Some experimental results on placement techniques
Maurice Hanan, Peter K. Wolff, et al.
DAC 1976
One of the biggest obstacles to successful polymer property prediction is an effective representation that accurately captures the sequence of repeat units in a polymer. Motivated by the success of data augmentation in computer vision and natural language processing, we explore augmenting polymer data by iteratively rearranging the molecular representation while preserving the correct connectivity, revealing additional substructural information that is not present in a single representation. We evaluate the effects of this technique on the performance of machine learning models trained on three polymer datasets and compare them to common molecular representations. Data augmentation does not yield significant improvements in machine learning property prediction performance compared to equivalent (non-augmented) representations. In datasets where the target property is primarily influenced by the polymer sequence rather than experimental parameters, this data augmentation technique provides molecular embedding with more information to improve property prediction accuracy.
Maurice Hanan, Peter K. Wolff, et al.
DAC 1976
Zohar Feldman, Avishai Mandelbaum
WSC 2010
Elena Cabrio, Philipp Cimiano, et al.
CLEF 2013
A. Gupta, R. Gross, et al.
SPIE Advances in Semiconductors and Superconductors 1990