Michael Greenstone
mgreenst@uchicago.edu
773-702-8250
General Inquiries
Christine Spencer: christines1@uchicago.edu
Media Inquiries
Vicki Ekstrom High: vekstrom@uchicago.edu
With the U.S. Environmental Protection Agency, we developed a machine learning model to predict sites where inspections would uncover severe violations of hazardous waste regulations. We estimate that using our model to target inspections will increase the “hit rate” by 46%. As is often the case, the model’s data are highly selected (representing about ~2% of sites), suggesting that classic selection bias concerns make our estimate’s relevance to the full population unknown. We therefore conducted a national field test of the model’s versus the EPA’s inspection targets; the model’s relative performance was even better, increasing the hit rate by 79%.
Non-profit using the power of compliance markets to reduce + remove CO2 emissions, while supporting CDR tech innovation.
Accelerating organizations’ ability to achieve verifiable, scalable, and immediate carbon reduction + ultimate removal.