Markov State Models: From an Art to a Science

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[1] Husic, Brooke E.
[2] Pande, Vijay S.
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The authors are grateful to Muneeb Sultan; Fat´ ima Pardo-Avila; Cathrine Bergh; Greg Bowman; and Frank Noé for manuscript feedback. We acknowledge the National Institutes of Health under No. NIH R01-GM62868 for funding;
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