Brevity of code and english can correspond via abstraction.
I don't know why brevity in low and high abstraction programs/explanations/ideas would correspond (I suspect they wouldn't). If brevity in low/high abstraction stuff corresponded; isn't that like contradictory? If a simple explanation in high abstraction is also simple in low abstraction then abstraction feels broken; typically ideas only become simple after abstraction. Put another way: the reason to use abstraction is to make ideas/thing that are highly complex into things that are less complex.
I think Occam's Razor makes sense only if you take into account abstractions (note: O.R. itself is still a rule of thumb regardless). Occam's Razor doesn't make sense if you think about all the extra stuff an explanation invokes - partially because that body of knowledge grows as we learn more, and good ideas become more consistent with the population of other ideas over time.
When people think of short code they think of doing complex stuff with a few lines of code. e.g. cat asdf.log | cut -d ',' -f 3 | sort | uniq
. When people think of (good) short ideas they think of ideas which are made of a few well-established concepts that are widely accessible and easy to talk about. e.g. we have seasons because energy from sunlight fluctuates ~sinusoidally through our annual orbit.
One of the ways SI can use abstraction is via the abstraction being encoded in both the program, program inputs, and the observation data.
(I think) SI uses an arbitrary alphabet of instructions (for both programs and data), so you can design particular abstractions into your SI instruction/data language. Of course the program would be a bit useless for any other problem than the one you designed it for, in this case.
Is there literature arguing that code and English brevity usually or always correspond to each other?
I don't know of any.
If not, then most of our reasons for accepting Occam’s Razor wouldn’t apply to SI.
I think some of the reasoning makes sense in a pointless sort of way. e.g. the hypothesis 1100
corresponds to the program "output 1 and stop". The input data is from an experiment, and the experiment was "does the observation match our theory?", and the result was 1
. The program 1100
gets fed into SI pretty early, and it matches the predicted output. The reason this works is that SI found a program which has info about 'the observation matching the theory' already encoded, and we fed in observation data with that encoding. Similarly, the question "does the observation match our theory?" is short and elegant like the program. The whole thing works out because all the real work is done elsewhere (in the abstraction layer).
In that case I especially don't think that argument answers the question in OP.
I've left some details in another reply about why I think the constant overhead argument is flawed.
I don't think this is true. I do agree some conclusions would be converged on by both systems (SI and humans), but I don't think simplicity needs to be one of them.
Uhh, I don't follow this. Could you explain or link to an explanation please?
I don't think that applies here. I think that data is part of the program.
You would have to raise the program like a human child in that case^1. Can you really make the case you're predicting something or creating new knowledge via SI if you have to spend (the equiv. of) 20 human years to get it to a useful state?
How would you ask multiple questions? Practically, you'd save the state and load that state in a new SI machine (or whatever). This means the data is part of the program.
Moreover, if you did have to raise the program like any other newborn, you have to use some non-SI process to create all the knowledge in that system (because people don't use SI, or if they do use SI, they have other system(s) too).
1: at least in terms of knowledge; though if you used the complete human genome arguably you'd need to simulate a mother and other ppl too, but they have to be good simulations after the first few years, which is a regressive problem. So it's probably easier to instantiate it in a body and raise it like a person b/c human people are already suitable. You also need to worry about it becoming mistaken (intuitively one disagrees with most people on most things we'd use an SI program for).