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Confidence Revisited: The Distribution of Information

By Megan CzasonisMark KritzmanFangzhongLiuDavid Turkington
Nov 12, 2025

By Megan Czasonis, Mark Kritzman, Fangzhong Liu, and David Turkington

 

Relevance-Based Prediction can assess a prediction’s reliability from the consistency of the information that forms it, providing a novel perspective that complements conventional measures of confidence.

 

Prediction is like a voting process. Each datapoint casts a “vote” for the unknown outcome, and the final forecast averages these diverse views. But to know how confident we should be in the average, we need transparency into the votes that went into it. Linear regression and machine learning models can’t offer this visibility because they estimate parameters and then discard the data. However, as we show in a recent paper, Relevance-Based Prediction, a model-free technique, can assess the reliability of a prediction from the distribution of information that is used to form it.

 

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1.Peter L. Bernstein Award for Best Article in an Institutional Investor Journal in 2013; Doriot Award for Best Private Equity Research Paper in 2022; Bernstein-Fabozzi/Jacobs-Levy Award for Outstanding Article in the Journal of Portfolio Management in 2006, 2009, 2011, 2013 (2), 2014, 2015, 2016, 2021; Roger F. Murray First Prize for Research Presented at the Q Group Conference in 2012 and 2021; Graham & Dodd Scroll Award for article in the Financial Analysts Journal in 2002 and 2010.