
Robert P Bartlett
· William A. Franke Professor of Law and Business, Senior Fellow at the Stanford Institute for Economic Policy Research and Professor, by courtesy, of Finance at the Graduate School of BusinessVerifiedStanford University · Demography
Active 1973–2025
About
Robert P Bartlett is the William A. Franke Professor of Law and Business at Stanford University. He is also a Senior Fellow at the Stanford Institute for Economic Policy Research and holds a courtesy appointment as a Professor of Finance at the Stanford Graduate School of Business. His roles indicate a focus on the intersection of law, business, and economic policy, contributing to academic leadership and research in these areas.
Research topics
- Computer Science
- Political Science
- Artificial Intelligence
- Medical education
- Applied psychology
- Psychology
- World Wide Web
- Medicine
Selected publications
A Profit-Based Measure of Lending Discrimination
ArXiv.org · 2025-12-23
articleOpen accessAlgorithmic lending has transformed the consumer credit landscape, with complex machine learning models now commonly used to make or assist underwriting decisions. To comply with fair lending laws, these algorithms typically exclude legally protected characteristics, such as race and gender. Yet algorithmic underwriting can still inadvertently favor certain groups, prompting new questions about how to audit lending algorithms for potentially discriminatory behavior. Building on prior theoretical work, we introduce a profit-based measure of lending discrimination in loan pricing. Applying our approach to approximately 80,000 personal loans from a major U.S. fintech platform, we find that loans made to men and Black borrowers yielded lower profits than loans to other groups, indicating that men and Black applicants benefited from relatively favorable lending decisions. We trace these disparities to miscalibration in the platform's underwriting model, which underestimates credit risk for Black borrowers and overestimates risk for women. We show that one could correct this miscalibration -- and the corresponding lending disparities -- by explicitly including race and gender in underwriting models, illustrating a tension between competing notions of fairness.
When Disclosure Pays: Evidence from the Over-The-Counter Markets 
SSRN Electronic Journal · 2025-01-01
preprintOpen access1st authorCorrespondingA Fractional Solution to a Stock Market Mystery
Financial Analysts Journal · 2025-05-21 · 1 citations
article1st authorPreferred Stock Liquidation Preferences
2025-01-01 · 1 citations
book-chapter1st authorCorrespondingA Profit-Based Measure of Lending Discrimination
arXiv (Cornell University) · 2025-12-23
preprintOpen accessAlgorithmic lending has transformed the consumer credit landscape, with complex machine learning models now commonly used to make or assist underwriting decisions. To comply with fair lending laws, these algorithms typically exclude legally protected characteristics, such as race and gender. Yet algorithmic underwriting can still inadvertently favor certain groups, prompting new questions about how to audit lending algorithms for potentially discriminatory behavior. Building on prior theoretical work, we introduce a profit-based measure of lending discrimination in loan pricing. Applying our approach to approximately 80,000 personal loans from a major U.S. fintech platform, we find that loans made to men and Black borrowers yielded lower profits than loans to other groups, indicating that men and Black applicants benefited from relatively favorable lending decisions. We trace these disparities to miscalibration in the platform's underwriting model, which underestimates credit risk for Black borrowers and overestimates risk for women. We show that one could correct this miscalibration -- and the corresponding lending disparities -- by explicitly including race and gender in underwriting models, illustrating a tension between competing notions of fairness.
Navigating the Murky World of Hidden Liquidity
SSRN Electronic Journal · 2024-01-01 · 1 citations
preprintOpen access1st authorCorrespondingRed Teaming Large Language Models in Medicine: Real-World Insights on Model Behavior
medRxiv (Cold Spring Harbor Laboratory) · 2024 · 9 citations
- Computer Science
- Artificial Intelligence
- Political Science
0. Abstract Background The integration of large language models (LLMs) in healthcare offers immense opportunity to streamline healthcare tasks, but also carries risks such as response accuracy and bias perpetration. To address this, we conducted a red-teaming exercise to assess LLMs in healthcare and developed a dataset of clinically relevant scenarios for future teams to use. Methods We convened 80 multi-disciplinary experts to evaluate the performance of popular LLMs across multiple medical scenarios. Teams composed of clinicians, medical and engineering students, and technical professionals stress-tested LLMs with real world clinical use cases. Teams were given a framework comprising four categories to analyze for inappropriate responses: Safety, Privacy, Hallucinations, and Bias. Prompts were tested on GPT-3.5, GPT-4.0, and GPT-4.0 with the Internet. Six medically trained reviewers subsequently reanalyzed the prompt-response pairs, with dual reviewers for each prompt and a third to resolve discrepancies. This process allowed for the accurate identification and categorization of inappropriate or inaccurate content within the responses. Results There were a total of 382 unique prompts, with 1146 total responses across three iterations of ChatGPT (GPT-3.5, GPT-4.0, GPT-4.0 with Internet). 19.8% of the responses were labeled as inappropriate, with GPT-3.5 accounting for the highest percentage at 25.7% while GPT-4.0 and GPT-4.0 with internet performing comparably at 16.2% and 17.5% respectively. Interestingly, 11.8% of responses were deemed appropriate with GPT-3.5 but inappropriate in updated models, highlighting the ongoing need to evaluate evolving LLMs. Conclusion The red-teaming exercise underscored the benefits of interdisciplinary efforts, as this collaborative model fosters a deeper understanding of the potential limitations of LLMs in healthcare and sets a precedent for future red teaming events in the field. Additionally, we present all prompts and outputs as a benchmark for future LLM model evaluations. 1-2 Sentence Description As a proof-of-concept, we convened an interactive “red teaming” workshop in which medical and technical professionals stress-tested popular large language models (LLMs) through publicly available user interfaces on clinically relevant scenarios. Results demonstrate a significant proportion of inappropriate responses across GPT-3.5, GPT-4.0, and GPT-4.0 with Internet (25.7%, 16.2%, and 17.5%, respectively) and illustrate the valuable role that non-technical clinicians can play in evaluating models.
Equity Dilution in Venture Capital Finance After Brookfield Asset Mgmt., Inc. v. Rosson
SSRN Electronic Journal · 2024-01-01
preprintOpen access1st authorCorrespondingTiny trades, big questions: Fractional shares
Journal of Financial Economics · 2024-05-28 · 13 citations
articleOpen access1st authorThis paper investigates fractional share trading. We develop a latency-based method for identifying a large sample of fractional share trades. We find that high-priced stocks, meme stocks, IPOs, SPACs, and popular retail stocks exhibit considerable numbers of these tiny trades. We surmise that this reflects dollar-based order entry, with many tiny trades being fractional components of larger orders. We show that our fractional trade measure is predictive of future liquidity and volatility, suggesting a new metric to capture the information in retail trades. We identify how data and reporting protocols preclude knowing the extent of fractional share trading, inflate volume data, and provide censured samples of these off-exchange trades.
Corporate Social Responsibility through Shareholder Governance
SSRN Electronic Journal · 2023-01-01 · 8 citations
articleOpen access1st authorCorresponding
Frequent coauthors
- 6 shared
L. Nanis
Stanford University
- 6 shared
Kenneth M. Sancier
Menlo School
- 6 shared
Angel Sanjurjo
- 6 shared
F. A. Halden
Fairfield Crystal Technology (United States)
- 5 shared
Paul J. Jorgensen
SRI International
- 5 shared
V. Kapur
- 4 shared
P.R. Gage
- 4 shared
J. W. Fowler
UNSW Sydney
Labs
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