Zhou Jiajun, Yang Yijie, Mroz Austin M, Jelfs Kim E
Department of Chemistry, Molecular Sciences Research Hub, Imperial College London White City Campus, Wood Lane London W12 0BZ UK
I-X Centre for AI in Science, Imperial College London White City Campus, Wood Lane London W12 0BZ UK.
Digit Discov. 2024 Nov 28;4(1):149-160. doi: 10.1039/d4dd00236a. eCollection 2025 Jan 15.
Polymers play a crucial role in a wide array of applications due to their diverse and tunable properties. Establishing the relationship between polymer representations and their properties is crucial to the computational design and screening of potential polymers machine learning. The quality of the representation significantly influences the effectiveness of these computational methods. Here, we present a self-supervised contrastive learning paradigm, PolyCL, for learning robust and high-quality polymer representation without the need for labels. Our model combines explicit and implicit augmentation strategies for improved learning performance. The results demonstrate that our model achieves either better, or highly competitive, performances on transfer learning tasks as a feature extractor without an overcomplicated training strategy or hyperparameter optimisation. Further enhancing the efficacy of our model, we conducted extensive analyses on various augmentation combinations used in contrastive learning. This led to identifying the most effective combination to maximise PolyCL's performance.
聚合物因其多样且可调的性质,在众多应用中发挥着关键作用。建立聚合物表征与其性质之间的关系,对于通过机器学习进行潜在聚合物的计算设计和筛选至关重要。表征的质量显著影响这些计算方法的有效性。在此,我们提出一种自监督对比学习范式PolyCL,用于在无需标签的情况下学习稳健且高质量的聚合物表征。我们的模型结合了显式和隐式增强策略以提高学习性能。结果表明,作为特征提取器,我们的模型在迁移学习任务上实现了更好或极具竞争力的性能,而无需过于复杂的训练策略或超参数优化。为进一步提高我们模型的效能,我们对对比学习中使用的各种增强组合进行了广泛分析。这使得我们能够确定最有效的组合,以最大化PolyCL的性能。