深度结构学习:超越联结主义方法

B. Mitchell, John W. Sheppard
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引用次数: 12

摘要

深度结构学习是机器学习领域中一个很有前途的新领域。这一领域之前的工作已经显示出令人印象深刻的表现,但它们都使用了连接主义模型。我们希望证明深度架构的效用并不局限于连接主义模型。我们的方法是使用简单的、非连接主义的降维技术与深度架构相结合,以更精确地检查深度架构本身的影响。为此,我们使用标准PCA作为基准,并将其与使用PCA的深度架构进行比较。我们使用这两种技术生成的特征进行了多次图像分类实验,并得出结论,深度结构可以提高分类性能,支持深度结构假设。
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Deep Structure Learning: Beyond Connectionist Approaches
Deep structure learning is a promising new area of work in the field of machine learning. Previous work in this area has shown impressive performance, but all of it has used connectionist models. We hope to demonstrate that the utility of deep architectures is not restricted to connectionist models. Our approach is to use simple, non-connectionist dimensionality reduction techniques in conjunction with a deep architecture to examine more precisely the impact of the deep architecture itself. To do this, we use standard PCA as a baseline and compare it with a deep architecture using PCA. We perform several image classification experiments using the features generated by the two techniques, and we conclude that the deep architecture leads to improved classification performance, supporting the deep structure hypothesis.
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