• Home
  • News
  • Coins2Day 500
  • Tech
  • Finance
  • Leadership
  • Lifestyle
  • Rankings
  • Multimedia
Magazinestock fraud

A.I. vs. the wolves of Wall Street

By
Jonathan Vanian
Jonathan Vanian
Down Arrow Button Icon
By
Jonathan Vanian
Jonathan Vanian
Down Arrow Button Icon
October 29, 2019, 6:30 AM ET
Illustration by Sébastien Thibault

An investor submits a mountain of online orders to sell shares in a grocery chain. It may look like another routine trade, but it’s a scam.

What he’s actually done is spook others into selling their stock in the company, causing its value to tumble. After canceling his own sales, the scammer quickly swoops in to buy the thousands of shares flooding the market at a bargain price. 

This illegal scheme, known as spoofing, is well known. But it’s difficult to police because shady traders can use algorithms to place and swiftly cancel orders, over and over again. 

In October, stock exchange Nasdaq introduced a tool that uses deep learning, a subset of artificial intelligence, to flag such suspicious trades. The technology is supposed to make it easier to identify fraud amid the billions of trades that investors make annually. 

Nasdaq has put the new software to work alongside its more conventional systems for spotting stock market crimes like insider trading. What sets deep learning apart, says Nasdaq’s machine-learning chief Michael O’Rourke, is that it’s “good at finding things that are very hard to describe.” 

To train its deep learning, Nasdaq fed it order and trade data from its exchange as well as nonpublic information. After a year of testing, the team that created the technology judged it reliable enough to use more broadly. 

One potential risk with using A.I. For spotting scams is a flood of false positives—overwhelming the staff who review flagged trades. “You can’t miss, but you don’t want to overshoot,” says O’Rourke. However, it’s too soon to calculate a meaningful error rate, he adds, and he thinks a limited number of false positives is acceptable. 

In the end, it’s up to federal regulators to pursue wrongdoers—a challenge considering the Securities and Exchange Commission has limited resources. Still, Nasdaq’s team says the new software will help by providing the agency with better and timelier information.

Nasdaq isn’t alone in using machine learning to identify stock fraud. The University of Michigan, for example, is also developing A.I.-powered statistical techniques to counter fraudsters. The problem, however, is that it lacks access to the market data that is so critical to training its system. 

“There are some daunting obstacles to building algorithms to detect manipulation when you don’t have a realistic toy market to play with and when you don’t have access to real-time data,” says Gabriel Rauterberg, an assistant law professor at the university. (­Nasdaq rival New York Stock Exchange may also be well positioned to develop deep learning for detecting fraud, but it declined to comment to Coins2Day.)

Eventually, Nasdaq says, it plans to sell versions of its new technology to other exchanges, something it already does with other software it has developed. 

This article appeared in the November 2019 issue of Coins2Day.

More must-read stories from Coins2Day:

—Why active fund managers have ‘stopped yawning and started flexing their muscles’
—Why JPMorgan Chase wants to give more former criminals a second chance
—What handing out full size candy bars on Halloween says about you, according to behavioral economists
—Another wrinkle emerges in the WeWork saga
—As trade with China dries Up, the lobster business is caught between Trump and Canada
Don’t miss the daily Term Sheet, Coins2Day’s newsletter on deals and dealmakers.

About the Author
By Jonathan Vanian
LinkedIn iconTwitter icon

Jonathan Vanian is a former Coins2Day reporter. He covered business technology, cybersecurity, artificial intelligence, data privacy, and other topics.

See full bioRight Arrow Button Icon
Rankings
  • 100 Best Companies
  • Coins2Day 500
  • Global 500
  • Coins2Day 500 Europe
  • Most Powerful Women
  • Future 50
  • World’s Most Admired Companies
  • See All Rankings
Sections
  • Finance
  • Leadership
  • Success
  • Tech
  • Asia
  • Europe
  • Environment
  • Coins2Day Crypto
  • Health
  • Retail
  • Lifestyle
  • Politics
  • Newsletters
  • Magazine
  • Features
  • Commentary
  • Mpw
  • CEO Initiative
  • Conferences
  • Personal Finance
  • Education
Customer Support
  • Frequently Asked Questions
  • Customer Service Portal
  • Privacy Policy
  • Terms Of Use
  • Single Issues For Purchase
  • International Print
Commercial Services
  • Advertising
  • Coins2Day Brand Studio
  • Coins2Day Analytics
  • Coins2Day Conferences
  • Business Development
About Us
  • About Us
  • Editorial Calendar
  • Press Center
  • Work At Coins2Day
  • Diversity And Inclusion
  • Terms And Conditions
  • Site Map

© 2025 Coins2Day Media IP Limited. All Rights Reserved. Use of this site constitutes acceptance of our Terms of Use and Privacy Policy | CA Notice at Collection and Privacy Notice | Do Not Sell/Share My Personal Information
FORTUNE is a trademark of Coins2Day Media IP Limited, registered in the U.S. and other countries. FORTUNE may receive compensation for some links to products and services on this website. Offers may be subject to change without notice.