Machine Learning Model
Machine learning models aim to create systems that can learn from data and make predictions or decisions without explicit programming. Current research emphasizes improving model accuracy, interpretability, and robustness, focusing on architectures like deep neural networks, decision tree ensembles, and transformer models, as well as exploring decentralized learning and techniques for mitigating biases and vulnerabilities. These advancements are crucial for diverse applications, ranging from optimizing resource management (e.g., smart irrigation) to improving healthcare diagnostics and enhancing the security and trustworthiness of AI systems.
Papers
Co(ve)rtex: ML Models as storage channels and their (mis-)applications
Md Abdullah Al Mamun, Quazi Mishkatul Alam, Erfan Shayegani, Pedram Zaree, Ihsen Alouani, Nael Abu-Ghazaleh
Hyperparameter Tuning Cookbook: A guide for scikit-learn, PyTorch, river, and spotPython
Thomas Bartz-Beielstein
Tabular Machine Learning Methods for Predicting Gas Turbine Emissions
Rebecca Potts, Rick Hackney, Georgios Leontidis
HeroLT: Benchmarking Heterogeneous Long-Tailed Learning
Haohui Wang, Weijie Guan, Jianpeng Chen, Zi Wang, Dawei Zhou
Multi-Objective Optimization of Performance and Interpretability of Tabular Supervised Machine Learning Models
Lennart Schneider, Bernd Bischl, Janek Thomas