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Comprehensive evaluation of deep learning architectures for prediction of DNA/RNA sequence binding specificities

机译:对DNA / RNA序列结合特异性预测的深度学习架构综合评价

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Motivation Deep learning architectures have recently demonstrated their power in predicting DNA- and RNA-binding specificity. Existing methods fall into three classes: Some are based on convolutional neural networks (CNNs), others use recurrent neural networks (RNNs) and others rely on hybrid architectures combining CNNs and RNNs. However, based on existing studies the relative merit of the various architectures remains unclear.
机译:动机深入学习架构最近展示了他们预测DNA和RNA结合特异性的力量。 现有方法分为三类:一些基于卷积神经网络(CNNS),其他方法使用经常性的神经网络(RNN)和其他依赖于组合CNN和RNN的混合架构。 然而,基于现有研究,各种架构的相对优点仍不清楚。

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