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Semi-Supervised Manifold Alignment Using Parallel Deep Autoencoders

机译:使用并行深度自动编码器的半监督流形对准

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The aim of manifold learning is to extract low-dimensional manifolds from high-dimensional data. Manifold alignment is a variant of manifold learning that uses two or more datasets that are assumed to represent different high-dimensional representations of the same underlying manifold. Manifold alignment can be successful in detecting latent manifolds in cases where one version of the data alone is not sufficient to extract and establish a stable low-dimensional representation. The present study proposes a parallel deep autoencoder neural network architecture for manifold alignment and conducts a series of experiments using a protein-folding benchmark dataset and a suite of new datasets generated by simulating double-pendulum dynamics with underlying manifolds of dimensions 2, 3 and 4. The dimensionality and topological complexity of these latent manifolds are above those occurring in most previous studies. Our experimental results demonstrate that the parallel deep autoencoder performs in most cases better than the tested traditional methods of semi-supervised manifold alignment. We also show that the parallel deep autoencoder can process datasets of different input domains by aligning the manifolds extracted from kinematics parameters with those obtained from corresponding image data.
机译:流形学习的目的是从高维数据中提取低维流形。流形对齐是流形学习的一种变体,它使用两个或多个数据集,这些数据集被假定代表同一基础流形的不同高维表示。在仅一个版本的数据不足以提取和建立稳定的低维表示的情况下,歧管对齐可以成功检测潜在的歧管。本研究提出了一种用于流形对齐的并行深度自动编码器神经网络架构,并使用蛋白质折叠基准数据集和一组新的数据集进行了一系列实验,这些数据集是通过模拟具有大小为2、3和4的基础流形的双摆动态生成的这些潜流形的维数和拓扑复杂性高于大多数以前的研究。我们的实验结果表明,在大多数情况下,并行深度自动编码器的性能要优于经过测试的传统的半监督歧管对准方法。我们还表明,通过将从运动学参数提取的流形与从相应图像数据获得的流形对齐,并行深度自动编码器可以处理不同输入域的数据集。

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