guy recently linked this essay, its old, but i don’t think its significantly wrong (despite gpt evangelists) also read weizenbaum, libs, for the other side of the coin
guy recently linked this essay, its old, but i don’t think its significantly wrong (despite gpt evangelists) also read weizenbaum, libs, for the other side of the coin
You don’t remember the text though, and stanzas recounting can sometimes have word substitutions which fit rhythmically.
If I asked you what is 300th word of the poem, you cannot do it. Computer can. If I start with two words of the verse, you could immediately continue. It’s sequence of words with meaning, outside of couple thousands of competitive pi-memorizers, people cannot remember gibberish, try to remember hash number of something for a day. It’s significantly less memory, either as word vector or symbol vector than a haiku.
Re: language, and how far along did the mechanical analogy took us? Until equations or language corresponding to reality are used, you are fumbling about fitting round spheres in spiral holes. Sure you can use ptoleimaic system and add new round components, or you can realize orbits are ellipses
History of science should actually horrify science bros, 300 years scientists firmly believed phlogiston was the source of burning, 100 years ago aether was all around us, and our brains were ticking boxes of gears, 60 years ago neutrinos didn’t have mass, while dna was happily deterministically making humans. Whatever we believe now is scientific truth by historic precedent likely isn’t (correspondence between model and reality), they are getting better all the time (increasing correspondence), but I don’t know perfect scientific theory (maybe chemistry is sorta solved with fiddling around the edges).
Why would that horrify us? That’s how science works. We observe the world, create hypothesis based on those observations, developed experiments to test those hypothesis, and build theories based on whether experimentation confirmed our hypothesis. Phlogiston wasn’t real, but the theory conformed to the observations made with the tools available at the time. We could have this theory of phlogiston, and we could experiment to determine the validity of that theory. When new tools allowed us to observe novel phenomena the phlogiston theory was discarded. Science is a philosophy of knowledge; The world operates on consistent rules and these rules can be determined by observation and experiment. Science will never be complete. Science makes no definitive statements. We build theoretical models of the world, and we use those models until we find that they don’t agree with our observations.
*because confidently relying on the model (in this case informational) prediction like ooh, we could do brain no problem in computer space, you are not exactly making a good scientific prediction. Good scientific prediction is that model is likely garbage, until proven otherwise, and thus shouldn’t be end all be all.
But then if you take information processing model, what it gives you, exactly, in understanding of the brain? The author contention that it is hot garbage framework, it’s doesn’t fit with how the brain works, your brain is not tiny hdd with ram and cpu, and until you think that it is, you will be searching for mirages.
Yes neural networks are much closer (because they are fucking designed to be), and yet even they has to be force fed random noise to introduce fuzziness in responses, or they’ll do the same thing every time. You reboot and reload neural net, it will do the same thing every time. But brain is not just connections of axons, it’s also extremely complicated state of the neuron itself with point mutations, dna repairs, expression levels, random rna garbage flowing about, lipid rafts at synapses, vesicles missing cause microtubules decided to chill for a day, the hormonal state of the blood, the input from the sympathetic neural system etc
We haven’t even fully simulated one single cell yet.
Computers know the 300th word because they store their stuff in arrays, which do not exist in brains. They could also store it in linked lists, like a brain does, but that’s inefficient for the silicon memory layout.
Also, brains can know the 300th word. Just count. Guess what a computer does when it has to get the 300th element of a linked list: it counts to 300.
And computers can count, that’s all they can do as turing machines, we can’t or not that well, feels there is a mismatch here in mediums🤔. If I took 10 people knowing same poem, what are the odds I’ll get same word from all of them?
Is that linked list in the brain can be accessed in all contexts then? Can you sing hip hop song while death metal backing track is playing?
Moreover linked list implies middle parts are not accessible before going through preceding elements, do you honestly think that’s a good analogue for human memory?
Humans have fingers so they can count, so the odds 10 people get the same word should be 100%.
I can plug my ears.
I could implement a linked list connected to a hash map that can be accessed from the middle.
Lol @100 percent.
So which one brain does? Linked list with hash maps then? Final simple computer analogy? Maybe indexed binary tree? Or maybe it’s not that?
When I want to recall a song, I have to remember one part, and then I can play it in my head. However, I can’t just skip to the end.
Linked list
So if second verse plays you can’t sing along until your brain parses through previous verses? I find it rather hard to believe
Just because linked lists are usually implemented with a starting point doesn’t mean they have to. Content + a pointer to the next object is all that’s needed for an element of a linked list. It could even be cyclic.
Do you think humans are so dumb they can’t count to 300?
you can try to find 200th word on physical book page, I suspect on first tries you’ll get different answers. It’s not dumbness, with poem it’s rather complicated counting and reciting (and gesturing, if you use hands), and direct count while you are bored (as in with book), might make mind either skip words, or cycle numbers. We aren’t built for counting, fiddling with complicated math is simpler than doing direct and boring count
I’m sorry, but this is a silly argument. Somebody might very well be able to tell you what the 300th word of a poem is, while a computer that stored that poem as a
.bmp
file wouldn’t be able to (without tools other than just basic stuff that allows it to show you.bmp
images). In different contexts we remember different things about stuff.Generally you can’t though. of course there are people who remember in different ways, or who can remember pi number to untold digits. Doesn’t mean there are tiny bytes-like engravings in their brain, or that they could remember it perfectly some time from now. Computer can tell what is 300 pixel of that image, while you don’t even have pixels, or fixed visual memory shape. Maybe it’s wide shot of nature, or maybe it’s a reflection of the light in the eyes of your loved one
People don’t think that brains are silicon chips running code through logic gates. At least, the vast majority of people don’t.
The point we’re making here is that both computers and human minds follower a process to arrive at a give conclusion, or count to 300, or determine where the 300th pixel is in a computer. A computer doesn’t do that magically. There’s a program that runs that counts to 300. A human would have to dig out a magnifying glass and count to three hundred. The details are different, but both are counting to 300.
because that’s a task for computer, my second example: giving you two words, it would be slower for computer than arriving at 300 th word, while for you it would be significantly faster than counting.
fundamentally a question is brain a turing machine? I rather think not, but it could be simulated as such with some untold complexity.
Firstly, I want to say it’s cool you’re positively engaging and stimulating a lot of conversation around this.
As far turing machines go - It’s only a concept that’s meant to show a fundamental “level” of computing (“turing completeness”), what a computing device can or cannot achieve. As you agree a turing machine could ‘simulate’ a brain (and we know brains can simulate a turing machine - we invented them!), then conceptually, yes, the brain is computationally equivalent, it is ‘turing complete’, albeit with some randomness thrown in.
I remain extremely mad at the Quantum jerks for demonstrating that the universe is almost certainly not deterministic. I refuse to be cool about it.
We can simulate a water molecule, does it make a turing machine then? Is single protein? A whole cell? 1000 cells in some invertebrate?
Simulation doesn’t work backwards, it’s not an implied equivalency of turing completeness for both directions. If brain is a turing machine we can map one to one it’s whole function to any existing turing machine, not simulate it with some degree of accuracy.
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Have you read Göedel, Escher, Bach? It’s a cool book, I recommend it!
If your thesis is that human brains do not work perfectly the same way, and not that the analogy with computers in general is wrong, then sure, but nobody disagrees with that thesis, then. I don’t think that any adult alive has proposed that a human brain is just a conventional binary computer.
However, this argument fails when it comes to the thesis of analogy with computers in general. Not sure how it is even supposed to be addressing it.
Well, firstly, a Turing machine is an idea, and not an actual device or a type of device.
Secondly, if your thesis is that Turing machine does not model how brains work, then what’s your argument here?
of course I can’t prove that brain is not a turing machine, I would be world famous if I could. Computers are turing machines yes? They cannot do non-Turing machines operations (decisions or whatever that’s called)
What comparing computer with brain gives to science, I’m asking again for third time in this thread. What insight it provides, aside from mechanizing us to the world? That short term memory exists? a stone age child could tell you that. That information goes from the eyes as bits like a camera? That’s already significantly wrong. That you recall like a photograph read out from your computer? Also very likely wrong
Okay, so, what is your basis for thinking that, for example, if a brain was given some set of rules such as ‘if you are given the symbol “A”, think of number 1 and go to the next symbol’ and ‘if you are given the symbol “B” and are thinking of number 1, think of number 2 and go back by two symbols’ and some sequence of symbols, that that brain wouldn’t be capable of working with those rules?
As in, they are modelled by Turing machines sufficiently well in some sense? Sure.
What? What are ‘non-Turing machines operations’? The term ‘Turing machine’ refers to generalisations of finite automata. In this context, what they are doing is receiving input and reacting to it depending on their current state. I can provide some examples of finite automata implementations in Python code, if you want me to.
The word ‘decision’ doesn’t carry any meaning in this context.
I don’t recall you asking this question before, and I do not have an answer. I also don’t see the question as relevant to the exchange so far.
A bit is a unit of information. If we treat the signal that the eyes send to the brain as carrying any sort of information, you can’t argue that the brain doesn’t (EDIT: I initially forgot to include the word 'doesn’t) receive the information in bits. If you claim otherwise, you don’t understand what information is and/or what bits are.
Nobody is claiming, however, that your brain pulls up an analogue of a
.bmp
when you recall an image. You likely remember some details of an image, and ‘subconsciously’ reconstruct the ‘gaps’. Computers can handle such tasks just fine, as well.Information goes in to the optic nerve as electrical signals, which is why we can glue wires to the optic nerve and use a camera to send visual information to the brain. I think wek?e been able to do that for twenty years. We just need a computer to change the bits from the camera in to the correct electric impulses.
I didn’t use words optic nerve by chance, you can find out it’s retina excitation, not the nerve itself. Because the eye already does pre processing. But that reminded me that here actually informational understanding helped cause they couldn’t understand how could it send that much data (turn out it doesn’t). So one win for informational theory by showing something couldn’t be 🥰
Again, though, this simply works to reinforce the computer analogy, considering stuff like file formats. You also have to concede that a conventional computer that stores the poem as a
.bmp
file isn’t going to tell you what the 300th word in it is (again, without tools like text recognition), just like a human is generally not going to be able to (in the sort of timespan that you have in mind that is - it’s perfectly possible and probable for a person who has memorised the poem to tell what the 300th word is, it would just take a bit of time).Again, we can also remember different things about different objects, just like conventional computers can store files of different formats.
A software engineer might see something like ‘O(x)’ and immediately think ‘oh, this is likely a fast algorithm’, remembering the connection between time complexity of algorithms with big-O notation. Meanwhile, what immediately comes to mind for me is ‘what filter base are we talking about?’, as I am going to remember that classes of finally relatively bounded functions differ between filter bases. Or, a better example, we can have two people that have played, say, Starcraft. One of them might tell you that some building costs this amount of resources, while the other one won’t be able to tell you that, but will be able to tell you that they usually get to afford it by such-and-such point in time.
Also, if you are going to point out that a computer can’t tell if a particular image is of a ‘wide shot of nature’ or of a ‘reflection of the light in the eyes of one’s loved one’, you will have to contend with the fact that image recognition software exists and it can, in fact, be trained to tell such things in a lot of cases, while many people are going to have issues with telling you relevant information. In particular, a person with severe face blindness might not be able to tell you what person a particular image is supposed to depict.
I’m talking about visual memory what you see when you recall it, not about image recognition. Computers could recognize faces 30 years ago.
I’m suggesting that it’s not linked lists, or images or sounds or bytes in some way, but rather closer to persistent hallucinations of self referential neural networks upon specified input (whether cognitive or otherwise), which also mutate in place by themselves and by recall but yet not completely wildly, and it’s rather far away picture from memory as in engraving on stone tablet/leather/magnetic tape/optical storage/logical gates in ram. Memory is like a growing tree or an old house is not exactly most helpful metaphor, but probably closer to what it does than a linked list
What is ‘visual memory’, then?
Also, on what grounds are you going to claim that a computer can’t have ‘visual memory’?
And why is image recognition suddenly irrelevant here?
So far, this seems rather arbitrary.
Also, people usually do not keep a memory of an image of a poem if they are memorising it, as far as I can tell, so this pivot to ‘visual memory’ seems irrelevant to what you were saying previously.
So, what’s the difference?
And? I can just as well point out the fact that hard drives and SSDs do suffer from memory corruption with time, and there is also the fact that a computer can be designed in a way that its memory gets changed every time it is accessed. Now what?
Things that are literally called ‘biological computers’ are a thing. While not all of them feature ability to ‘grow’ memory, it should be pretty clear that computers have this capability.
What is visual memory indeed in informational analogy, do tell me? Does it have consistent or persistent size, shape or anything resembling bmp file?
The difference is neural networks are bolted on structures, not information.
It’s not considered as some special type of memory in this context. Unless you have a case for the opposite, this stuff is irrelevant.
Depends on a particular analogy.
In any case, this question seems irrelevant and rather silly. Is the force of a gravitational pull in models of Newtonian physics constant, does it have a shape, is it a real number, or a vector in R^2, or a vector in R^3, or a vector in R^4, or some other sort of tensor? Obviously, that depends on the relevant context regarding those models.
Also, in what sense would a memory have a ‘shape’ in any relevant analogy?
Obviously, this sentence makes no sense if it is considered literally. So, you have to explain what you mean by that.
Don’t appreciate the ableist language here just because nerudodivergence is inconvenient to your argument. I can fairly easily memorize my credit card number.
I can as well, hash numbers are much worse due to 16 number system.
I was mainly pointing out it’s not typical brain activity to remember info which we don’t perceive as memorable, despite its information contents. Its not a poke at nd folks why would people remembring 10000 digits of pi be nd? but i’ll change it, you are right