IDEI Distinguished Research Seminar Series

Understanding the Impacts of De-personalization in Search Algorithm on Consumer Behavior: A Field Experiment with a Large Online Retail Platform

SPEAKER

This is a joint seminar organized by the Institute of Digital Economy & Innovation and HKU Business School’s academic area of Marketing.

SPEAKER

Prof. Yuxin Chen

Yuxin Chen is the Dean of Business and Distinguished Global Professor of Business at NYU Shanghai, and holds an affiliated appointment in the Department of Marketing at the NYU Leonard N. Stern School of Business. He is also the director of NYU Shanghai Center for Business Education and Research and the co-director of NYU Shanghai Center for Data Science and Artificial Intelligence.  

The primary research interests of Dean Chen are in the areas of data-driven marketing, Internet marketing, pricing, retailing, competitive strategies, structural empirical models, Bayesian econometric methods, behavioral economics, and marketing in emerging markets. 

Dean Chen has received Frank M. Bass Award and John D.C. Little Award in 2001, and the Paul E. Green Award in 2012.  He was also a finalist for INFORMS Society for Marketing Science Long Term Impact Award in 2011.  Dean Chen serves as a coeditor of Quarterly Journal of Economics and Management.  He served as a Senior Editor of Marketing Science, Journal of the Production and Operations Management Society (POMS) and Customer Needs and Solutions, and as an Associate Editor of Journal of Marketing ResearchManagement Science and Quantitative Marketing and Economics. He also was on the editorial board of the Journal of Marketing, International Journal of Research in Marketing, and Journal of Marketing Science

ABSTRACT

Data on individual consumers are a critical asset for online retail platforms, which enable them to use personalized query-based search algorithms to help consumers find the products they are looking for. Yet data privacy regulations have been scaling up to protect customers’ personal data, which may result in the de-personalization in search algorithms. To understand its impacts on consumer search and purchase behavior, we design and exploit a high-stake large-scale field experiment involving 4,189,498 customers with the collaboration of a world-leading online retail platform. We find decreases in customer search efficiency and market transactions due to the de-personalization of the search algorithm. Compared with the control group with personalization, customers in the de-personalized treatment group on average browse more products in the product listing returned by the search algorithm but make fewer clicks and purchases. Meanwhile, the clicks and purchases from the sponsored ads increase in the treatment group. Finally, we find evidence that customers adapt their expectations of the search results and accordingly adjust their search behaviors almost immediately upon the de-personalization of the search algorithm. The findings offer insights for platforms and regulators to understand the implications of de-personalization in search algorithms arising from the evolving privacy regulations.

MODERATOR

Prof. Jinzhao DU

Assistant Professor of Marketing,

HKU Business School

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