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Deep learning multidimensional projections

机译:深度学习多维预测

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摘要

Dimensionality reduction methods, also known as projections, are often used to explore multidimensional data in machine learning, data science, and information visualization. However, several such methods, such as the well-known t-distributed stochastic neighbor embedding and its variants, are computationally expensive for large datasets, suffer from stability problems, and cannot directly handle out-of-sample data. We propose a learning approach to construct any such projections. We train a deep neural network based on sample set drawn from a given data universe, and their corresponding two-dimensional projections, compute with any user-chosen technique. Next, we use the network to infer projections of any dataset from the same universe. Our approach generates projections with similar characteristics as the learned ones, is computationally two to four orders of magnitude faster than existing projection methods, has no complex-to-set user parameters, handles out-of-sample data in a stable manner, and can be used to learn any projection technique. We demonstrate our proposal on several real-world high-dimensional datasets from machine learning.
机译:差异减少方法,也称为预测,通常用于探索机器学习,数据科学和信息可视化中的多维数据。然而,若干这样的方法,例如众所周知的T分布式随机邻居嵌入及其变体,用于大型数据集的昂贵昂贵,遭受稳定性问题,并且不能直接处理样本数据。我们提出了一种学习方法来构建任何此类预测。我们根据从给定数据宇宙绘制的样本集,以及它们对应的二维投影,与任何用户选择的技术计算的样本集。接下来,我们使用网络从同一宇宙中推断出任何数据集的投影。我们的方法生成具有与学习者相似的特征的预测,比现有投影方法计算出两到四个数量级,没有复杂的用户参数,以稳定的方式处理除样本数据,并且可以用于学习任何投影技术。我们在机器学习中展示了我们对几个现实世界高维数据集的建议。

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