Deep learning framework for material design space exploration using active transfer learning and data augmentation

Volume: 7, Issue: 1
Published: Sep 2, 2021
Abstract
Neural network-based generative models have been actively investigated as an inverse design method for finding novel materials in a vast design space. However, the applicability of conventional generative models is limited because they cannot access data outside the range of training sets. Advanced generative models that were devised to overcome the limitation also suffer from the weak predictive power on the unseen domain. In this study, we...
Paper Details
Title
Deep learning framework for material design space exploration using active transfer learning and data augmentation
Published Date
Sep 2, 2021
Volume
7
Issue
1
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