"Intelligence" is a word that, etymologically and semantically, is related to human or human-like capabilities. You wouldn't say that a leaf floating on a lake is swimming, and likewise, claiming that computers are "learning" or "intelligent" is at best a thin analogy and at worst a mischaracterization of the process.
What's happening in my brain is something we don't have full scientific knowledge of, but we know it's not x86 machine code. While the two processes may be in many ways similar, conflating the two into this ill-defined concept of "intelligence" is a discussion about semantics more than anything else.
> "Intelligence" is a word that, etymologically and semantically, is related to human or human-like capabilities. You wouldn't say that a leaf floating on a lake is swimming.
The definition of words changes in response to increasing knowledge - just take 'energy' for example. One cannot establish truths about the world by arguments from usage. (On the other hand, to be clear, I do not think that the current state of AI merits being called "intelligence". What happens in the future is speculation.)
> What's happening in my brain is something we don't have full scientific knowledge of, but we know it's not x86 machine code.
The introduction of x86 machine code at this point seems to be moving away from your original claims about "AI" being "just" relatively simple (though not simply linear) mathematical models, which are not "just" machine code either. The interesting (and very much open) question is how much of intelligence can be modeled in this way, and what else, if anything, is necessary.
The more you stress the simplicity of these models, the more intriguing their achievements seem.
> The definition of words changes in response to increasing knowledge
The usual process in mathematics and science is that you have a phenomenon that everyone agree exists but nobody can quite put their finger on it, so someone proposes a formal definition and if that definition turns out to be adequate, people work on the formal definition, and that's much easier because you now can use math, statistics, formal methods, etc; a prime example of this is the notion of "computability".
I don't believe that we are seeing the same thing with the concept of "intelligence", this is probably in part because it's much harder to capture the concept in a formal definition. Computers do computable stuff. Overlapping that notion with "intelligence" serves no purpose in my opinion: it explains nothing, it doesn't clarify anything, and it's certainly not obvious that the two are related.
> which are not "just" machine code either
I'm using "machine code" as proxy for "instructions/lambdas/whatever for a computational model of your choice", which they certainly are.
> The more you stress the simplicity of these models, the more intriguing their achievements seem.
It's not my intention to downplay any of the achievements of "AI". They are certainly not less intriguing when viewed from my perspective, the same way a compiler is not less intriguing if you think it's "just code".
My point is that any association of a formal concept (math, models, etc.) with philosophical concepts (intelligence, "truths about the world", consciousness, etc.) is always on thin ice, because natural language and formal concepts are hard to mix. Especially so when the concepts at play are so ephemeral.
In the past, when a construct like 'intelligence' has been hard to pin down, science moves on--leaves it to 'philosophy' and works with formal definitions.
Would you say that's one part of your point? Just to clarify, I am only responding to that part of your point.
By way of example, behaviorists declared a strict subset of the human experience to be in the purview of scientific study--and that may even have been just fine for that era.
You seem to be sweeping something important under the rug because it's hard to pin down, and saying that this is what science has done in the past--and if so, you're right.
But there's an assumption--an assumption that it is safe to sweep things under the rug like that. That assumption may prove false, and if it does, we're screwed.
Convinced that AGI is not something to worry about? Fine--but surely you agree there's such a thing as an information hazard? That is, information that can be deadly in the wrong hands: like how to create the next COVID, or how to make a nuclear bomb. In past eras of human history, knowledge was not as powerful. Today and ever more so in the future, whether humanity can Get Things Right will matter.
So from my perspective, it doesn't matter that whatever 'intelligence' is, is hard to pin down: it's still got to be figured out, whether or not it's difficult.
> In the past, when a construct like 'intelligence' has been hard to pin down, science moves on--leaves it to 'philosophy' and works with formal definitions.
Yes, that's part of the point, your wording is better than mine. If we're sticking to a purely historical perspective, this is definitely what happened. Most disciplines that today we (rightfully) regard as fully independent, originally splintered off philosophy (the most obvious examples are mathematics and physics, but even something like economics, in spite of having become more formalized recently, undoubtedly originates from moral philosophy).
> You seem to be sweeping something important under the rug because it's hard to pin down, and saying that this is what science has done in the past--and if so, you're right.
I won't deny that strictly speaking there is a bit of inductivism at play here. Historically, the scientific approach of limiting the domain of discourse to a tractable subset has been so much more productive and successful than any alternative that my, as it were, "bayesian prior", is that we should replicate the same approach if possible at all.
> So from my perspective, it doesn't matter that whatever 'intelligence' is, is hard to pin down: it's still got to be figured out, whether or not it's difficult.
This is a reasonable position, but wouldn't you agree that it's more of a "moral intuition" (not that there's anything wrong with that!) than a position regarding how ML results ought to be interpreted? As such I have no real counterpoints to offer, except perhaps an utilitarian point of view: are you really sure that banging your head against this very specific wall is the most productive thing to do?
Most problems I see with AI arise from either flat out using the models incorrectly (i.e. mathematically wrong, not ethically wrong, which is what I was pointing out in my previous comments) or from already familiar "political" problems, i.e. incentives, transparency, privacy, openness of the decision-making process.
The good news is that none of that is new. The bad news is that our track record as a species on problems of that kind is abysmal. I doubt that, in any case, trying to halt scientific progress makes sense.
People learn to hit a target by changing the structure of their brain to fit the task. Computers become better at hitting a target by changing a data structure. That seems directly analogous to me. Critically, learning doesn’t imply the ability to perfectly execute the task.
Your response on definitions actually supports my point on the matter: definitions follow from knowledge ("a phenomenon that everyone agree exists") and are modified in response to new knowledge ("if that definition turns out to be adequate..." - and if not?) As before, "energy" stands as an example of how it works, and "computability" did not enter the lexicon until there was a use for it.
Nevertheless, I agree that in the specific case of current AI, using the word "intelligence" is misleading. I do not, however, think this misuse has any serious consequences, as, to reverse how I put it before, usage does not establish truths about the world.
>> which are not "just" machine code either
> I'm using "machine code" as proxy for "instructions/lambdas/whatever for a computational model of your choice", which they certainly are.
Then that is an unfortunate choice of proxy, unless, perhaps, you intended to imply that it is a priori impossible for intelligence to be created by running x86 machine code. It was not clear to me whether, by introducing machine code into the discussion, you were not making some sort of argument from incredulity against the possibility of AI.
> My point is that any association of a formal concept (math, models, etc.) with philosophical concepts (intelligence, "truths about the world", consciousness, etc.) is always on thin ice, because natural language and formal concepts are hard to mix. Especially so when the concepts at play are so ephemeral.
At least since Newton, mathematical models have proved very useful in discerning truths about the world. Are we to just assume they will not work for the biological phenomena of intelligence and consciousness?
> Your response on definitions actually supports my point on the matter
I'm afraid I failed to understand your point, then. I don't have a problem with what you said there.
> using the word "intelligence" is misleading. I do not, however, think this misuse has any serious consequences
This is where I fundamentally differ. Its misuse implies a connection between a formal model (algorithm expressed in a computational model) and a philosophical concept (intelligence) that's dubious at best. On a conceptual level, this makes it harder to reason clearly about those fundamentally mathematical and abstract concepts, and on a concrete level, it misleads the public at large, implying that certain goals have been reached when that's plainly untrue. That's pretty "serious" in my book.
> Then that is an unfortunate choice of proxy, unless, perhaps, you intended to imply that it is a priori impossible for intelligence to be created by running x86 machine code.
Again, I'm afraid I don't understand your objection. It's widely accepted that all reasonable computational models are equivalent. Citing x86 was colorful language, it has clearly no bearing on the point at large. Machine Learning algorithms are clearly computable, which means they are expressible as Turing machines, terms of a classical untyped lambda calculus, Python scripts, C++ template metaprograms, or anything else. They are literally just programs.
> At least since Newton, mathematical models have proved very useful in discerning "truths about the world." Are we to just assume they will not work for the biological phenomena of intelligence and consciousness?
I certainly believe mathematical models to be useful, you would be hard pressed to say otherwise.
The ontological status of scientific theories is however at the very least a debatable topic. One needs not believe Newtonian mechanics is ontologically true, it's a tenable position to claim it's just a model, and we accept that model because it's useful.
Specifically, one could easily argue that Newtonian mechanics is false, because, for example, it fails to accurately predict Mercury's orbit.
Similarly, one needs not believe ML is anything more than relatively simple math to find it useful.
> I'm afraid I failed to understand your point, then. I don't have a problem with what you said there.
You have to go back a couple of posts to see the point. There, you wrote "'Intelligence' is a word that, etymologically and semantically, is related to human or human-like capabilities. You wouldn't say that a leaf floating on a lake is swimming." As we are now agreed that definitions follow from knowledge and are modified in response to new knowledge, it would not be somehow wrong to extend the concept of intelligence to a certain class of machines, if it turns out to be useful and informative to do so.
> They are literally just programs.
I take it, then, that you don't agree with the sort-of Platonist view that algorithms have an existence independently of any implementation? I'm on the fence, myself, but lean towards the Platonist side.
Regardless, it follows from your position here that your original statement "What's happening in my brain is something we don't have full scientific knowledge of, but we know it's not x86 machine code" can be rewritten as "What's happening in my brain is something we don't have full scientific knowledge of, but we know it's not computable." - but while the former is true, the status of the latter is not yet decided, so they are not identical propositions.
> One needs not believe Newtonian mechanics is ontologically true, it's a tenable position to claim it's just a model, and we accept that model because it's useful.
One could say the same about specific ontologies - they are as subject to revision in the face of increasing knowledge as are both mathematical models and individual words - and if it turns out that a mathematical model of biological intelligence or consciousness is effective and useful, it would be tendentious to imagine an ontological line between that model and intelligence.