MIT News - Machine learning 01月17日
Algorithms and AI for a better world
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Manish Raghavan致力于研究算法决策和人工智能在带来效率和预测能力提升的同时,如何减轻其相关的风险。他的研究关注AI在招聘、医疗和在线平台等领域的应用,旨在利用AI的可观察性来识别系统偏差,并提出改进方案。Raghavan还探索了如何利用AI来解决社会问题,例如在医疗领域,他研究了AI辅助诊断的有效性,以及如何通过平台设计来促进用户更健康的使用习惯。他的工作强调了技术进步与社会责任之间的平衡,并期望通过AI来更深入地理解人类社会。

💼 AI在招聘中的应用:Raghavan指出,历史招聘实践存在偏见,AI系统会继承这些偏见。但他认为,AI系统比人类更容易观察和测量,这为发现和纠正偏见提供了机会。

🩺 AI在医疗领域的应用:Raghavan研究了AI算法在胃肠道出血患者分诊中的应用,发现AI的判断与人类医生平均水平相当,但AI可能在某些情况下出错。他希望通过识别这些情况,让医生提供更有价值的反馈。

📱 AI对在线平台的影响:Raghavan研究了社交媒体算法如何通过观察用户选择的内容,推送更多类似内容。他认为用户可能会像吃薯片一样选择内容,虽然即时满足,但长期来看可能并不健康。他开发了一个模型来帮助平台鼓励用户更健康地使用。

💡 AI的未来潜力:Raghavan认为,AI可以帮助我们更好地理解人类和社会。他希望利用AI来解决长期存在的社会问题,并促进更健康的技术发展。

Amid the benefits that algorithmic decision-making and artificial intelligence offer — including revolutionizing speed, efficiency, and predictive ability in a vast range of fields — Manish Raghavan is working to mitigate associated risks, while also seeking opportunities to apply the technologies to help with preexisting social concerns.

“I ultimately want my research to push towards better solutions to long-standing societal problems,” says Raghavan, the Drew Houston Career Development Professor in MIT’s Sloan School of Management and the Department of Electrical Engineering and Computer Science and a principal investigator at the Laboratory for Information and Decision Systems (LIDS).

A good example of Raghavan’s intention can be found in his exploration of the use AI in hiring.

Raghavan says, “It’s hard to argue that hiring practices historically have been particularly good or worth preserving, and tools that learn from historical data inherit all of the biases and mistakes that humans have made in the past.”

Here, however, Raghavan cites a potential opportunity.

“It’s always been hard to measure discrimination,” he says, adding, “AI-driven systems are sometimes easier to observe and measure than humans, and one goal of my work is to understand how we might leverage this improved visibility to come up with new ways to figure out when systems are behaving badly.”

Growing up in the San Francisco Bay Area with parents who both have computer science degrees, Raghavan says he originally wanted to be a doctor. Just before starting college, though, his love of math and computing called him to follow his family example into computer science. After spending a summer as an undergraduate doing research at Cornell University with Jon Kleinberg, professor of computer science and information science, he decided he wanted to earn his PhD there, writing his thesis on “The Societal Impacts of Algorithmic Decision-Making.”

Raghavan won awards for his work, including a National Science Foundation Graduate Research Fellowships Program award, a Microsoft Research PhD Fellowship, and the Cornell University Department of Computer Science PhD Dissertation Award.

In 2022, he joined the MIT faculty.

Perhaps hearkening back to his early interest in medicine, Raghavan has done research on whether the determinations of a highly accurate algorithmic screening tool used in triage of patients with gastrointestinal bleeding, known as the Glasgow-Blatchford Score (GBS), are improved with complementary expert physician advice.

“The GBS is roughly as good as humans on average, but that doesn’t mean that there aren’t individual patients, or small groups of patients, where the GBS is wrong and doctors are likely to be right,” he says. “Our hope is that we can identify these patients ahead of time so that doctors’ feedback is particularly valuable there.”

Raghavan has also worked on how online platforms affect their users, considering how social media algorithms observe the content a user chooses and then show them more of that same kind of content. The difficulty, Raghavan says, is that users may be choosing what they view in the same way they might grab bag of potato chips, which are of course delicious but not all that nutritious. The experience may be satisfying in the moment, but it can leave the user feeling slightly sick.

Raghavan and his colleagues have developed a model of how a user with conflicting desires — for immediate gratification versus a wish of longer-term satisfaction — interacts with a platform. The model demonstrates how a platform’s design can be changed to encourage a more wholesome experience. The model won the Exemplary Applied Modeling Track Paper Award at the 2022 Association for Computing Machinery Conference on Economics and Computation.

“Long-term satisfaction is ultimately important, even if all you care about is a company’s interests,” Raghavan says. “If we can start to build evidence that user and corporate interests are more aligned, my hope is that we can push for healthier platforms without needing to resolve conflicts of interest between users and platforms. Of course, this is idealistic. But my sense is that enough people at these companies believe there’s room to make everyone happier, and they just lack the conceptual and technical tools to make it happen.”

Regarding his process of coming up with ideas for such tools and concepts for how to best apply computational techniques, Raghavan says his best ideas come to him when he’s been thinking about a problem off and on for a time. He would advise his students, he says, to follow his example of putting a very difficult problem away for a day and then coming back to it.

“Things are often better the next day,” he says.

When he's not puzzling out a problem or teaching, Raghavan can often be found outdoors on a soccer field, as a coach of the Harvard Men’s Soccer Club, a position he cherishes.

“I can’t procrastinate if I know I’ll have to spend the evening at the field, and it gives me something to look forward to at the end of the day,” he says. “I try to have things in my schedule that seem at least as important to me as work to put those challenges and setbacks into context.”

As Raghavan considers how to apply computational technologies to best serve our world, he says he finds the most exciting thing going on his field is the idea that AI will open up new insights into “humans and human society.”

“I’m hoping,” he says, “that we can use it to better understand ourselves.”

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AI决策 社会影响 算法偏差 在线平台 技术伦理
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