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
Assessing the Impact of Conspiracy Theories Using Large Language Models
Bohan Jiang, Dawei Li, Zhen Tan, Xinyi Zhou, Ashwin Rao, Kristina Lerman, H. Russell Bernard, Huan Liu
Impact of Privacy Parameters on Deep Learning Models for Image Classification
Basanta Chaulagain
Exploring the Impact of Synthetic Data on Human Gesture Recognition Tasks Using GANs
George Kontogiannis, Pantelis Tzamalis, Sotiris Nikoletseas
Flattering to Deceive: The Impact of Sycophantic Behavior on User Trust in Large Language Model
María Victoria Carro
Shaping AI's Impact on Billions of Lives
Mariano-Florentino Cuéllar, Jeff Dean, Finale Doshi-Velez, John Hennessy, Andy Konwinski, Sanmi Koyejo, Pelonomi Moiloa, Emma Pierson, David Patterson
The Impact of Featuring Comments in Online Discussions
Cedric Waterschoot, Ernst van den Hemel, Antal van den Bosch
Analyzing the Impact of AI Tools on Student Study Habits and Academic Performance
Ben Ward, Deepshikha Bhati, Fnu Neha, Angela Guercio
Evaluating the Impact of Data Augmentation on Predictive Model Performance
Valdemar Švábenský, Conrad Borchers, Elizabeth B. Cloude, Atsushi Shimada
Impact of Data Snooping on Deep Learning Models for Locating Vulnerabilities in Lifted Code
Gary A. McCully, John D. Hastings, Shengjie Xu