
Unraveling learning characteristics of transformer models for molecular design
The learning characteristics of transformer based models for generative compound designs are studied using control calculations and careful manipulation of datasets.

The learning characteristics of transformer based models for generative compound designs are studied using control calculations and careful manipulation of datasets.

A protocol to calculate and compare exact Shapley values for support vector machine models with commonly used kernels and binary input features is developed.

A method for the exact calculation of Shapley Values for Support Vector Machines is introduced and tested for compound prediction tasks.
The prediction accuracy and uncertainty qunatification of deep neural networks and other control methods is compared using compound potency prediction tasks.