Title
Massively Multitask Networks for Drug Discovery.
Abstract
Massively multitask neural architectures provide a learning framework for drug discovery that synthesizes information from many distinct biological sources. To train these architectures at scale, we gather large amounts of data from public sources to create a dataset of nearly 40 million measurements across more than 200 biological targets. We investigate several aspects of the multitask framework by performing a series of empirical studies and obtain some interesting results: (1) massively multitask networks obtain predictive accuracies significantly better than single-task methods, (2) the predictive power of multitask networks improves as additional tasks and data are added, (3) the total amount of data and the total number of tasks both contribute significantly to multitask improvement, and (4) multitask networks afford limited transferability to tasks not in the training set. Our results underscore the need for greater data sharing and further algorithmic innovation to accelerate the drug discovery process.
Year
Venue
DocType
2015
CoRR
Journal
Volume
Citations 
PageRank 
abs/1502.02072
43
2.65
References 
Authors
6
6
Name
Order
Citations
PageRank
Bharath Ramsundar1432.99
Steven M. Kearnes21126.72
Patrick Riley31005.88
Dale Webster4432.65
David E. Konerding5432.65
Vijay S. Pande6432.99