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Deep-learning: investigating deep neural networks hyper-parameters and comparison of performance to shallow methods for modeling bioactivity data

机译:深度学习:研究深度神经网络的超参数并将性能与浅层方法进行生物活性数据建模的比较

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摘要

BackgroundIn recent years, research in artificial neural networks has resurged, now under the deep-learning umbrella, and grown extremely popular. Recently reported success of DL techniques in crowd-sourced QSAR and predictive toxicology competitions has showcased these methods as powerful tools in drug-discovery and toxicology research. The aim of this work was dual, first large number of hyper-parameter configurations were explored to investigate how they affect the performance of DNNs and could act as starting points when tuning DNNs and second their performance was compared to popular methods widely employed in the field of cheminformatics namely Naïve Bayes, k-nearest neighbor, random forest and support vector machines. Moreover, robustness of machine learning methods to different levels of artificially introduced noise was assessed. The open-source Caffe deep-learning framework and modern NVidia GPU units were utilized to carry out this study, allowing large number of DNN configurations to be explored.
机译:背景技术近年来,在深度学习的保护下,人工神经网络的研究不断涌现,并且变得非常受欢迎。最近报道的DL技术在众包QSAR和预测毒理学竞赛中的成功展示了这些方法作为药物发现和毒理学研究的有力工具。这项工作的目的是双重的,首先探索大量的超参数配置,以研究它们如何影响DNN的性能,并可以作为调整DNN的起点,其次,将其性能与该领域广泛使用的流行方法进行比较化学信息学,即朴素贝叶斯,k近邻,随机森林和支持向量机。此外,评估了机器学习方法对不同水平的人工引入噪声的鲁棒性。利用开源Caffe深度学习框架和现代的NVidia GPU单元来进行这项研究,从而可以探索大量的DNN配置。

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