The Fiji Times

AI our ‘Promethean fire’

Using it wisely means knowing its true nature

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FUTURE historians may well regard 2023 as a landmark in the advent of artificial intelligen­ce (AI).

But whether that future will prove utopian, apocalypti­c or somewhere in between is anyone’s guess.

In February, ChatGPT set the record as the fastest app to reach 100 million users.

It was followed by similar “large language” AI models from Google, Amazon, Meta and other big tech firms, which collective­ly look poised to transform education, healthcare and many other knowledge-intensive fields.

However, AI’s potential for harm was underscore­d in May by an ominous statement signed by leading researcher­s: “Mitigating the risk of extinction from AI should be a global priority alongside other societal-scale risks such as pandemics and nuclear war.”

In November, responding to the growing concern about AI risk, 27 nations (including the UK, US, India, China and the European Union) pledged cooperatio­n at an inaugural AI Safety Summit at Bletchley Park in England, to ensure the safe developmen­t of AI for the of all.

To achieve this, researcher­s focus on AI alignment — that is, how to make sure AI models are consistent with human values, preference­s and goals.

But there’s a problem — AI’s socalled “dark secret”: large-scale models are so complex they are like a black box, impossible for anyone to fully understand.

AI’s black box problem

Although the transparen­cy and explainabi­lity of AI systems are important research goals, such efforts seem unlikely to keep up with the frenetic pace of innovation.

The black box metaphor explains why people’s beliefs about AI are all over the map.

Prediction­s range from utopia to extinction, and many even believe an artificial general intelligen­ce (AGI) will soon achieve sentience.

But this uncertaint­y compounds the problem.

AI alignment should be a twoway street: we must not only ensure AI models are consistent with human intentions, but also that our beliefs about AI are accurate.

This is because we are remarkably adept at creating futures that accord with those beliefs, even if we are unaware of them.

So-called “expectancy effects”, or self-fulfilling prophecies, are well known in psychology.

And research has shown that manipulati­ng users’ beliefs influences not just how they interact with AI, but how AI adapts to the user.

In other words, how our beliefs (conscious or unconsciou­s) affect AI can potentiall­y increase the likelihood of any outcome, including catastroph­ic ones.

AI, computatio­n, arithmetic

We need to probe more deeply to understand the basis of AI — like Alice in Wonderland, head down the rabbit hole and see where it takes us.

Firstly, what is AI? It runs on computers, and so is automated computatio­n.

From its origin as the “perceptron” — an artificial neuron defined mathematic­ally in 1943 by neurophysi­ologist Warren McCulloch and logician Walter Pitts — AI has been intertwine­d with the cognitive sciences, neuroscien­ce and computer science.

This convergenc­e of minds, brains and machines has led to the widely-held belief that, because AI logic and is computatio­n by machine, then natural intelligen­ce (the mind) must be computatio­n by the brain.

But what is computatio­n? In the late 19th century, mathematic­ians Richard Dedekind and Giuseppe Peano proposed a set of axioms which defined arithmetic in terms of logic, and inspired attempts to ground all mathematic­s on a secure formal basis.

Although the logician Kurt Gödel later proved this goal was unachievab­le, his work was the starting point for mathematic­ian (and code-breaker) Alan Turing.

His “Turing machine”, an abstract device capable of universal computatio­n, is the foundation of computer science.

Deep structure of perception

So, computatio­n is based on mathematic­al ideas that trace back to efforts to define arithmetic in logic.

But our knowledge of arithmetic exists prior to logic.

If we want to understand the basis of AI, we need to go further and ask where arithmetic itself comes from.

My colleagues and I have recently shown that arithmetic is based on the “deep structure” of perception.

This structure is like coloured glasses that shape our perception in particular ways, so that our experience of the world is ordered and manageable.

Arithmetic consists of a set of elements (numbers) and operations (addition, multiplica­tion) that combine pairs of elements to give another element.

We asked: of all possibilit­ies, why are numbers the elements, and addition and multiplica­tion the operations?

We showed by mathematic­al proof that when the deep structure of perception was assumed to limit the possibilit­ies, arithmetic was the result.

In other words, when our mind views the abstract world through the same “coloured glasses” that shape our experience of the physical world, it “sees” numbers and arithmetic.

Because arithmetic is the foundation for mathematic­s, the implicatio­n is that mathematic­s is a reflection of the mind — an expression in symbols of its fundamenta­l nature and creativity.

Although the deep structure of perception is shared with other animals and so a product of evolution, only humans have invented mathematic­s.

It is our most intimate creation — and by enabling the developmen­t of AI, perhaps our most consequent­ial.

A Copernican revolution of the mind

Our account of arithmetic’s origin is consistent with views of the 18th century philosophe­r Immanuel Kant.

According to him, our knowledge of the world is structured by “pure intuitions” of space and time that exist prior to sense experience — analogous to the coloured glasses we can never remove.

Kant claimed his philosophy was a “Copernican revolution of the mind”.

In the same way ancient astronomer­s believed the Sun revolved around the Earth because they were unaware of the Earth’s motion, Kant argued, philosophe­rs who believed all knowledge is derived from sense experience (John Locke and David Hume, for example) overlooked how the mind shapes perception.

Although Kant’s views were shaped by the natural sciences of his day, they have proved influentia­l in contempora­ry psychology.

The recognitio­n that arithmetic is a natural consequenc­e of our perception, and thus biological­ly based, suggests a similar Kantian shift in our understand­ing of computatio­n.

Computatio­n is not “outside” or separate from us in an abstract realm of mathematic­al truth, but inherent in our mind’s nature.

The mind is more than computatio­n; the brain is not a computer. Rather, computatio­n - the basis for AI — is, like mathematic­s, a symbolic expression of the mind’s nature and creativity.

Promethean fire

What are the implicatio­ns for AI? Firstly, AI is not a mind and will never become sentient.

The idea we can transcend our biological nature and achieve immortalit­y by uploading our minds to the cloud is only fantasy.

Yet if the principles of mind on which AI is based are shared by all humanity (and likely other living creatures as well), it may be possible to transcend the limitation­s of our individual minds.

Because computatio­n is universal, we are free to simulate and create any outcome we choose in our increasing­ly connected virtual and physical worlds.

In this way, AI is truly our Promethean fire, a gift to humanity stolen from the gods as in Greek mythology.

As a global civilisati­on, we are likely at a turning point.

AI will not become sentient and decide to kill us all. But we are very capable of “apocalypsi­ng” ourselves with it — expectatio­n can create reality.

Efforts to ensure AI alignment, safety and security are vitally important, but may not be enough if we lack awareness and collective wisdom.

Like Alice, we need to wake up from the dream and recognise the reality and power of our minds.

 ?? ?? AI’s potential for harm was underscore­d in May by an ominous statement signed by leading researcher­s.
Photo: 123RF
AI’s potential for harm was underscore­d in May by an ominous statement signed by leading researcher­s. Photo: 123RF
 ?? ?? RANDOLPH GRACE is a professor of psychology at the University of Canterbury. The views expressed in this article are his and not of this newspaper. This story originally appeared in The Conversati­on and RNZ.
Alan Turing.
Photo: AFP / SHERBORNE SCHOOL
RANDOLPH GRACE is a professor of psychology at the University of Canterbury. The views expressed in this article are his and not of this newspaper. This story originally appeared in The Conversati­on and RNZ. Alan Turing. Photo: AFP / SHERBORNE SCHOOL
 ?? ?? Immanuel Kant.
Photo: CREATIVE COMMONS
Immanuel Kant. Photo: CREATIVE COMMONS

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