毒物预测的本体预训练

Martin Glauer, F. Neuhaus, T. Mossakowski, J. Hastings
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引用次数: 0

摘要

将人类知识整合到神经网络中有可能提高它们的鲁棒性和可解释性。我们开发了一种新颖的方法,将本体的知识集成到Transformer网络的结构中,我们称之为本体预训练:我们训练网络来预测本体类的成员资格,作为将本体结构嵌入网络的一种方式,然后针对特定的预测任务对网络进行微调。我们将这种方法应用于一个基于分子结构预测小分子潜在毒性的案例研究,这是生命科学化学中机器学习的一项具有挑战性的任务。我们的方法改进了最先进的技术,而且还有一些额外的好处。首先,我们能够证明,在进行本体预训练的预测时,模型学会了将注意力集中在更有意义的化学基团上,从而为更强的鲁棒性和可解释性铺平了道路。其次,本体预训练后的训练时间减少,表明模型在进行本体预训练后比不进行本体预训练时更能了解毒性预测的重要因素。该策略作为一种神经符号方法在神经网络中嵌入有意义的语义,具有普遍的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ontology Pre-training for Poison Prediction
Integrating human knowledge into neural networks has the potential to improve their robustness and interpretability. We have developed a novel approach to integrate knowledge from ontologies into the structure of a Transformer network which we call ontology pre-training: we train the network to predict membership in ontology classes as a way to embed the structure of the ontology into the network, and subsequently fine-tune the network for the particular prediction task. We apply this approach to a case study in predicting the potential toxicity of a small molecule based on its molecular structure, a challenging task for machine learning in life sciences chemistry. Our approach improves on the state of the art, and moreover has several additional benefits. First, we are able to show that the model learns to focus attention on more meaningful chemical groups when making predictions with ontology pre-training than without, paving a path towards greater robustness and interpretability. Second, the training time is reduced after ontology pre-training, indicating that the model is better placed to learn what matters for toxicity prediction with the ontology pre-training than without. This strategy has general applicability as a neuro-symbolic approach to embed meaningful semantics into neural networks.
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