ICML 2021 IMLH workshop keynote
Presentation / Workshop
Mihaela van der Schaar will deliver a keynote talk at the Interpretable Machine Learning in Healthcare (IMLH) workshop at the 2021 International Conference on Machine Learning (ICML 2021), the leading international academic conference in machine learning.
Quantitative epistemology: conceiving a new human-machine partnership
Quantitative epistemology is a new and transformational area of research pioneered by our lab in Cambridge as a strand of machine learning aimed at understanding, supporting, and improving human decision-making. We are developing machine learning models that capture how humans acquire new information, how they pay attention to such information, how their beliefs may be represented, how their internal models may be structured, how these different levels of knowledge are leveraged in the form of actions, and how such knowledge is learned and updated over time. Because our approach is driven by observational data in studying knowledge as well as using machine learning methods for supporting and improving knowledge acquisition and its impact on decision-making, we call this “quantitative epistemology.”
Our methods are aimed at studying human decision-making, identifying potential suboptimalities in beliefs and decision processes (such as cognitive biases, selective attention, imperfect retention of past experience, etc.), and understanding risk attitudes and their implications for learning and decision-making. This would allow us to construct decision support systems that provide humans with information pertinent to their intended actions, their possible alternatives and counterfactual outcomes, as well as other evidence to empower better decision-making.
Location and local date/time
This event will take place online on July 23 at 06:30 PDT (14:30 BST).
About the event
This workshop, aims to bring together researchers in ML, computer vision, healthcare, medicine, NLP, and clinical fields to facilitate discussions including related challenges, definitions, formalisms, and evaluation protocols regarding interpretable medical machine intelligence.