I am doing an Ask Me Anything. Work and other time constraints permitting, I intend to start answering questions on Sunday, 2020/07/05 12:01PM PDT.
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I am Top 20 (currently #11) out of 1000+ on covid-19 questions on the amateur forecasting website Metaculus. I also do fairly well on other prediction tournaments, and my guess is that my thoughts have a fair amount of respect in the nascent amateur forecasting space. Note that I am not a professional epidemiologist and have very little training in epidemiology and adjacent fields, and there are bound to be considerations I will inevitably miss as an amateur forecaster.
I also do forecasting semi-professionally, though I will not be answering questions related to work. Other than forecasting, my past hobbies and experiences include undergrad in economics and mathematics, a data science internship in the early days of Impossible Foods (a plant-based meats company), software engineering at Google, running the largest utilitarian memes page on Facebook, various EA meetups and outreach projects, long-form interviews of EAs on Huffington Post, lots of random thoughts on EA questions, and at one point being near the top of several obscure games.
For this AMA, I am most excited about answering high-level questions/reflections on forecasting (eg, what EAs get wrong about forecasting, my own past mistakes, outside views and/or expert deference, limits of judgmental forecasting, limits of expertise, why log-loss is not always the best metric, calibration, analogies between human forecasting and ML, why pure accuracy is overrated, the future of forecasting...), rather than doing object-level forecasts.
I am also excited to talk about interests unrelated to forecasting or covid-19. In general, you can ask me anything, though I might not be able to answer everything. All opinions are, of course, my own, and do not represent those of past, current or future employers.
A botched Tolstoy quote comes to mind:
Of course that's not literally true. But when I reflect on my various mistakes, it's hard to find a true pattern. To the extent there is one, I'm guessing that the highest-order bit is that many of my mistakes are emotional rather than technical. For example,
If the emotion hypothesis is true, to get better at forecasting, the most important thing might well to be looking inwards, rather than say, a) learning more statistics or b) acquiring more facts about the "real world."