Dual embodied-symbolic concept representations are the foundation for deep learning and symbolic AI integration. We discuss the use of dual embodied-symbolic concept representations for molecular graph representation learning, specifically with exemplar-based contrastive self-supervised learning (SSL). The embodied representations are learned from molecular graphs, and the symbolic representations are learned from the corresponding Chemical knowledge graph (KG). We use the Chemical KG to enhance molecular graphs with symbolic (semantic) knowledge and generate their augmented molecular graphs. We treat a molecular graph and its semantically augmented molecular graph as exemplars of the same semantic class, and use the pairs as positive pairs in exemplar-based contrastive SSL.
翻译:双体表层的表层是深层学习和象征性的AI集成的基础。我们讨论了分子图表层学习使用双表层的表层概念表示,尤其是与以实例为基础的对比性自我监督学习(SSL)一起讨论。表层表层的表层是从分子图中学习的,符号表层是从相应的化学知识图(KG)中学习的。我们用化学KG来用符号(Semic)知识加强分子图,并生成其增强的分子图。我们把分子图及其语义扩增分子图作为同一语义类的外表层,并将配对作为正配方用于基于实例的对比性 SLSL。