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Social-sparsity brain decoders: faster spatial sparsity

机译:社会稀疏性大脑解码器:更快的空间稀疏性

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Spatially-sparse predictors are good models for brain decoding: they give accurate predictions and their weight maps are interpretable as they focus on a small number of regions. However, the state of the art, based on total variation or graph-net, is computationally costly. Here we introduce sparsity in the local neighborhood of each voxel with social-sparsity, a structured shrinkage operator. We find that, on brain imaging classification problems, social-sparsity performs almost as well as total-variation models and better than graph-net, for a fraction of the computational cost. It also very clearly outlines predictive regions. We give details of the model and the algorithm.
机译:空间稀疏的预测器是大脑解码的良好模型:它们提供准确的预测,并且其权重图可针对少数区域进行解释。然而,基于总变化或图网的现有技术在计算上是昂贵的。在这里,我们通过结构化收缩算子社会稀疏性介绍每个体素本地附近的稀疏性。我们发现,在大脑成像分类问题上,社交稀疏表现几乎与总变异模型一样好,并且比图形网更好,而计算成本却很小。它还非常清楚地概述了预测区域。我们提供模型和算法的详细信息。

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