ToolBoxSF: Robustly interrogating machine learning-based scoring functions: what are they learning?
收藏NIAID Data Ecosystem2026-05-01 收录
下载链接:
https://zenodo.org/record/8410135
下载链接
链接失效反馈官方服务:
资源简介:
This Zenodo repository provides comprehensive resources for the pre-print research paper titled "Robustly interrogating machine learning-based scoring functions: what are they learning?" Our collection includes Singularity containers containing pre-trained models, benchmark datasets, and training/test CSV files, offering valuable insights into the inner workings of machine learning-based scoring functions.
Key Components:
Singularity Containers:
Machine Learning Models: Explore state-of-the-art scoring models used in the study, enabling reproducibility and in-depth analysis.
Environment Setup: Simplify model deployment and experimentation by utilizing our pre-configured environments.
Benchmark Datasets:
Curated benchmark datasets used in the pre-print, facilitating validation and evaluation of scoring functions.
Training and Test CSV Files:
Training and test data in CSV format, along with associated metadata.
Facilitate model testing and comparison using the provided data.
This Zenodo collection is a valuable resource for researchers, data scientists, and machine learning enthusiasts seeking to replicate the study's findings, explore model behaviors, and conduct further investigations into machine learning-based scoring functions. Detailed documentation and usage instructions are included to support your research efforts at https://github.com/guydurant/toolboxsf.
Citation Information: Please cite this Zenodo repository when using our resources in your work, and consider acknowledging the original pre-print when publishing research based on these materials.
创建时间:
2023-11-08



