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
Local to Global: Learning Dynamics and Effect of Initialization for Transformers
Ashok Vardhan Makkuva, Marco Bondaschi, Chanakya Ekbote, Adway Girish, Alliot Nagle, Hyeji Kim, Michael Gastpar
Understanding the Impact of Negative Prompts: When and How Do They Take Effect?
Yuanhao Ban, Ruochen Wang, Tianyi Zhou, Minhao Cheng, Boqing Gong, Cho-Jui Hsieh
Robots Have Been Seen and Not Heard: Effects of Consequential Sounds on Human-Perception of Robots
Aimee Allen, Tom Drummond, Dana Kulic
Exploring Effects of Hyperdimensional Vectors for Tsetlin Machines
Vojtech Halenka, Ahmed K. Kadhim, Paul F. A. Clarke, Bimal Bhattarai, Rupsa Saha, Ole-Christoffer Granmo, Lei Jiao, Per-Arne Andersen
Effects of Exponential Gaussian Distribution on (Double Sampling) Randomized Smoothing
Youwei Shu, Xi Xiao, Derui Wang, Yuxin Cao, Siji Chen, Jason Xue, Linyi Li, Bo Li
Analyzing the Effect of Combined Degradations on Face Recognition
Erdi Sarıtaş, Hazım Kemal Ekenel