Empirical Comparison
Empirical comparison in scientific research involves systematically evaluating the performance of different models, algorithms, or methods across various datasets and metrics to identify optimal approaches for specific tasks. Current research focuses on comparing diverse architectures, including deep learning models (e.g., convolutional and recurrent neural networks, generative models), classical machine learning algorithms (e.g., Naive Bayes, Random Forests), and even novel approaches like spiking neural networks. These comparisons are crucial for advancing methodological understanding, informing best practices, and ultimately improving the reliability and efficiency of applications across diverse fields, from autonomous driving to medical diagnosis.
Papers
An Empirical Comparison of Generative Approaches for Product Attribute-Value Identification
Kassem Sabeh, Robert Litschko, Mouna Kacimi, Barbara Plank, Johann Gamper
Look Ahead or Look Around? A Theoretical Comparison Between Autoregressive and Masked Pretraining
Qi Zhang, Tianqi Du, Haotian Huang, Yifei Wang, Yisen Wang