Oct 24, 2025
Paper presentation at the RISE AI Conference, University of Notre Dame
On Oct 7, Tom Dudda presented a recent working paper on „The Perks and Perils of Machine Learning in Business and Economic Research“ (joint work with Lars Hornuf) at the RISE AI Conference held at the Lucy Family Institute for Data & Society of the University of Notre Dame (IN, USA).
The conference is about responsible, inclusive, safe, and ethical AI. In their paper, Tom Dudda and Lars Hornuf examine responsible and ethical research practices when using machine learning models to adress predictive research questions. They screen over 50k academic publications in leading business and economic journals for articles related to machine learning. They find that predictive machine learning studies are often intransparent about the relative predictive performance compared to less-complex and less-costly traditional statistical models. These studies receive fewer citations, arguably due to a less rigorous analysis.
Because of opaque reporting practices, it’s often unclear whether the predictive gains of more complex models justify their increased costs. To better evaluate their true economic value, the paper advocates for standardized and transparent reporting that relates a model’s predictive performance to its costs—financially, environmentally, and in terms of a loss in explainability and interpretability.
You can access the working paper here: https://www.econstor.eu/handle/10419/314760