Less is more: Sampling chemical space with active learning

scientific article published on 01 June 2018

Less is more: Sampling chemical space with active learning is …
instance of (P31):
scholarly articleQ13442814

External links are
P819ADS bibcode2018JChPh.148x1733S
P818arXiv ID1801.09319
P356DOI10.1063/1.5023802
P698PubMed publication ID29960353

P50authorOlexandr IsayevQ42959384
Ben NebgenQ80891454
Justin S SmithQ88070854
Adrian RoitbergQ88070857
Nicholas LubbersQ89362885
P2860cites workDrugBank 4.0: shedding new light on drug metabolismQ24568341
The EBI RDF platform: linked open data for the life sciencesQ28305672
P433issue24
P304page(s)241733
P577publication date2018-06-01
P1433published inJournal of Chemical PhysicsQ900472
P1476titleLess is more: Sampling chemical space with active learning
P478volume148

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