Intl. Conf. on Research in Computational Molecular Biology, RECOMB 2017


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Title: A Bayesian Active Learning Experimental Design for Inferring Signaling Networks
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Authors: Robert Osazuwa Ness
  • Purdue University, West Lafayette 47907, USA, Department of Statistics
  • Northeastern University, Boston 02115, USA, College of Science
  • Northeastern University, Boston 02115, USA, College of Computer and Information Science
Karen Sachs
  • Stanford University, Palo Alto 94305, USA, School of Medicine
Parag Mallick
  • Stanford University, Palo Alto 94305, USA, School of Medicine
Olga Vitek
  • Northeastern University, Boston 02115, USA, College of Science
  • Northeastern University, Boston 02115, USA, College of Computer and Information Science
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NSF Award Numbers: 1054826
DBLP Key: conf/recomb/NessSMV17
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