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
Learning the Effects of Physical Actions in a Multi-modal Environment
Gautier Dagan, Frank Keller, Alex Lascarides
Effect of temporal resolution on the reproduction of chaotic dynamics via reservoir computing
Kohei Tsuchiyama, André Röhm, Takatomo Mihana, Ryoichi Horisaki, Makoto Naruse
Exploring the Effect of Multi-step Ascent in Sharpness-Aware Minimization
Hoki Kim, Jinseong Park, Yujin Choi, Woojin Lee, Jaewook Lee
The Effects of Character-Level Data Augmentation on Style-Based Dating of Historical Manuscripts
Lisa Koopmans, Maruf A. Dhali, Lambert Schomaker
The Effects of In-domain Corpus Size on pre-training BERT
Chris Sanchez, Zheyuan Zhang
The effects of gender bias in word embeddings on depression prediction
Gizem Sogancioglu, Heysem Kaya