Why A.I. will never rule the world

Despite fears that A.I. will one day take over the world, some experts contend that our existing A.I. systems are incapable of surpassing human intelligence

Why A.I. will never rule the world

Call it the Skynet hypothesis, Artificial General Intelligence or the advent of the Singularity — for years, A.I. experts and non-experts alike have fretted (and, for a small group, celebrated) the idea that artificial intelligence may one day become smarter than humans.

According to the theory, advances in A.I. — specifically of the machine learning type that’s able to take on new information and rewrite its code accordingly — will eventually catch up with the wetware of the biological brain. In this interpretation of events, every A.I. advance from Jeopardy-winning IBM machines to the massive A.I. language model GPT-3 is taking humanity one step closer to an existential threat. We’re literally building our soon-to-be-sentient successors.

Except that it will never happen. At least, according to the authors of new book Why Machines Will Never Rule the World: Artificial Intelligence without Fear.

Co-authors University at Buffalo philosophy professor Barry Smith and Jobst Landgrebe, founder of German A.I. company Cognotekt argue that human intelligence won’t be overtaken by “an immortal dictator” any time soon — or ever. They told Digital Trends their reasons why.

image depicting AI, with neurons branching out from humanoid head

Digital Trends (DT): How did this subject get on your radar?

Jobst Landgrebe (JL): I’m a physician and biochemist by training. When I started my career, I did experiments that generated a lot of data. I started to study mathematics to be able to interpret these data, and saw how hard it is to model biological systems using mathematics. There was always this misfit between the mathematical methods and the biological data.

In my mid-thirties, I left academia and became a business consultant and entrepreneur working in artificial intelligence software systems. I was trying to build A.I. systems to mimic what human beings can do. I realized that I was running into the same problem that I had years before in biology.

Customers said to me, ‘why don’t you build chatbots?’ I said, ‘because they won’t work; we cannot model this type of system properly.’ That ultimately led to me writing this book.

Professor Barry Smith (BS): I thought it was a very interesting problem. I had already inklings of similar problems with A.I., but I had never thought them through. Initially, we wrote a paper called ‘Making artificial intelligence meaningful again.’ (This was in the Trump era.) It was about why neural networks fail for language modeling. Then we decided to expand the paper into a book exploring this subject more deeply.

DT: Your book expresses skepticism about the way that neural networks, which are crucial to modern deep learning, emulate the human brain. They’re approximations, rather than accurate models of how the biological brain works. But do you accept the core premise that it is possible that, were we to understand the brain in granular enough detail, it could be artificially replicated – and that this would give rise to intelligence or sentience?

JL: The name ‘neural network’ is a complete misnomer. The neural networks that we have now, even the most sophisticated ones, have nothing to do with the way the brain works. The view that the brain is a set of interconnected nodes in the way that neural networks are built is completely naïve.

If you look at the most primitive bacterial cell, we still don’t understand even how it works. We understand some of its aspects, but we have no model of how it works – let alone a neuron, which is much more complicated, or billions of neurons interconnected. I believe it’s scientifically impossible to understand how the brain works. We can only understand certain aspects and deal with these aspects. We don’t have, and we will not get, a full understanding of how the brain works.

If we had a perfect understanding of how each molecule of the brain works, then we could probably replicate it. That would mean putting everything into mathematical equations. Then you could replicate this using a computer. The problem is just that we are unable to write down and create those equations.

profile of head on computer chip artificial intelligenceDigital Trends Graphic

BS: Many of the most interesting things in the world are happening at levels of granularity that we cannot approach. We just don’t have the imaging equipment, and we probably never will have the imaging equipment, to capture most of what’s going on at the very fine levels of the brain.

This means that we don’t know, for instance, what is responsible for consciousness. There are, in fact, a series of quite interesting philosophical problems, which, according to the method that we’re following, will always be unsolvable – and so we should just ignore them.

Another is the freedom of the will. We are very strongly in favor of the idea that human beings have a will; we can have intentions, goals, and so forth. But we don’t know whether or not it’s a free will. That is an issue that has to do with the physics of the brain. As far as the evidence available to us is concerned, computers can’t have a will.

DT: The subtitle of the book is ‘artificial intelligence without fear.’ What is the specific fear that you refer to?

BS: That was provoked by the literature on the singularity, which I know you’re familiar with. Nick Bostrom, David Chalmers, Elon Musk, and the like. When we talked with our colleagues in the real world, it became clear to us that there was indeed a certain fear among the populace that A.I. would eventually take over and change the world to the detriment of humans.

We have quite a lot in the book about the Bostrum-type arguments. The core argument against them is that if the machine cannot have a will, then it also cannot have an evil will. Without an evil will, there’s nothing to be afraid of. Now, of course, we can still be afraid of machines, just as we can be afraid of guns.

But that’s because the machines are being managed by people with evil ends. But then it’s not A.I. that is evil; it’s the people who build and program the A.I.

DT: Why does this notion of the singularity or artificial general intelligence interest people so much? Whether they’re scared by it or fascinated by it, there’s something about this idea that resonates with people on a broad level.

JL: There’s this idea, started at the beginning of the 19th century, and then declared by Nietzsche at the end of that century, that God is dead. Since the elites of our society are not Christians anymore, they needed a replacement. Max Stirner, who was, like Karl Marx, a pupil of Hegel, wrote a book about this, saying that, ‘I am my own god.’

If you are God, you also want to be a creator. If you could create a superintelligence then you are like God. I think it has to do with the hyper-narcissistic tendencies in our culture. We don’t talk about this in the book, but that explains to me why this idea is so attractive in our times in which there is no transcendent entity anymore to turn to.

brain with computer text scrolling artificial intelligenceChris DeGraw/Digital Trends, Getty Images

DT: Interesting. So to follow that through, it’s the idea that the creation of A.I. – or the aim to create A.I. – is a narcissistic act. In that case, the concept that these creations would somehow become more powerful than we are is a nightmarish twist on that. It’s the child killing the parent.

JL: A bit like that, yes.

DT: What for you would be the ultimate outcome of your book if everyone was convinced by your arguments? What would that mean for the future of A.I. development?

JL: It’s a very good question. I can tell you exactly what I think would happen – and will happen. I think in the midterm people will accept our arguments, and this will create better-applied mathematics.

Something that all great mathematicians and physicists are completely aware of was the limitations of what they could achieve mathematically. Because they are aware of this, they focus only on certain problems. If you are well aware of the limitations, then you go through the world and look for these problems and solve them. That’s how Einstein found the equations for Brownian motion; how he came up with his theories of relativity; how Planck solved blackbody radiation and thus initiated the quantum theory of matter. They had a good instinct for which problems are amenable to solution with mathematics and which are not.

If people learn the message of our book, they will, we believe, be able to engineer better systems, because they will concentrate on what is truly feasible – and stop wasting money and effort on something that can’t be achieved.

BS: I think that some of the message is already getting through, not because of what we say but because of the experiences people have when they give large amounts of money to A.I. projects, and then the A.I. projects fail. I guess you know about the Joint Artificial Intelligence Center. I can’t remember the exact sum, but I think it was something like $10 billion, which they gave to a famous contractor. In the end, they got nothing out of it. They canceled the contract.

(Editor’s note: JAIC, a subdivision of the United States Armed Forces, was intended to accelerate the “delivery and adoption of A.I. to achieve mission impact at scale.” It was folded into a larger unified organization, the Chief Digital and Artificial Intelligence Officer, with two other offices in June this year. JAIC ceased to exist as its own entity.)

DT: What do you think, in high-level terms, is the single most compelling argument that you make in the book?

BS: Every A.I. system is mathematical in nature. Because we cannot model consciousness, will, or intelligence mathematically, these cannot be emulated using machines. Therefore, machines will not become intelligent, let alone superintelligent.

JL: The structure of our brain only allows limited models of nature. In physics, we pick a subset of reality that fits to our mathematical modeling capabilities. That is how Newton, Maxwell, Einstein, or Schrödinger obtained their famous and beautiful models. But these can only describe or predict a small set of systems. Our best models are those which we use to engineer technology. We are unable to create a complete mathematical model of animate nature.

This interview has been edited for length and clarity.

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