Comparative Study
Comparative studies are a cornerstone of scientific advancement, rigorously evaluating different approaches to solve a problem or understand a phenomenon. Current research focuses on comparing various machine learning models (e.g., CNNs, Transformers, LLMs, and GANs) across diverse applications, including image classification, natural language processing, and optimization problems. These comparisons often involve analyzing the impact of different hyperparameters, data augmentation techniques, and training strategies on model performance and efficiency, leading to improved algorithms and more effective solutions. The insights gained from these studies are crucial for advancing both theoretical understanding and practical applications across numerous scientific disciplines and industrial sectors.
Papers
Kolmogorov-Arnold Networks in Low-Data Regimes: A Comparative Study with Multilayer Perceptrons
Farhad Pourkamali-Anaraki
A Comparative Study of Open Source Computer Vision Models for Application on Small Data: The Case of CFRP Tape Laying
Thomas Fraunholz, Dennis Rall, Tim Köhler, Alfons Schuster, Monika Mayer, Lars Larsen
Applied Federated Model Personalisation in the Industrial Domain: A Comparative Study
Ilias Siniosoglou, Vasileios Argyriou, George Fragulis, Panagiotis Fouliras, Georgios Th. Papadopoulos, Anastasios Lytos, Panagiotis Sarigiannidis
ChatGPT's Potential in Cryptography Misuse Detection: A Comparative Analysis with Static Analysis Tools
Ehsan Firouzi, Mohammad Ghafari, Mike Ebrahimi
AI-Driven Intrusion Detection Systems (IDS) on the ROAD dataset: A Comparative Analysis for automotive Controller Area Network (CAN)
Lorenzo Guerra, Linhan Xu, Pavlo Mozharovskyi, Paolo Bellavista, Thomas Chapuis, Guillaume Duc, Van-Tam Nguyen
Improving Extraction of Clinical Event Contextual Properties from Electronic Health Records: A Comparative Study
Shubham Agarwal, Thomas Searle, Mart Ratas, Anthony Shek, James Teo, Richard Dobson