FinRegLab in the News
Should we trust the credit decisions provided by machine learning models?
www.suerf.org
“The use of Machine Learning (ML) models is gaining traction in finance due to their better predictive capacity compared to traditional statistical techniques…One of the use cases with greater potential is its application to credit underwriting and scoring, since by having better predictive capacity, ML models allow better estimates of the probability of default and therefore could result in more accurate credit scores. But this improvement in predictive performance does not come without risk.”
“Some fintechs think including more data and analyzing it with more advanced algorithms could solve the problem. Others say it’s time to build whole new systems.”
Speaking Engagements & Conferences
Exploring the Frontiers of ML Fairness: Insights from Consumer Lending
www.nccoe.nist.govSpeaking Engagements & Conferences
How non-traditional data sources are transforming financial services
app.swapcard.com
“Artificial intelligence and machine learning analyses are driving critical decisions impacting our lives and the economic structure of our society. These complex analytical techniques—powered by sophisticated math, computational power, and often vast amounts of data—are deployed in a variety of critical applications, from making healthcare decisions to evaluating job applications to informing parole and probation decisions to determining eligibility and pricing for insurance and other financial services.”
Speaking Engagements & Conferences
Technology as the New Frontier for an Inclusive Economy
nationalfairhousing.orgSpeaking Engagements & Conferences
Project REACh Financial Inclusion Symposium 2022
www.occ.treas.govSpeaking Engagements & Conferences
Artificial intelligence: Are black boxes necessarily brick walls?
web.cvent.comSpeaking Engagements & Conferences