A multi-modal neural network for learning cis and trans regulation of stress response in yeast.
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Avanti Shrikumar | Anshul Kundaje | Stephen B. Montgomery | Tyler C. Shimko | Boxiang Liu | Nadine Hussami | Scott A. Longwell | Salil Bhate
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