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Testing the Robustness of Manifold Learning on Examples of Thinned-Out Data

机译:通过稀疏数据示例测试流形学习的鲁棒性

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Manifold learning can only be successful if enough data is available. If the data is too sparse, the geometrical and topological structure of the manifold extracted from the data cannot be recognised and the manifold collapses. In this paper we used data from a simulated two-dimensional double pendulum and tested how well several manifold learning methods could extract the expected manifold, a two-dimensional torus. The experiments were repeated while the data was downsampled in several ways to test the robustness of the different manifold learning methods. We also developed a neural network-based deep autoencoder for manifold learning and demonstrated that it performed in most of our test cases similarly or better than traditional methods such as principal component analysis and isomap.
机译:只有有足够的数据,流形学习才能成功。如果数据太稀疏,则无法识别从数据中提取的歧管的几何和拓扑结构,并且歧管会崩溃。在本文中,我们使用了来自模拟的二维双摆的数据,并测试了几种流形学习方法可以很好地提取期望的流形(二维圆环)。重复进行实验,同时以几种方式对数据进行下采样,以测试不同流形学习方法的鲁棒性。我们还开发了基于神经网络的深度自动编码器进行多种学习,并证明它在大多数测试用例中的性能与传统方法(例如主成分分析和isomap)相似或更好。

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