Rukavina, Andrei, Vivas, Hernan, and Schneider, Matthew J., The Human Antidote to AI Hype: Expertise as the Anchor of Real Value. Association of Insolvency and Restructuring Advisors (Jan 2026).
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Leading For Change 2016
Leading For Change 2016
Leading For Change 2016
Leading For Change 2016
Emilee Simmons
Matthew Schneider, PhD
Associate Professor
Decision Sciences and MIS
Gerri C. LeBow Hall 623
Biography
Areas of Expertise
Selected Works
Articles
Schneider, Matthew J., Bailie, James, and Iacobucci, Dawn, Why Data Anonymization Has Not Taken Off. Customer Needs and Solutions (Oct 2025).
Bale, Cameron D., Schneider, Matthew J., and Lee, Jinwook, Can We Protect Time Series Data While Maintaining Accurate Forecasts?. International Journal of Forecasting (Year 2025).
Schneider, Matthew J., Rankin, Rufus, and Browell, Jethro, Limiting Extreme Behavior in Forecasting Competitions. Foresight: The International Journal of Applied Forecasting (Sep 2024).
Lee, Jinwook, and Schneider, Matthew J., Geometric series representation for robust bounds of exponential smoothing difference between protected and confidential data. Annals of Operations Research (Sep 2023).
Li, Shaobo, Schneider, Matthew J., Yu, Yan, and Gupta, Sachin, Reidentification Risk in Panel Data: Protecting for k-Anonymity. Information Systems Research (Year 2022).
Gupta, Sachin, Moutafis, Panos, and Schneider, Matthew J., To Protect Consumer Data, Don’t Do Everything on the Cloud. Harvard Business Review (Digital Article) (Jun 2021).
Schneider, Matthew J., Protecting Survey Data on a Consumer Level. Journal of Marketing Analytics (Year 2020).
Gupta, Sachin, and Schneider, Matthew J., Protecting Customers’ Privacy Requires More than Anonymizing Their Data. Harvard Business Review (Digital Article) (Jun 2018).
Schneider, Matthew J., Jagpal, Sharan, Gupta, Sachin, Li, Shaobo, and Yu, Yan, A Flexible Method for Protecting Marketing Data: An Application to Point-of-Sale Data. Marketing Science (Year 2018).
Schneider, Matthew J., Jagpal, Sharan, Gupta, Sachin, Li, Shaobo, and Yu, Yan, Protecting customer privacy when marketing with second-party data. International Journal of Research in Marketing 34 (Year 2017):593-603.
Schneider, Matthew J., and Gupta, Sachin, Forecasting sales of new and existing products using consumer reviews: A random projections approach. International Journal of Forecasting 32 (Year 2016):243-256.
Schneider, Matthew J., and Gorr, Wilpen, ROC-based model estimation for forecasting large changes in demand. International Journal of Forecasting 31 (Year 2015):253-262.
Schneider, Matthew J., and Abowd, John, A new method for protecting interrelated time series with Bayesian prior distributions and synthetic data. Journal of the Royal Statistical Society 178 (Year 2015):963-975.
Iacobucci, Dawn, Posavac, Stephen, Kardes, Frank, and Schneider, Matthew J., Toward a more nuanced understanding of the statistical properties of a median split. Journal of Consumer Psychology 25 (Year 2015):652-665.
Abowd, John, Schneider, Matthew J., and Vilhuber, Lars, Differential Privacy Applications to Bayesian and Linear Mixed Model Estimation. Journal of Privacy and Confidentiality 5 (Year 2013).
Tristan Potter, PhD
Associate Professor
Economics
Gerri C. LeBow Hall 1035
Areas of Expertise
Selected Works
Articles
Potter, Tristan, Destabilizing Search Technology. Journal of Monetary Economics 145 (Jul 2024).
Potter, Tristan, Chahrour, Ryan, and Chugh, Sanjay, Anticipated Productivity and the Labor Market. Quantitative Economics (Jul 2023).
Potter, Tristan, Down the Rabbit Hole: Habit-formation in Internet Use among Unemployed Workers. Economics Letters (Jun 2022).
Potter, Tristan, and Bernhardt, Dan, Wage Offers and On-the-job Search. Canadian Journal of Economics (May 2022).
Potter, Tristan, The Discouragement Rate: An Index of Discouragement-Induced Hardship. Applied Economics Letters (Sep 2021).
Potter, Tristan, Learning and Job Search Dynamics during the Great Recession. Journal of Monetary Economics (Jan 2021).
Bond, Eric W., Crucini, Mario, Potter, Tristan, and Rodrigue, Joel, Misallocation and Productivity Effects of the Smoot-Hawley Tariff. Review of Economic Dynamics (Jan 2013).