Visualization of Learning Process in Feature Space

Tomohiro Inoue, Noboru Murata, Taiki Sugiura
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Abstract

In machine learning, the structure of feature space is an important factor that determines the performance of a model. Therefore, we can deepen our understanding of learning algorithms if we can visualize changes in the structure of feature space during the learning process. However, visualizing such changes is difficult because it requires dimensionality reduction while maintaining consistency with the data structure in high-dimensional space and in the temporal direction. In this study, we visualized feature changes during the learning process by capturing them as changes in the positional relationship between target features and time-invariant reference coordinates with a log-bilinear model.
特征空间中学习过程的可视化
在机器学习中,特征空间的结构是决定模型性能的重要因素。因此,如果我们能够将学习过程中特征空间结构的变化可视化,就可以加深我们对学习算法的理解。然而,可视化这些变化是困难的,因为它需要降低维数,同时在高维空间和时间方向上保持与数据结构的一致性。在本研究中,我们通过对数双线性模型将学习过程中的特征变化捕获为目标特征与定常参考坐标之间位置关系的变化,从而将特征变化可视化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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