Baseline Result
"Baseline results" in scientific research refer to the performance of established methods or models on a given task or dataset, providing a benchmark for evaluating novel approaches. Current research focuses on establishing these baselines across diverse fields, from image restoration and genotype imputation to natural language processing and multimodal interaction analysis, often employing deep learning models like transformers and convolutional neural networks. The availability of robust baselines is crucial for fostering rigorous comparisons, facilitating objective evaluation of new algorithms, and ultimately accelerating progress within specific scientific domains and their practical applications.
Papers
An Annotated Dataset of Errors in Premodern Greek and Baselines for Detecting Them
Creston Brooks, Johannes Haubold, Charlie Cowen-Breen, Jay White, Desmond DeVaul, Frederick Riemenschneider, Karthik Narasimhan, Barbara Graziosi
Can LLMs be Scammed? A Baseline Measurement Study
Udari Madhushani Sehwag, Kelly Patel, Francesca Mosca, Vineeth Ravi, Jessica Staddon
CMOB: Large-Scale Cancer Multi-Omics Benchmark with Open Datasets, Tasks, and Baselines
Ziwei Yang, Rikuto Kotoge, Zheng Chen, Xihao Piao, Yasuko Matsubara, Yasushi Sakurai
Towards Student Actions in Classroom Scenes: New Dataset and Baseline
Zhuolin Tan, Chenqiang Gao, Anyong Qin, Ruixin Chen, Tiecheng Song, Feng Yang, Deyu Meng