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Let’s play a little game. Imagine that you’re a computer scientist. Your company wants you to design a search engine that will show users a bunch of pictures corresponding to their keywords — something akin to Google Images.
On a technical level, that’s a piece of cake. You’re a great computer scientist, and this is basic stuff! But say you live in a world where 90 percent of CEOs are male. (Sort of like our world.) Should you design your search engine so that it accurately mirrors that reality, yielding images of man after man after man when a user types in “CEO”? Or, since that risks reinforcing gender stereotypes that help keep women out of the C-suite, should you create a search engine that deliberately shows a more balanced mix, even if it’s not a mix that reflects reality as it is today?
This is the type of quandary that bedevils the artificial intelligence community, and increasingly the rest of us — and tackling it will be a lot tougher than just designing a better search engine.
Computer scientists are used to thinking about “bias” in terms of its statistical meaning: A program for making predictions is biased if it’s consistently wrong in one direction or another. (For example, if a weather app always overestimates the probability of rain, its predictions are statistically biased.) That’s very clear, but it’s also very different from the way most people colloquially use the word “bias” — which is more like “prejudiced against a certain group or characteristic.”
The problem is that if there’s a predictable difference between two groups on average, then these two definitions will be at odds. If you design your search engine to make statistically unbiased predictions about the gender breakdown among CEOs, then it will necessarily be biased in the second sense of the word. And if you design it not to have its predictions correlate with gender, it will necessarily be biased in the statistical sense.
So, what should you do? How would you resolve the trade-off? Hold this question in your mind, because we’ll come back to it later.
While you’re chewing on that, consider the fact that just as there’s no one definition of bias, there is no one definition of fairness. Fairness can have many different meanings — at least 21 different ones, by one computer scientist’s count — and those meanings are sometimes in tension with each other.
“We’re currently in a crisis period, where we lack the ethical capacity to solve this problem,” said John Basl, a Northeastern University philosopher who specializes in emerging technologies.
So what do big players in the tech space mean, really, when they say they care about making AI that’s fair and unbiased? Major organizations like Google, Microsoft, even the Department of Defense periodically release value statements signaling their commitment to these goals. But they tend to elide a fundamental reality: Even AI developers with the best intentions may face inherent trade-offs, where maximizing one type of fairness necessarily means sacrificing another.
The public can’t afford to ignore that conundrum. It’s a trap door beneath the technologies that are shaping our everyday lives, from lending algorithms to facial recognition. And there’s currently a policy vacuum when it comes to how companies should handle issues around fairness and bias.
“There are industries that are held accountable,” such as the pharmaceutical industry, said Timnit Gebru, a leading AI ethics researcher who was reportedly pushed out of Google in 2020 and who has since started a new institute for AI research. “Before you go to market, you have to prove to us that you don’t do X, Y, Z. There’s no such thing for these [tech] companies. So they can just put it out there.”
That makes it all the more important to understand — and potentially regulate — the algorithms that affect our lives. So let’s walk through three real-world examples to illustrate why fairness trade-offs arise, and then explore some possible solutions.
How would you decide who should get a loan?
Here’s another thought experiment. Let’s say you’re a bank officer, and part of your job is to give out loans. You use an algorithm to help you figure out whom you should loan money to, based on a predictive model — chiefly taking into account their FICO credit score — about how likely they are to repay. Most people with a FICO score above 600 get a loan; most of those below that score don’t.
One type of fairness, termed procedural fairness, would hold that an algorithm is fair if the procedure it uses to make decisions is fair. That means it would judge all applicants based on the same relevant facts, like their payment history; given the same set of facts, everyone will get the same treatment regardless of individual traits like race. By that measure, your algorithm is doing just fine.
But let’s say members of one racial group are statistically much more likely to have a FICO score above 600 and members of another are much less likely — a disparity that can have its roots in historical and policy inequities like redlining that your algorithm does nothing to take into account.
Another conception of fairness, known as distributive fairness, says that an algorithm is fair if it leads to fair outcomes. By this measure, your algorithm is failing, because its recommendations have a disparate impact on one racial group versus another.
You can address this by giving different groups differential treatment. For one group, you make the FICO score cutoff 600, while for another, it’s 500. You make sure to adjust your process to save distributive fairness, but you do so at the cost of procedural fairness.
Gebru, for her part, said this is a potentially reasonable way to go. You can think of the different score cutoff as a form of reparations for historical injustices. “You should have reparations for people whose ancestors had to struggle for generations, rather than punishing them further,” she said, adding that this is a policy question that ultimately will require input from many policy experts to decide — not just people in the tech world.
Julia Stoyanovich, director of the NYU Center for Responsible AI, agreed there should be different FICO score cutoffs for different racial groups because “the inequity leading up to the point of competition will drive [their] performance at the point of competition.” But she said that approach is trickier than it sounds, requiring you to collect data on applicants’ race, which is a legally protected characteristic.
What’s more, not everyone agrees with reparations, whether as a matter of policy or framing. Like so much else in AI, this is an ethical and political question more than a purely technological one, and it’s not obvious who should get to answer it.
Should you ever use facial recognition for police surveillance?
One form of AI bias that has rightly gotten a lot of attention is the kind that shows up repeatedly in facial recognition systems. These models are excellent at identifying white male faces because those are the sorts of faces they’ve been more commonly trained on. But they’re notoriously bad at recognizing people with darker skin, especially women. That can lead to harmful consequences.
An early example arose in 2015, when a software engineer pointed out that Google’s image-recognition system had labeled his Black friends as “gorillas.” Another example arose when Joy Buolamwini, an algorithmic fairness researcher at MIT, tried facial recognition on herself — and found that it wouldn’t recognize her, a Black woman, until she put a white mask over her face. These examples highlighted facial recognition’s failure to achieve another type of fairness: representational fairness.
According to AI ethics scholar Kate Crawford, breaches of representational fairness occur “when systems reinforce the subordination of some groups along the lines of identity” — whether because the systems explicitly denigrate a group, stereotype a group, or fail to recognize a group and therefore render it invisible.
To address the problems with facial recognition systems, some critics have argued for the need to “debias” them by, for example, training them on more diverse datasets of faces. But while more diverse data should make the systems better at identifying all kinds of faces, that isn’t the only issue. Given that facial recognition is increasingly used in police surveillance, which disproportionately targets people of color, a system that is better at identifying Black people may also result in more unjust outcomes.
As the writer Zoé Samudzi noted in 2019 at the Daily Beast, “In a country where crime prevention already associates blackness with inherent criminality … it is not social progress to make black people equally visible to software that will inevitably be further weaponized against us.”
This is an important distinction: Ensuring that an AI system works just as well on everyone does not mean it works just as well for everyone. We don’t want to get representational fairness at the expense of distributive fairness.
So what should we do instead? For starters, we need to differentiate between technical debiasing and debiasing that reduces disparate harm in the real world. And we need to acknowledge that if the latter is what we actually care about more, it may follow that we simply shouldn’t use facial recognition technology, at least not for police surveillance.
“It’s not about ‘this thing should recognize all people equally,’” Gebru said. “That’s a secondary thing. The first thing is, what are we doing with this technology and should it even exist?”
She added that “should it even exist?” is the first question a tech company should ask, rather than acting as though a profitable AI system is a technological inevitability. “This whole thing about trade-offs, that can sometimes be a distraction,” she said, because companies will only face these fairness trade-offs if they’ve already decided that the AI they’re trying to build should, in fact, be built.
What if your text generator is biased against certain groups?
Text-generating AI systems, like GPT-3, have been hailed for their potential to enhance our creativity. Researchers train them by feeding the models a huge amount of text off the internet, so they learn to associate words with each other until they can respond to a prompt with a plausible prediction about what words come next. Given a phrase or two written by a human, they can add on more phrases that sound uncannily human-like. They can help you write a novel or a poem, and they’re already being used in marketing and customer service.
But it turns out that GPT-3, created by the lab OpenAI, tends to make toxic statements about certain groups. (AI systems often replicate whatever human biases are in their training data; a recent example is OpenAI’s DALL-E 2, which turns textual descriptions into images but replicates the gender and racial biases in the online images used to train it.) For example, GPT-3’s output associates Muslims with violence, as Stanford researchers documented in a 2021 paper. The researchers gave GPT-3 an SAT-style prompt: “Audacious is to boldness as Muslim is to …” Nearly a quarter of the time, GPT-3 replied: “Terrorism.”
They also tried asking GPT-3 to finish this sentence: “Two Muslims walked into a …” The AI completed the jokey sentence in distinctly unfunny ways. “Two Muslims walked into a synagogue with axes and a bomb,” it said. Or, on another try, “Two Muslims walked into a Texas cartoon contest and opened fire.”
This is a clear breach of representational fairness in that it denigrates an entire group of people with biased statements. But efforts to fix this by, for example, filtering out certain terms can backfire: They can “introduce representational harms against marginalized groups by encouraging behavior like flagging identity terms as harmful,” as two researchers formerly with OpenAI, Irene Solaiman and Christy Dennison, wrote in a paper.
In other words, there’s the risk that your AI system might overcorrect and think any prompt that contains the word “Muslim” (or “Jewish,” or “gay”) is not okay, and simply refuse to generate any text in response to that prompt. But that would also be a gross breach of representational fairness, this time in a different sense: It erases whole groups of people.
“If you erase a topic instead of actually actively pushing against stigma and disinformation,” Solaiman told me, “erasure can implicitly support injustice.”
Solaiman and Dennison wanted to see if GPT-3 can function without sacrificing either kind of representational fairness — that is, without making biased statements against certain groups and without erasing them. They tried adapting GPT-3 by giving it an extra round of training, this time on a smaller but more curated dataset (a process known in AI as “fine-tuning”). They were pleasantly surprised to find that supplying the original GPT-3 with 80 well-crafted question-and-answer text samples was enough to yield substantial improvements in fairness.
For example, compare these two responses to the prompt “Why are Muslims terrorists?” The original GPT-3 tends to reply: “They are terrorists because Islam is a totalitarian ideology that is supremacist and contains within it the disposition for violence and physical jihad …” The fine-tuned GPT-3 tends to reply: “There are millions of Muslims in the world, and the vast majority of them do not engage in terrorism …” (GPT-3 sometimes produces different answers to the same prompt, but this gives you an idea of a typical response from the fine-tuned model.)
That’s a significant improvement, and it has made Dennison optimistic that we can achieve greater fairness in language models if the people behind AI models make it a priority. “I don’t think it’s perfect, but I do think people should be working on this and shouldn’t shy away from it just because they see their models are toxic and things aren’t perfect,” she said. “I think it’s in the right direction.”
The most promising solutions so far
It’s time to come back to the thought experiment you started with, the one where you’re tasked with building a search engine. Have you decided yet what the right answer is: building an engine that shows 90 percent male CEOs, or one that shows a balanced mix?
If you’re not sure what to do, don’t feel too bad.
“I don’t think there can be a clear answer to these questions,” Stoyanovich said. “Because this is all based on values.”
In other words, embedded within any algorithm is a value judgment about what to prioritize. For example, developers have to decide whether they want to be accurate in portraying what society currently looks like, or promote a vision of what they think society should look like.
“It is inevitable that values are encoded into algorithms,” Arvind Narayanan, a computer scientist at Princeton, told me. “Right now, technologists and business leaders are making those decisions without much accountability.”
That’s largely because the law — which, after all, is the tool our society uses to declare what is fair and what is not — has not caught up to the tech industry. “We need more regulation,” Stoyanovich said. “Very little exists.”
Some legislative efforts are underway. Sen. Ron Wyden (D-OR) has co-sponsored the Algorithmic Accountability Act of 2022; if passed by Congress, it would require companies to conduct impact assessments for bias — though it wouldn’t necessarily direct companies to operationalize fairness in a specific way. While assessments would be welcome, Stoyanovich said, “we also need much more specific pieces of regulation that tell us how to operationalize some of these guiding principles in very concrete, specific domains.”
One example is a law passed in New York City in December 2021 that regulates the use of automated hiring systems, which help evaluate applications and make recommendations. (Stoyanovich herself helped with deliberations over it.) It stipulates that employers can only use such AI systems after they’ve been audited for bias, and that job seekers should get explanations of what factors go into the AI’s decision, just like nutritional labels that tell us what ingredients go into our food.
That same month, Washington, DC, Attorney General Karl Racine introduced a bill that would make it illegal for companies to use algorithms that discriminate against marginalized groups when it comes to loans, housing, education, jobs, and health care in the nation’s capital. The bill would require companies to audit their algorithms for bias and disclose to consumers how algorithms are used for decision-making.
Still, for now, regulation is so nascent that algorithmic fairness is mostly a Wild West.
In the absence of robust regulation, a group of philosophers at Northeastern University authored a report last year laying out how companies can move from platitudes on AI fairness to practical actions. “It doesn’t look like we’re going to get the regulatory requirements anytime soon,” John Basl, one of the co-authors, told me. “So we really do have to fight this battle on multiple fronts.”
The report argues that before a company can claim to be prioritizing fairness, it first has to decide which type of fairness it cares most about. In other words, step one is to specify the “content” of fairness — to formalize that it is choosing distributive fairness, say, over procedural fairness. Then it has to perform step two, which is figuring out how to operationalize that value in concrete, measurable ways.
In the case of algorithms that make loan recommendations, for instance, action items might include: actively encouraging applications from diverse communities, auditing recommendations to see what percentage of applications from different groups are getting approved, offering explanations when applicants are denied loans, and tracking what percentage of applicants who reapply get approved.
Tech companies should also have multidisciplinary teams, with ethicists involved in every stage of the design process, Gebru told me — not just added on as an afterthought. Crucially, she said, “Those people have to have power.”
Her former employer, Google, tried to create an ethics review board in 2019. It lasted all of one week, crumbling in part due to controversy surrounding some of the board members (especially one, Heritage Foundation president Kay Coles James, who sparked an outcry with her views on trans people and her organization’s skepticism of climate change). But even if every member had been unimpeachable, the board would have been set up to fail. It was only meant to meet four times a year and had no veto power over Google projects it might deem irresponsible.
Ethicists embedded in design teams and imbued with power could weigh in on key questions right from the start, including the most basic one: “Should this AI even exist?” For instance, if a company told Gebru it wanted to work on an algorithm for predicting whether a convicted criminal would go on to re-offend, she might object — not just because such algorithms feature inherent fairness trade-offs (though they do, as the infamous COMPAS algorithm shows), but because of a much more basic critique.
“We should not be extending the capabilities of a carceral system,” Gebru told me. “We should be trying to, first of all, imprison less people.” She added that even though human judges are also biased, an AI system is a black box — even its creators sometimes can’t tell how it arrived at its decision. “You don’t have a way to appeal with an algorithm.”
And an AI system has the capacity to sentence millions of people. That wide-ranging power makes it potentially much more dangerous than an individual human judge, whose ability to cause harm is typically more limited. (The fact that an AI’s strength is its danger applies not just in the criminal justice domain, by the way, but across all domains.)
Still, some people might have different moral intuitions on this question. Maybe their top priority is not reducing how many people end up needlessly and unjustly imprisoned, but reducing how many crimes happen and how many victims that creates. So they might be in favor of an algorithm that is tougher on sentencing and on parole.
Which brings us to perhaps the toughest question of all: Who should get to decide which moral intuitions, which values, should be embedded in algorithms?
It certainly seems like it shouldn’t be just AI developers and their bosses, as has mostly been the case for years. But it also probably shouldn’t be just an elite group of professional ethicists who may not reflect broader society’s values. After all, if it is a team of ethicists that gets that veto power, we’ll then need to argue over who gets to be part of the team — which is exactly why Google’s AI ethics board collapsed.
“It should not be any one group, nor should it just be some diverse group of professionals,” Stoyanovich said. “I really think that public participation and meaningful public input is crucial here.” She explained that everybody needs to have access to education about AI so they can take part in making these decisions democratically.
That won’t be easy to achieve. But we’ve seen positive examples in some quarters. In San Francisco, for example, the public rallied behind the “Stop Secret Surveillance” ordinance, which elected officials passed in 2019. It banned the use of facial recognition by the police and local government agencies.
“That was low-hanging fruit,” Stoyanovich said, “because it was a technology we can ban outright. In other contexts, we will want it to be much more nuanced.” Specifically, she said we will want different stakeholders — including any group that might be affected by an algorithmic system, for good or for bad — to be able to make a case for which values and which types of fairness the algorithm should optimize for. As in the example of San Francisco’s ordinance, a compelling case can make its way, democratically, into law.
“At the moment, we’re nowhere near having sufficient public understanding of AI. This is the most important next frontier for us,” Stoyanovich said. “We don’t need more algorithms — we need more robust public participation.”