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
Unlocking the Potential of Large Language Models for Clinical Text Anonymization: A Comparative Study
David Pissarra, Isabel Curioso, João Alveira, Duarte Pereira, Bruno Ribeiro, Tomás Souper, Vasco Gomes, André V. Carreiro, Vitor Rolla
Comparative Study of Neighbor-based Methods for Local Outlier Detection
Zhuang Qi, Junlin Zhang, Xiaming Chen, Xin Qi
Evaluating and Modeling Social Intelligence: A Comparative Study of Human and AI Capabilities
Junqi Wang, Chunhui Zhang, Jiapeng Li, Yuxi Ma, Lixing Niu, Jiaheng Han, Yujia Peng, Yixin Zhu, Lifeng Fan
Exploring Ordinality in Text Classification: A Comparative Study of Explicit and Implicit Techniques
Siva Rajesh Kasa, Aniket Goel, Karan Gupta, Sumegh Roychowdhury, Anish Bhanushali, Nikhil Pattisapu, Prasanna Srinivasa Murthy
Comparative Analysis of Predicting Subsequent Steps in H\'enon Map
Vismaya V S, Alok Hareendran, Bharath V Nair, Sishu Shankar Muni, Martin Lellep
Bridging the gap in online hate speech detection: a comparative analysis of BERT and traditional models for homophobic content identification on X/Twitter
Josh McGiff, Nikola S. Nikolov