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Deep learning-based techniques for pre-training deep convolutional neural networks

机译:基于深度学习的技术来预训练深度卷积神经网络

摘要

#$%^&*AU2019272062A120200430.pdf#####39 Atty. Docket No. ILLM 10 10-2/IP-l'734-PCT ABSTRACT The technology disclosed includes systems and methods to reduce overfitting of neural networkimplemented models that process sequences of amino acids and accompanying position frequency matrices. The system generates supplemental training example sequence pairs, labelled benign, that include a start location, through a target amino acid location, to an end location. A supplemental sequence pair supplements a pathogenic or benign missense training example sequence pair. It has identical amino acids in a reference and an alternate sequence of amino acids. The system includes logic to input with each supplemental sequence pair a supplemental training position frequency matrix (PFM) that is identical to the PFM of the benign or pathogenic missense at the matching start and end location. The system includes logic to attenuate the training influence of the training PFMs during training the neural network-inplemented model by including supplemental training example PFMs in the training data. {00696033.DOCX } 39
机译:#$%^&* AU2019272062A120200430.pdf #####39阿蒂案号ILLM 10 10-2 / IP-l'734-PCT抽象公开的技术包括减少神经网络过度拟合的系统和方法用于处理氨基酸序列和相关位置频率矩阵的模型。的系统会生成补充训练示例序列对,标记为良性,包括开始位置,通过靶氨基酸位置到达末端位置。补充序列对补充病原体或良性错义训练示例序列对。它的参考氨基酸和替代氨基酸相同氨基酸序列。该系统包括用每个补充序列对输入补充的逻辑训练位置频率矩阵(PFM)与良性或致病性错义的PFM相同匹配的开始和结束位置。该系统包括用于衰减训练PFM的训练影响的逻辑在训练神经网络补充模型的过程中,将补充训练示例PFM包括在训练数据。{00696033.DOCX} 39

著录项

  • 公开/公告号AU2019272062A1

    专利类型

  • 公开/公告日2020-04-30

    原文格式PDF

  • 申请/专利权人 ILLUMINA INC.;

    申请/专利号AU20190272062

  • 申请日2019-05-09

  • 分类号G06K9/62;G06N3/08;

  • 国家 AU

  • 入库时间 2022-08-21 11:11:41

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