I pretty much agree with you but wanted to nitpick this part > mainly the editors, who pushed for correctness and novelty.
I don't want to use the word correctness here[0], because no one checks if the work is correct. Rather, I'd say the goal is to check for wrongness. A peer reviewer cannot determine if a work is correct simply by reading it. The only way to do this is replication or by extension (which is the case of the work here. The physical verification was an extension of the earlier work). It's important to make this distinction because, as you say, it doesn't mean the work is right. Nor does it even mean the the readers think it is right.In the past, many journals published as long as they did not think there were serious errors and were not plagiarized. Editing is completely different, where we want to make sure works are communicated correctly. But I purposefully didn't say "novelty" It is a trash word that means nothing. The original intent was that work wasn't redone. That you can't go in and take credit for discovering something someone else did, which we'd cal plagiarism. You could change all the words and still plagiarize. It is VERY easy to find problems/limitations with works. All works have limitations. All works are incomplete. But are these reasons to reject? Often, no... You see the same thing on HN and it's a classic bias of STEM people. Hyperfixate on the issues. We're trained to, because that's the first step to solving problems! But that's not what matters in publishing, because we're not trying to solve all problems. We do it iteratively! It also runs counter to quickly publishing ("publish or perish") as what, you want to wait to publish till we got a grand theory of everything? And don't get me started on how bad we are at predicting impact of works and how impact often runs counter to the status quo (you can't paradigm shift by maintaining the paradigm). So we don't explore... AND very frequently, we DO NOT WANT novelty in science. Sounds strange, but it is *critical* to science existing. - Our goal is to figure out how things work. The causal structure of things. So this means works need to be reproducible. We *want* reproductions, but we also don't want them ad infinitum. - We *also* want to find other ways to derive the same thing. Some reviewers will consider this novel while others won't, typically inversely related to their expertise in the field (more expert = more likely to consider novel while less expert means you can't see the nuanced differences which are important). This greatly stifles innovation and reduces how well papers communicate their ideas. The problem here is as we advance, nuances matter more and more. Think of it as with approximations. Calculating the first order term is usually computationally easy, with computation exponentially increasing as the order of accuracy increases. The nuances start to dominate. But by focusing on "novelty" (rather than plagiarism) we face the exact problem you mention. > most editors are nowadays completely out of their depth when evaluating papers,
So authors end up just making their works look more convoluted, to look more impressive and make it look less like the work that they are building on top of. High experts can see right through this and as grad students usually groan but then just become accustomed to the shit and start doing the same thing. Because, non-niche experts cannot differentiate the work that's being built upon from the new work.It is a self-inflicted problem. As editors/reviewers we think we're doing right, but we're too dumb to see the minute (but important) differences. As authors we're just trying to get published, keep our jobs, and it's not exactly like the reviewers are "wrong". But it often just becomes a chase and does nothing to help make the papers actually better. This gets even worse with targeted acceptance rates, as it incentivizes reviewers to reject and be less nuanced. Which they're already incentivized to do because there's just so much stress and time crunch to the job anyways (including needing to rewrite papers because others did exactly this). The targeted acceptance rates are just silly and we see the absurdity in domains like Machine Learning[1]. We have an exponentially increasing number of papers to review each year. This isn't just because there are new works, but because works are being resubmitted. Most of these conferences have 30% acceptance rates but the number of "wrong" papers is not that low. We also know the acceptance rate is very noisy for the majority of papers, where a different set of reviewers would result in a different outcome (see the multiple "NeurIPS experiment"s). You can do an easy model to see why this is bad. It just leads to more papers and if the number of reviewers stays the same, this is more reviews that need to be done per reviewer, which just exacerbates the problem. If you have 1000 fixed papers submitted each year and even a low percent of rejected works resubmitting the next year, like 10%, you actually have to review ~1075 papers. With a more realistic ~50% of rejected works getting recycled, you need to actually review ~1500 per year. Most serious authors will try a few times, and it is a common to say "just keep trying". We don't have to do this to ourselves... It helps no one, and actually harms everyone. So... why? What are we gaining? It's just so fucking stupid /rant (have we even started?) [0] I'm pretty sure we're going to agree, but we're talking in public and want to make sure we communicate with the public. Tbh, even many scientists think "correctness" is the same as "is correct" [1] It is extra bad because the primary publishing venue is conferences. To you submit, get a review (usually 3), get to do a rebuttal (often 1 page max), and then the final decision is made. There is no real discussion so you have no real chance to explain things to near-niche experts. Worse with acceptance deadlines and overlapping deadlines between conferences. It is better in other domains since journals have conversations, but some of these problems still exist. |