利用袋装聚类改进结构化图像的稀疏恢复

Andrés Hoyos Idrobo, Y. Schwartz, G. Varoquaux, B. Thirion
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引用次数: 20

摘要

通过判别方法识别与外部变量相关的图像区域会产生不适定估计问题。这种评估挑战可以通过施加稀疏解决方案来解决。然而,稀疏估计器对相关变量的敏感性导致结果不可重复,并且只选择了重要变量的子集。本文探讨了一种基于bagging聚类的数据压缩方法,以缓解稀疏模型的不稳定性。具体来说,我们设计了一个新的框架,该框架通过对特征聚类后估计的多个模型进行平均来构建估计器,以改善模型的调理性。我们表明,这种模型平均与空间一致压缩的结合可以提高权重图的稳定性,从而更好地解释结果。最后,我们在几个预测建模问题上展示了我们的方法的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Sparse Recovery on Structured Images with Bagged Clustering
The identification of image regions associated with external variables through discriminative approaches yields ill-posed estimation problems. This estimation challenge can be tackled by imposing sparse solutions. However, the sensitivity of sparse estimators to correlated variables leads to non-reproducible results, and only a subset of the important variables are selected. In this paper, we explore an approach based on bagging clustering-based data compression in order to alleviate the instability of sparse models. Specifically, we design a new framework in which the estimator is built by averaging multiple models estimated after feature clustering, to improve the conditioning of the model. We show that this combination of model averaging with spatially consistent compression can have the virtuous effect of increasing the stability of the weight maps, allowing a better interpretation of the results. Finally, we demonstrate the benefit of our approach on several predictive modeling problems.
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