webinar register page

Webinar banner
Data Bias and its Impact on Machine Learning
Data-driven algorithms serve as the central power in many applications that have multifaceted effects on people’s lives. These algorithms learn patterns from the input data, and they inevitably inherit and amplify issues with the data. Many of these issues trace back to inequality in our society. Dr. Ke Yang, a postdoc fellow at the University of Massachusetts Amherst, will join MIT Horizon to discuss the types of data bias that cause machine-learning models to produce unfair and untrustworthy predictions and techniques to mitigate those unfair predictions.

Nov 30, 2022 11:00 AM in Eastern Time (US and Canada)

Webinar logo
Webinar is over, you cannot register now. If you have any questions, please contact Webinar host: MIT Horizon Events.