Article
AI
Comment
4 min read

It's our mistakes that make us human

What we learn distinguishes us from tech.

Silvianne Aspray is a theologian and postdoctoral fellow at the University of Cambridge.

A man staring at a laptop grimmaces and holds his hands to his head.
Francisco De Legarreta C. on Unsplash.

The distinction between technology and human beings has become blurry: AI seems to be able to listen, answer our questions, even respond to our feelings. It becomes increasingly easy to confuse machines with humans. In this situation, it is increasingly important to ask: What makes us human, in distinction from machines? There are many answers to this question, but for now I would like to focus on just one aspect of what I think is distinctively human: As human beings, we live and learn in time.  

To be human means to be intrinsically temporal. We live in time and are oriented towards a future good. We are learning animals, and our learning is bound up with the taking of time. When we learn to know or to do something, we necessarily make mistakes, and we take practice. But keeping in view something we desire – a future good – we keep going.  

Let’s take the example of language. We acquire language in community over time. Toddlers make all sorts of hilarious mistakes when they first try to talk, and it takes them a long time even to get single words right, let alone to try and form sentences. But they keep trying, and they eventually learn. The same goes with love: Knowing how to love our family or our neighbours near and far is not something we are good at instantly. It is not the sort of learning where you absorb a piece of information and then you ‘get’ it. No, we learn it over time, we imitate others, we practice and even when we have learned, in the abstract, what it is to be loving, we keep getting it wrong. 

This, too, is part of what it means to be human: to make mistakes. Not the sort of mistakes machines make, when they classify some information wrongly, for instance, but the very human mistake of falling short of your own ideal. Of striving towards something you desire – happiness, in the broadest of terms – and yet falling short, in your actions, of that very goal. But there’s another very human thing right here: Human beings can also change. They – we – can have a change of heart, be transformed, and at some point in time, actually start to do the right thing – even against all the odds. Statistics of past behaviours, do not always correctly predict future outcomes. Part of being human means that we can be transformed.  

Transformation sometimes comes suddenly, when an overwhelming, awe-inspiring experience changes somebody’s life as by a bolt of lightning. Much more commonly, though, such transformation takes time. Through taking up small practices, we can form new habits, gradually acquire virtue, and do the right thing more often than not. This is so human: We are anything but perfect. As Christians would say: We have a tendency to entangle ourselves in the mess of sin and guilt. But we also bear the image of the Holy One who made us, and by the grace and favour of that One, we are not forever stuck in the mess. We are redeemed: are given the strength to keep trying, despite the mistakes we make, and given the grace to acquire virtue and become better people over time. All of this to say that being human means to live in time, and to learn in time. 

So, this is a real difference between human beings and machines: Human beings can, and do strive toward a future good. 

Now compare this to the most complex of machines. We say that AI is able to “learn”. But what does it mean to learn, for AI? Machine learning is usually categorized into supervised learning, unsupervised and self-supervised learning. Supervised learning means that a model is trained for a specific task based on correctly labelled data. For instance, if a model is to predict whether a mammogram image contains a cancerous tumour, it is given many example images which are correctly classed as ‘contains cancer’ or ‘does not contain cancer’. That way, it is “taught” to recognise cancer in unlabelled mammograms. Unsupervised learning is different. Here, the system looks for patterns in the dataset it is given. It clusters and groups data without relying on predefined labels. Self-supervised learning uses both methods: Here, the system uses parts of the data itself as a kind of label – such as, for instance, predicting the upper half of an image from its lower half, or the next word in a given text. This is the predominant paradigm for how contemporary large-scale AI models “learn”.  

In each case, AI’s learning is necessarily based on data sets. Learning happens with reference to pre-given data, and in that sense with reference to the past. It may look like such models can consider the future, and have future goals, but only insofar as they have picked up patterns in past data, which they use to predict future patterns – as if the future was nothing but a repetition of the past.  

So this is a real difference between human beings and machines: Human beings can, and do strive toward a future good. Machines, by contrast, are always oriented towards the past of the data that was fed to them. Human beings are intrinsically temporal beings, whereas machines are defined by temporality only in a very limited sense: it takes time to upload data, and for the data to be processed, for instance. Time, for machines, is nothing but an extension of the past, whereas for human beings, it is an invitation to and the possibility for being transformed for the sake of a future good. We, human beings, are intrinsically temporal, living in time towards a future good – which machines do not.  

In the face of new technologies we need a sharpened sense for the strange and awe-inspiring species that is the human race, and cultivate a new sense of wonder about humanity itself.  

Review
Comment
Politics
4 min read

Truth decay: lying will destroy us

The British way of doing things extends to more than an unwritten constitution. Simon Burton-Jones argues it includes how we lie.

Simon is Bishop of Tonbridge in the Diocese of Rochester. He writes regularly round social, cultural and political issues.

A Pinnochio figure stands on a window sill beside some net curtains.
Milk Chan on Unsplash.

"Why are things so ***t?"

This was the question veteran journalist Gavin Esler was asked as he walked down a Devon street one day by a member of the public who recognised him. It was a very British kind of question, crudely expressing a common underlying feeling. Esler has set out to answer it in his book: Britain Is Better Than This. It isn’t a pretty picture and will be contested. When a government has been in power for thirteen years, blame for the current state of affairs is hard to refute. There are some who do, but not many these days.  

Gavin Esler’s previous book, How Britain Ends, looked at the demise of the Union, propelled by Brexit. Esler himself was a member of Change UK, so his position as a remainer is well documented. Scotland’s vote to remain contrasted sharply with an English nationalist vote to leave. Northern Ireland’s fragile peace was put greatly at risk by deepening the divide between the island’s north and south. As a political movement, the Conservative and Unionist Party seemed to defy their name. 

Telling fibs in politics is as old as politics, but he and others identify newly organised patterns of lying; untruths being told as a deliberate strategy.

Britain Is Better Than This exposes the lack of a codified constitution as a developing risk. The UK’s deliberately vague and amorphous unwritten constitution has often been a source of its proud exceptionalism. We do it differently because we can, and we pull it off. Esler notes the almost sacred tones in which this is expressed.  It is a mystery, using rarefied, opaque language similar to eucharistic liturgy to inspire reverential awe. But when the constitution is essentially unwritten, commentators rather than judges take precedence as interpreters. And there is elasticity: the constitution is what those with power say it is at any given moment. The Crown, the government and the State seem to be used interchangeably, according to the need. If this has worked in the past, it is because of Britain’s ‘good chap’ theory of government, so called because whatever uncertainty may prevail, decent, well-educated, public-spirited people can be relied upon to make it work. 

Esler’s point is that the cracks are showing, and more people are poking their fingers through the holes to make them bigger. The Queen’s proroguing of Parliament in 2019 at the request of Boris Johnson was ruled unlawful by the Supreme Court, showing the system can rectify issues, but it also demonstrated the risk of future, unscrupulous leaders exploiting those cracks. Benjamin Netanyahu’s attempted curtailing of judicial power in favour of executive authority has set a model which others may follow. Esler’s case for a written constitution and also for electoral reform to introduce fairer systems of proportional representation are not panaceas and he while he recognises this, he prefers them.   

As a journalist he is on assured ground in the assessment of what the Rand Corporation has termed truth decay: the growing ascendency of the lie in public debate. Telling fibs in politics is as old as politics, but he and others identify newly organised patterns of lying; untruths being told as a deliberate strategy. This is murky territory for the democratic world. Across global, digital media, we disagree more about facts, blur fact and opinion, prefer personal experience to facts and trust historic sources of information less. Esler’s wants to see media literacy taught more effectively, as Nordic countries do. Deep fake technology is only going to make judgments harder.  Courses and syllabuses with a ‘media’ prefix are still considered unserious in some circles, but without this kind of literacy, Britons may become prey for some ugly predators. 

We have an uneasy, open marriage with the truth in public and in private (where research shows we all lie far more than we realise). 

In 2020, the Edelman Trust Barometer put the UK in twenty-seventh place out of twenty-eight OECD nations for trust in democratic institutions; only Russia lay below. Britain’s mythical capacity for ‘muddling through’ is based in part on our ability to ignore bad news until we can do so no longer; kicking the can down the road may be a truer expression. Gavin Esler has done us all a favour by showing what is at stake. The book’s opening question: Why are things so ***t?, however, only takes us so far.  By the end we may know why. What we are able to do about it is the defining question. 

In 1998, Jonathan Freedland’s book Bring Home The Revolution struck a nerve. The UK was transitioning from a tired government to a younger, more energetic one; the tech revolution was taking off, millennial optimism was off the leash. Freedland believed the time was right for the UK to become a republic with a written constitution like the USA. A lot has happened since then, and where Freedland’s book captured the hopefulness of the time, Esler’s feels more like a lament; a cry for a better world in the face of the facts. 

His implicit call for us to live in truth (as the late Czech president Vaclav Havel would put it) carries most conviction. We have an uneasy, open marriage with the truth in public and in private (where research shows we all lie far more than we realise). The traction of ‘my truth’ rather than, more accurately, ‘my story’ may show how close we have come to a precipice.  My truth does not set me free. If we believe the truth sets us free, we also get what David Foster Wallace meant when he observed: 'the truth will set you free, but not until it has finished with you'. Words Christ perhaps left unsaid. Big ideological changes are not afoot in Britain today, but culture is formed of a million daily interactions, where the glue of trust sticks and the power of imitation prevails. Telling porkies when others don’t becomes a tougher gig.