Practice Mode
"Practice mode" in machine learning and related fields encompasses the development and application of methods to improve model performance and robustness through iterative refinement and adaptation. Current research focuses on bridging the gap between theoretical guarantees and practical performance, exploring techniques like continual learning, transfer learning, and reinforcement learning with various model architectures (e.g., neural networks, graph neural networks, large language models). This research is significant because it addresses the limitations of traditional training paradigms, leading to more efficient, adaptable, and reliable AI systems across diverse applications, from language processing and image recognition to robotics and personalized education.
Papers
Rethinking Explainability as a Dialogue: A Practitioner's Perspective
Himabindu Lakkaraju, Dylan Slack, Yuxin Chen, Chenhao Tan, Sameer Singh
The Disagreement Problem in Explainable Machine Learning: A Practitioner's Perspective
Satyapriya Krishna, Tessa Han, Alex Gu, Javin Pombra, Shahin Jabbari, Steven Wu, Himabindu Lakkaraju