How to prevent AI from provoking the next financial crisis | 如何防止人工智慧引發下一次金融危機 - FT中文網
登錄×
電子郵件/用戶名
密碼
記住我
請輸入郵箱和密碼進行綁定操作:
請輸入手機號碼,透過簡訊驗證(目前僅支援中國大陸地區的手機號):
請您閱讀我們的用戶註冊協議私隱權保護政策,點擊下方按鈕即視爲您接受。
FT英語電臺

How to prevent AI from provoking the next financial crisis
如何防止人工智慧引發下一次金融危機

New systems have benefits for markets, but risks to stability must be managed
新體系對市場有利,但穩定性風險必須加以管理
00:00

undefined

Amid talk of job cuts due to artificial intelligence, Gary Gensler thinks robots will actually create more work for financial watchdogs. The US Securities and Exchange Commission chair puts the likelihood of an AI-driven financial crisis within a decade as “nearly unavoidable”, without regulatory intervention. The immediate risk is more of a new financial crash than a robot takeover.

Gensler’s critics argue that the risks posed by AI are not novel, and have existed for decades. But the nature of these systems, created by a handful of hugely powerful tech companies, requires a new approach beyond siloed regulation. Machines may make finance more efficient, but could do just as much to trigger the next crisis.

Among the risks Gensler pinpoints is “herding”, in which multiple parties make similar decisions. Such behaviour has played out countless times: the stampede of financial institutions into packages of subprime mortgages sowed the seeds of the 2008 financial crisis. The growing reliance on AI models produced by a few tech companies increases that risk. The opaque nature of the systems also makes it difficult for regulators and institutions to assess what data set they are reliant on.

Another danger lies in the paradox of explainability, noted by Gensler in a paper he co-wrote in 2020 as an MIT academic. If AI predictions could be easily understood, simpler systems could be used instead. It is their ability to produce new insights based on learning that makes them valuable. But it also hampers accountability and transparency; a lending model based on historical data could produce, say, racially biased results, but identifying this would take post facto investigation.

Reliance on AI also entrenches power in the hands of technology companies, which are increasingly making inroads into finance but are not subject to strict oversight. There are parallels with the world of cloud computing in finance. In the west, the triumvirate of Amazon, Microsoft and Google provides services to the biggest lenders. This concentration raises competition concerns, and affords at least the theoretical ability to move markets in the direction of their choice. It also generates systemic risk: an outage at Amazon Web Services in 2021 affected companies ranging from robot vacuum producer Roomba to dating app Tinder. An issue with a trading algorithm could trigger a market crash.

Watchdogs have pushed back against the awkward nexus of technology and finance in the past, as with Meta’s digital currency, Diem, formerly known as Libra. But to mitigate the risks from AI requires expanding the perimeter of financial regulation or pushing authorities across different sectors to collaborate far more effectively. Given the potential for AI to affect every industry, that co-operation should be broad. The history of credit default swaps and collateralised debt obligations shows how dangerous “siloed” thinking can be.

The authorities will also need to take a leaf from the book of those convinced that AI is going to conquer the world, and focus on structural challenges rather than individual cases. The SEC itself proposed a rule in July addressing possible conflicts of interest in predictive data analytics, but it was focused on individual models used by broker-dealers and investment advisers. Regulation should study the underlying systems as much as specific cases.

Neo-Luddism is not warranted; AI is not inherently negative for financial services. It can be used to speed up the delivery of credit, support better trading or combat fraud. That regulators are engaging with the technology is also welcome: further adoption could accelerate data analysis and develop institutional understanding. AI can be a friend to finance, if the watchmen have the right tools to keep it on the rails.

版權聲明:本文版權歸FT中文網所有,未經允許任何單位或個人不得轉載,複製或以任何其他方式使用本文全部或部分,侵權必究。

從臺北到布達佩斯:尋呼機爆炸的神祕軌跡

黎巴嫩真主黨遭遇的大膽襲擊事件所涉設備的供應鏈跨越三大洲。

Lex專欄:無論如何衡量,私募股權基金的表現都很糟糕

投資者急於回籠資金,迫使私募股權基金不得不降低標價以售出資產。

歐盟新任競爭事務專員:必須「改進」合併規則

特雷莎•裏貝拉在接受FT採訪時表示,歐洲企業需要具備規模才能與全球對手競爭。

鋪設中國太陽能板的熱潮威脅巴基斯坦負債累累的電網

電價飆升促使巴基斯坦企業爭相在工廠屋頂鋪設超低價的中國太陽能板。

針對川普的明顯暗殺企圖:到目前爲止我們知道什麼?

嫌疑人被捕引發了人們對美國總統選舉最後階段候選人安全的擔憂。

技術能源正在重塑世界

擁有化石燃料儲備的傳統權力掮客將看到他們的全球影響力減弱。
設置字型大小×
最小
較小
默認
較大
最大
分享×