Global Impact
Research on global impact examines how various factors influence the performance, fairness, and broader consequences of machine learning models and algorithms across diverse applications. Current investigations focus on understanding the effects of data characteristics (e.g., homophily, outliers, imbalanced classes), model architectures (e.g., CNNs, LLMs, GNNs), and training methodologies (e.g., regularization, transfer learning) on model behavior and outcomes. These studies are crucial for improving model robustness, fairness, and efficiency, ultimately leading to more reliable and beneficial applications in fields ranging from healthcare and autonomous systems to open-source software development and environmental monitoring. The ultimate goal is to develop more responsible and effective AI systems that minimize unintended consequences and maximize societal benefit.
Papers
A Study on the Impact of Face Image Quality on Face Recognition in the Wild
Na Zhang
Linear Regression on Manifold Structured Data: the Impact of Extrinsic Geometry on Solutions
Liangchen Liu, Juncai He, Richard Tsai
Adversarial Attacks on Image Classification Models: FGSM and Patch Attacks and their Impact
Jaydip Sen, Subhasis Dasgupta
Symmetric Neural-Collapse Representations with Supervised Contrastive Loss: The Impact of ReLU and Batching
Ganesh Ramachandra Kini, Vala Vakilian, Tina Behnia, Jaidev Gill, Christos Thrampoulidis
For Better or Worse: The Impact of Counterfactual Explanations' Directionality on User Behavior in xAI
Ulrike Kuhl, André Artelt, Barbara Hammer
Impact of Experiencing Misrecognition by Teachable Agents on Learning and Rapport
Yuya Asano, Diane Litman, Mingzhi Yu, Nikki Lobczowski, Timothy Nokes-Malach, Adriana Kovashka, Erin Walker
On Minimizing the Impact of Dataset Shifts on Actionable Explanations
Anna P. Meyer, Dan Ley, Suraj Srinivas, Himabindu Lakkaraju