H.C. Akpati, P. Nordlander, et al.
Surface Science
Chemical representations derived from deep learning are emerging as a powerful tool in areas such as drug discovery and materials innovation. Currently, this methodology has three major limitations-the cost of representation generation, risk of inherited bias, and the requirement for large amounts of data. We propose the use of multi-task learning in tandem with transfer learning to address these limitations directly. In order to avoid introducing unknown bias into multi-task learning through the task selection itself, we calculate task similarity through pairwise task affinity, and use this measure to programmatically select tasks. We test this methodology on several real-world data sets to demonstrate its potential for execution in complex and low-data environments. Finally, we utilise the task similarity to further probe the expressiveness of the learned representation through a comparison to a commonly used cheminformatics fingerprint, and show that the deep representation is able to capture more expressive task-based information.
H.C. Akpati, P. Nordlander, et al.
Surface Science
A. Skumanich, M. Jurich, et al.
OTF 1993
M.L. Hildner, K. Johnson, et al.
Surface Science
M.E. López-Morales, R.J. Savoy, et al.
Journal of Materials Research