EA - Data on how much solutions differ in effectiveness by Benjamin Todd
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Link to original articleWelcome to The Nonlinear Library, where we use Text-to-Speech software to convert the best writing from the Rationalist and EA communities into audio. This is: Data on how much solutions differ in effectiveness, published by Benjamin Todd on February 17, 2023 on The Effective Altruism Forum.Click the link above to see the full article and charts. Here is a summary I wrote for the latest edition to the 80,000 Hours newsletter, or see the Twitter version.Is it really true that some ways of solving social problems achieve hundreds of times more, given the same amount of effort?Back in 2013, Toby Ord1 pointed out some striking data about global health. He found that the best interventions were:10,000x better at creating years of healthy life than the worst interventions.50x better than the median intervention.He argued this could have radical implications for people who want to do good, namely that a focus on cost-effectiveness is vital.For instance, it could suggest that by focusing on the best interventions, you might be able to have 50 times more impact than a typical person in the field.This argument was one of the original inspirations for our work and effective altruism in general.Now, ten years later, we decided to check how well the pattern in the data holds up and see whether it still applies – especially when extended beyond global health.We gathered all the datasets we could find to test the hypothesis. We found data covering health in rich and poor countries, education, US social interventions, and climate policy.If you want to get the full picture on the data and its implications, read the full article (with lots of charts!):How much do solutions to social problems differ in effectiveness? A collection of all the studies we could find.The bottom line is that the pattern Toby found holds up surprisingly well.This huge variation suggests that once you’ve built some career capital and chosen some problem areas, it’s valuable to think hard about which solutions to any problem you’re working on are most effective and to focus your efforts on those. The difficult question, however, is to say how important this is. I think people interested in effective altruism have sometimes been too quick to conclude that it’s possible to have, say, 1,000 times the impact by using data to compare the best solutions.First, I think a fairer point of comparison isn’t between best and worst but rather between the best measurable intervention and picking randomly. And if you pick randomly, you expect to get the mean effectiveness (rather than the worst or the median).Our data only shows the best interventions are about 10 times better than the mean, rather than 100 or 1,000 times better.Second, these studies will typically overstate the differences between the best and average measurable interventions due to regression to the mean: if you think a solution seems unusually good, that might be because it is actually good, or because you made an error in its favour. The better something seems, the greater the chance of error. So typically the solutions that seem best are actually closer to the mean. This effect can be large.Another important downside of a data-driven approach is that it excludes many non-measurable interventions. The history of philanthropy suggests the most effective solutions historically have been things like R&D and advocacy, which can’t be measured ahead of time in randomised trials.This means that restricting yourself to measurable solutions could mean excluding the very best ones.And since our data shows the very best solutions are far more effective than average, it’s very bad for your impact to exclude them.In practice, I’m most keen on the “hits-based approach†to choosing solutions. I think it’s possible to find rules of thumb that make a solution more likely to be among the very most effective, such as “does this solution have the chance of solving a lot of the problem?â€, “does it offer leverage?â€, “does it...
