Simpler is Better: How Linear Prediction Tasks Improve
Transfer Learning in Chemical Autoencoders
Posted on 2020-04-24 - 15:33
Transfer learning
is a subfield of machine learning that leverages
proficiency in one or more prediction tasks to improve proficiency
in a related task. For chemical property prediction, transfer learning
models represent a promising approach for addressing the data scarcity
limitations of many properties by utilizing potentially abundant data
from one or more adjacent applications. Transfer learning models typically
utilize a latent variable that is common to several prediction tasks
and provides a mechanism for information exchange between tasks. For
chemical applications, it is still largely unknown how correlation
between the prediction tasks affects performance, the limitations
on the number of tasks that can be simultaneously trained in these
models before incurring performance degradation, and if transfer learning
positively or negatively affects ancillary model properties. Here
we investigate these questions using an autoencoder latent space as
a latent variable for transfer learning models for predicting properties
from the QM9 data set that have been supplemented with semiempirical
quantum chemistry calculations. We demonstrate that property prediction
can be counterintuitively improved by utilizing a simpler linear predictor
model, which has the effect of forcing the latent space to organize
linearly with respect to each property. In data scarce prediction
tasks, the transfer learning improvement is dramatic, whereas in data
rich prediction tasks, there appears to be little adverse impact of
transfer learning on prediction performance. The transfer learning
approach demonstrated here thus represents a highly advantageous supplement
to property prediction models with no downside in implementation.
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Iovanac, Nicolae
C.; Savoie, Brett M. (2020). Simpler is Better: How Linear Prediction Tasks Improve
Transfer Learning in Chemical Autoencoders. ACS Publications. Collection. https://doi.org/10.1021/acs.jpca.0c00042