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Blockwise coordinate descent procedures for the multi-task lasso, with applications to neural semantic basis discovery

机译:多任务套索的逐块协调下降过程及其在神经语义基础发现中的应用

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We develop a cyclical blockwise coordinate descent algorithm for the multi-task Lasso that efficiently solves problems with thousands of features and tasks. The main result shows that a closed-form Winsorization operator can be obtained for the sup-norm penalized least squares regression. This allows the algorithm to find solutions to very large-scale problems far more efficiently than existing methods. This result complements the pioneering work of Friedman, et al. (2007) for the single-task Lasso. As a case study, we use the multi-task Lasso as a variable selector to discover a semantic basis for predicting human neural activation. The learned solution outperforms the standard basis for this task on the majority of test participants, while requiring far fewer assumptions about cognitive neuroscience. We demonstrate how this learned basis can yield insights into how the brain represents the meanings of words.
机译:我们为多任务套索开发了循环的块状坐标下降算法,该算法可有效解决具有数千个特征和任务的问题。主要结果表明,对于超范数惩罚最小二乘回归,可以获得封闭形式的Winsorization运算符。这使该算法比现有方法更有效地找到非常大的问题的解决方案。这一结果补充了Friedman等人的开拓性工作。 (2007)用于单任务套索。作为案例研究,我们使用多任务套索作为变量选择器来发现预测人类神经激活的语义基础。对于大多数测试参与者而言,所学到的解决方案要优于此任务的标准基础,而对认知神经科学的假设则要少得多。我们展示了这种学到的基础如何能够产生洞察力,说明大脑如何表示单词的含义。

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