Consistent Comparison
Consistent comparison across diverse methods and datasets is a crucial aspect of many scientific fields, aiming to objectively evaluate and improve model performance and identify optimal approaches. Current research focuses on comparing various model architectures (e.g., convolutional neural networks, transformers, autoencoders) and algorithms (e.g., reinforcement learning, genetic programming) across different applications, including medical image analysis, natural language processing, and robotics. These comparative studies are essential for advancing methodological rigor, informing best practices, and ultimately improving the reliability and effectiveness of models in various scientific and practical domains.
Papers
The Comparison of Translationese in Machine Translation and Human Transation in terms of Translation Relations
Fan Zhou
InceptionTime vs. Wavelet -- A comparison for time series classification
Daniel Klenkert, Daniel Schaeffer, Julian Stauch
Implementation of the Principal Component Analysis onto High-Performance Computer Facilities for Hyperspectral Dimensionality Reduction: Results and Comparisons
E. Martel, R. Lazcano, J. Lopez, D. Madroñal, R. Salvador, S. Lopez, E. Juarez, R. Guerra, C. Sanz, R. Sarmiento
Harmful algal bloom forecasting. A comparison between stream and batch learning
Andres Molares-Ulloa, Elisabet Rocruz, Daniel Rivero, Xosé A. Padin, Rita Nolasco, Jesús Dubert, Enrique Fernandez-Blanco
Comparison of Conventional Hybrid and CTC/Attention Decoders for Continuous Visual Speech Recognition
David Gimeno-Gómez, Carlos-D. Martínez-Hinarejos
Comparison of Topic Modelling Approaches in the Banking Context
Bayode Ogunleye, Tonderai Maswera, Laurence Hirsch, Jotham Gaudoin, Teresa Brunsdon
Shape Manipulation of Bevel-Tip Needles for Prostate Biopsy Procedures: A Comparison of Two Resolved-Rate Controllers
Yanzhou Wang, Lidia Al-Zogbi, Jiawei Liu, Lauren Shepard, Ahmed Ghazi, Junichi Tokuda, Simon Leonard, Axel Krieger, Iulian Iordachita