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
A Comparative Study of Image Restoration Networks for General Backbone Network Design
Xiangyu Chen, Zheyuan Li, Yuandong Pu, Yihao Liu, Jiantao Zhou, Yu Qiao, Chao Dong
Free-text Keystroke Authentication using Transformers: A Comparative Study of Architectures and Loss Functions
Saleh Momeni, Bagher BabaAli
Comparative Analysis of Optimization Strategies for K-means Clustering in Big Data Contexts: A Review
Ravil Mussabayev, Rustam Mussabayev
Gender-Based Comparative Study of Type 2 Diabetes Risk Factors in Kolkata, India: A Machine Learning Approach
Rahul Jain, Anoushka Saha, Gourav Daga, Durba Bhattacharya, Madhura Das Gupta, Sourav Chowdhury, Suparna Roychowdhury
Comparative Study and Framework for Automated Summariser Evaluation: LangChain and Hybrid Algorithms
Bagiya Lakshmi S, Sanjjushri Varshini R, Rohith Mahadevan, Raja CSP Raman
Comparative Analysis of Imbalanced Malware Byteplot Image Classification using Transfer Learning
Jayasudha M, Ayesha Shaik, Gaurav Pendharkar, Soham Kumar, Muhesh Kumar B, Sudharshanan Balaji
On the Cognition of Visual Question Answering Models and Human Intelligence: A Comparative Study
Liben Chen, Long Chen, Tian Ellison-Chen, Zhuoyuan Xu