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Learning structure in gene expression data using deep architectures, with an application to gene clustering

机译:使用深度架构学习基因表达数据中的结构,并将其应用于基因聚类

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Genes play a central role in all biological processes. DNA microarray technology has made it possible to study the expression behavior of thousands of genes in one go. Often, gene expression data is used to generate features for supervised and unsupervised learning tasks. At the same time, advances in the field of deep learning have made available a plethora of architectures. In this paper, we use deep architectures pre-trained in an unsupervised manner using denoising autoencoders as a preprocessing step for a popular unsupervised learning task. Denoising autoencoders (DA) can be used to learn a compact representation of input, and have been used to generate features for further supervised learning tasks. We propose that our deep architectures can be treated as empirical versions of Deep Belief Networks (DBNs). We use our deep architectures to regenerate gene expression time series data for two different data sets. We test our hypothesis on two popular datasets for the unsupervised learning task of clustering and find promising improvements in performance.
机译:基因在所有生物过程中都起着核心作用。 DNA微阵列技术使一口气研究成千上万个基因的表达行为成为可能。通常,基因表达数据用于生成有监督和无监督学习任务的特征。同时,深度学习领域的进步使大量的体系结构成为可能。在本文中,我们将使用降噪自动编码器以无监督方式进行预训练的深度体系结构作为流行的无监督学习任务的预处理步骤。去噪自动编码器(DA)可用于学习输入的紧凑表示形式,并且已用于生成用于进一步监督学习任务的功能。我们建议将我们的深度架构视为深度信念网络(DBN)的经验版本。我们使用我们的深度架构来为两个不同的数据集重新生成基因表达时间序列数据。我们在两个不受监督的聚类学习任务的流行数据集上检验了我们的假设,并发现了性能上有希望的改进。

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