Mixed Effect
Mixed effects modeling investigates how different factors influence an outcome, accounting for both fixed and random effects. Current research focuses on understanding the impact of various factors across diverse applications, employing diverse models such as deep neural networks, logistic regression, and random feature models, often within the context of interpretability and bias mitigation. This field is crucial for advancing understanding in various domains, from improving AI systems and human-computer interaction to enhancing medical diagnoses and optimizing industrial processes.
Papers
Effect of Adaptation Rate and Cost Display in a Human-AI Interaction Game
Jason T. Isa, Bohan Wu, Qirui Wang, Yilin Zhang, Samuel A. Burden, Lillian J. Ratliff, Benjamin J. Chasnov
Investigating the effect of Mental Models in User Interaction with an Adaptive Dialog Agent
Lindsey Vanderlyn, Dirk Väth, Ngoc Thang Vu
Explanatory Model Monitoring to Understand the Effects of Feature Shifts on Performance
Thomas Decker, Alexander Koebler, Michael Lebacher, Ingo Thon, Volker Tresp, Florian Buettner
Studying the Effect of Audio Filters in Pre-Trained Models for Environmental Sound Classification
Aditya Dawn, Wazib Ansar
Discovering Long-Term Effects on Parameter Efficient Fine-tuning
Gaole Dai, Yiming Tang, Chunkai Fan, Qizhe Zhang, Zhi Zhang, Yulu Gan, Chengqing Zeng, Shanghang Zhang, Tiejun Huang
On the Effect of Purely Synthetic Training Data for Different Automatic Speech Recognition Architectures
Benedikt Hilmes, Nick Rossenbach, and Ralf Schlüter
Exploring the Effect of Dataset Diversity in Self-Supervised Learning for Surgical Computer Vision
Tim J. M. Jaspers, Ronald L. P. D. de Jong, Yasmina Al Khalil, Tijn Zeelenberg, Carolus H. J. Kusters, Yiping Li, Romy C. van Jaarsveld, Franciscus H. A. Bakker, Jelle P. Ruurda, Willem M. Brinkman, Peter H. N. De With, Fons van der Sommen