Research analyzes investor reaction to robo-advisers, some people are missing an opportunity

Institute for Operations Research and the Management Sciences

INFORMS Journal Information Systems Research Study Key Takeaways:

  • Investors who factually need the help from robo-advisors (RAs) are less likely to try RAs.
  • Investors adjust their use of RAs based on recent RA performance: When RA performance is low, investors immediately decrease their usage, and vice versa.
  • Quick changes in RA usage often leads to worse investment performance, especially when the adjustments are frequent and substantial.

CATONSVILLE, MD, August 18, 2021 – Believe it nor not, more and more lending companies are turning to human-robot interaction to help with investment advice. But how do people react and what's the result of an investment decision when robots use algorithms to make suggestions? New research in the INFORMS journal Information Systems Research finds that investors who could benefit most from robo-advisors (RAs) aren't using them. And those who are, change their minds too quickly to see a return.

The article, "Human-Robot Interaction: When Investors Adjust the Usage of Robo-advisors in Peer-to-Peer Lending," was conducted by Zhiqiang (Eric) Zheng of the University of Texas at Dallas, Ruyi Ge of Shanghai Business School, and Xuan Tian and Li Liao of Tsinghua University, Beijing.

"Our analyses show that, somewhat surprisingly, investors who need more help from RAs – that is, those who encountered more defaults in their manual investing – are less likely to adopt such services," says Zheng, an Ashbel Smith Professor and professor of information systems in the Jindal School of Management at UT Dallas. "Investors tend to adjust their usage of the service in reaction to recent RA performance. However, interestingly, these human-in-the-loop interferences often lead to inferior performance."

The researchers looked at the human-robot interaction of financial advising services in peer-to- peer lending (P2P). Many crowdfunding platforms have started using robo-advisors to help lenders amplify their intelligence in P2P loan investments. This work analyzed data from one of the leading P2P companies and examined how investors use robo-advisors, and how the human adjustment of robo-advisor usage affects investment performance.

"Our results show that users experience more losses due to being too reactive to recent RA performance. This presents a new, but negative, use case for human-artificial intelligence (AI) synergy, where leaving too much control to humans over when to use an RA may be counterproductive," continues Zheng. "This result reflects investors' possible misunderstanding and misuse of RAs. They may not always have proper knowledge of RA systems and may intervene counterproductively."

Zheng notes that RA systems need to offer more transparency in their services and that a well-designed intelligent system should anticipate possible user behaviors and account for such human factors in its system design.

"It is especially important to know when it is beneficial to include humans in the loop of a system's deployment. All these implications require a clear understanding of how users might adopt and react to the systems," he adds.

Link to full study.

About INFORMS and Information Systems Research

Information Systems Research is a premier peer-reviewed scholarly journal focused on the latest theory, research and intellectual development to advance knowledge about the effective and efficient utilization of information technology. It is published by INFORMS, the leading international association for operations research and analytics professionals. More information is available at www.informs.org or @informs.

/Public Release. This material from the originating organization/author(s) might be of the point-in-time nature, and edited for clarity, style and length. Mirage.News does not take institutional positions or sides, and all views, positions, and conclusions expressed herein are solely those of the author(s).View in full here.