Active Deep Kernel Learning of Molecular Properties: Realizing Dynamic Structural Embeddings
Abstract
Deep Kernel Learning (DKL) is used in an active learning approach to explore molecular properties in the QM9 dataset, uncovering key properties and unexplored regions.
As vast databases of chemical identities become increasingly available, the challenge shifts to how we effectively explore and leverage these resources to study molecular properties. This paper presents an active learning approach for molecular discovery using Deep Kernel Learning (DKL), demonstrated on the QM9 dataset. DKL links structural embeddings directly to properties, creating organized latent spaces that prioritize relevant property information. By iteratively recalculating embedding vectors in alignment with target properties, DKL uncovers concentrated maxima representing key molecular properties and reveals unexplored regions with potential for innovation. This approach underscores DKL's potential in advancing molecular research and discovery.
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