| > Similarly, when someone claims that "four men watched 2,328 hours of hardcore pornography over the course of a year and took the same number of Implicit Association Tests", you might realize that 2328 hours/(4*365) > 1 hour 36 minutes per day; and ask for the titles and duration of the porn allegedly watched, just to make sure that this extremely onerous experiment has actually been performed. I don’t see the point. The authors could easily respond with a long list of porn titles. (And as an unpaid reviewer with lots of real work to do, are you going to bother verifying every title in the long list?) >Note that the paper about that "experiment" was not accepted Then it's not a very good example to base your argument on. >the real sample size is at least 2328 You’re both wrong. You can’t treat 2328 observations from 4 subjects the same way as 2328 observations from 2328 subjects (see e.g. https://en.wikiversity.org/wiki/Advanced_ANOVA/Repeated_meas...) More generally, virtually no-one understands statistics. Every field where statistical analysis is used routinely publishes papers that use bad statistical methods. >I realize that peer review mostly doesn't operate at that level of scrutiny, but maybe it should. What does the “should” even mean here? Do you think that reviewers who work for free “should” do even more work than they do already? Or that journals “should” force reviewers to do this (even though they have no mechanism for doing so)? There are practical limits to the amount of scrutiny any given paper can be subject to. It would suck if we needed to spend more time reviewing papers just because a bunch of assholes keep trying to get fake papers published. >it's certainly possible to trust less. Not really. You don't seem to realize that more scrutiny during the review process would require real people to give up more of their real time for free. You can't just snap your fingers and make that happen. |
It should be enough to randomly sample a subset for verification, similar to probabilistic proof checking in cryptography.
>>Note that the paper about that "experiment" was not accepted
> Then it's not a very good example to base your argument on.
You're welcome to suggest a better example ;)
> You’re both wrong. You can’t treat 2328 observations from 4 subjects the same way as 2328 observations from 2328 subjects
You're right of course, but it really depends on how you want to generalize. Observing only 4 subjects makes it hard to estimate population variance and generalize to other subjects, but having 2328 observations of the same subject should give great insights into measurement reliability and changes over time, for those subjects.
> Do you think that reviewers who work for free “should” do even more work than they do already?
I think that reviewers should be compensated adequately for their work, ...
> Or that journals “should” force reviewers to do this (even though they have no mechanism for doing so)?
... by the journals, which can use some of the revenue they make selling subscriptions to enforce a quality standard for the papers they publish.
> It would suck if we needed to spend more time reviewing papers just because a bunch of assholes keep trying to get fake papers published.
Some assholes try and succeed at publishing fake papers, some of them potentially influencing important decisions, e.g. in medicine. You can of course decide that it's not worth the effort to try and stop them, but I feel that publishing fake results should be as hard as possible.
> You can't just snap your fingers and make that happen.
But I can argue on the internet about it. Maybe that doesn't change anything, but it makes me feel better.