to fix when there is no single bad actor at which to point the finger. Thanks for approaching it this way. I think we often (societally, looking for blood) want to find a bad actor and are intentionally blind to bad things that just sort of happen at the edges, but need oversight to find and fix. > For example, I've heard the argument that some bias isn't racial, it's economic, as in, a bias against poor people not people of color. But when there are already so many systemic economic biases against people of color, a lot of times it ends up being a distinction without a difference. It doesn't help the sufferer, at the time, to be told that someone else would be suffering equally, but it does help fix the problem I think, to realize that it's circular via poverty or whatever, not simply racial, because in some areas and at some times it has simply been racial and it hugely changes how you fix it. If it's overt you can't just offer change, you have to prevent further damage during the repair process. > The reason I keep the list is as a reminder of the level of impact you can unintentionally have in the systems you build without extremely deep thought and broad context. Have you ever read comp.risks? I really like it as a source of Therac-25 type stories (across all fields) that engineering types should think about when building things. > I just know that I've not yet been able to find any real systemic bias, at least in the US, against rich, caucasian males. Is Twitter not a system? :D It gets a bit fuzzy with bias against the majority. Every model that isn't right disadvantages everyone and the majority is part of everyone. So bad drug laws impact white people too. But because actual race is only encoded in one direction (affirmative action, "positive" directions) then anything that impacts white people also impacts everyone, whereas there are often specific laws (such as for constructing "The Projects" in the first place) that do directly exclude whites from the harm they caused. So subgroups definitely experience more exclusive problems, even aside from the amount of problem. > how difficult these things are to rectify at a systemic level, since the vast majority of doctors using the still-biased eGFR formula have no idea that it has this problem. I think it's just that the story is best told from that moment. That's the OMG. From there it improves, and I'm sure they sent a copy of the report worldwide asap. But no solution is ever 100% so there's no wrap-up party and it will never look done and solved. (Even one doctor who didn't check their email...) > Fraud generally requires mal-intent, which most of these models and products didn't have, at least if we're being generous and optimistic. Probably, but if they're saying "our product does X" maybe there's something to grab onto and investigate. Maybe they did misrepresent it. > I just finished reading a book called, Weapons of Math Destruction, which talks about the damage models can do. The author posits a set of tests to tell whether the model is beneficial or destructive. One of the hallmarks, the author argues, of a good predictive modelling system is one which includes feedback into the system as a result of its predictions. Good point, and thanks for the book recommendation. A lot of things aren't amenable to that though, because the hypothetical city/community meeting can't take years to watch the outcomes and train continue to build a model, they've got to work from historical data up to that point and make policy decisions in the meeting. > One of the other primary tests is dependent on the context of how the model is used, so it's not really reasonable to try to determine the benefits of a model in isolation with no consideration for the appropriateness of its implementation and utility. I've been seeing that as the predictive vs directive use. City planning instead of sentencing guidelines. It's a big job, but good work. Keep it up! |