One- to Four-Dimensional Kernels for Virtual Screening and the Prediction of Physical, Chemical, and Biological Properties.
@inproceedings{Azencott2007OneTF, title={One- to Four-Dimensional Kernels for Virtual Screening and the Prediction of Physical, Chemical, and Biological Properties.}, author={Chlo{\'e}-Agathe Azencott and Alexandre Ksikes and Sanjay Joshua Swamidass and Jonathan H. Chen and Liva Ralaivola and Pierre Baldi}, year={2007} }
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