Strong Baseline
"Strong baseline" research focuses on developing simple, yet highly effective models that serve as robust benchmarks for evaluating more complex approaches across diverse machine learning tasks. Current research emphasizes careful evaluation methodologies, exploring various model architectures (including transformers, graph neural networks, and convolutional neural networks) and feature engineering techniques to achieve competitive performance with minimal complexity. These baselines are crucial for ensuring rigorous comparisons and preventing overestimation of advancements in the field, ultimately leading to more reliable and efficient machine learning solutions for various applications.
Papers
A Hard-to-Beat Baseline for Training-free CLIP-based Adaptation
Zhengbo Wang, Jian Liang, Lijun Sheng, Ran He, Zilei Wang, Tieniu Tan
MobileVLM V2: Faster and Stronger Baseline for Vision Language Model
Xiangxiang Chu, Limeng Qiao, Xinyu Zhang, Shuang Xu, Fei Wei, Yang Yang, Xiaofei Sun, Yiming Hu, Xinyang Lin, Bo Zhang, Chunhua Shen