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by norkakn
3729 days ago
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Latex is a wonderful way to make a marketing paper look like a scientific one. It doesn't accurately describe the method, but that isn't really its purpose. It's a more technical description of the blog post, meant for people using the product to understand some of the tradeoffs and get more accurate results. They are still having people make very fundamentally flawed assumptions about the data, which results in incorrect conclusions, and they are still not presenting the results in a way that people correctly interpret them. That being said, those are really hard to solve, and models that would try to correct for them would likely require a lot more data and be overly conservative for more people. What are your reasons for disliking Optimizely? |
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Should have everything you would ever want to know about the method.
I agree with you that the problem of inference and interpretation between A/B data, algorithms, and the people who make decisions from them is a hard one and worth working on.
That said, I do think the two sources of error our stats engine addresses - repeatedly checking results, and cherry picking from many metrics and variations - did make progress in having folks correctly interpret A/B Tests. This did result in more conservative results, but the benefit was that the variations that do become significant are more trustworthy. I think this was absolutely the right tradeoff to make for our customers, and trustworthyness is a pretty important aspiration for stats/ML/data science in general.
Of course I did write the thing, so I'm not very impartial.