稀疏非负交互模型的全正则化路径

Mirai Takayanagi, Yasuo Tabei, Hiroto Saigo
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引用次数: 3

摘要

建立具有非负约束的稀疏组合模型对于解决诸如生物学等现实问题至关重要,在这些问题中,目标响应通常是由特征变量的加性线性组合来表示的。本文提出了将项目集挖掘与非负最小二乘相结合的方法来解决这一问题。然而,一旦考虑到现代正则化的结合,那么一个朴素的解决方案需要为每个正则化参数多次解决昂贵的枚举问题。本文设计了一种正则化路径跟踪算法,将组合特征逐个搜索并包含到解集中。我们的贡献是提出了专门为特征搜索问题设计的新边界。在合成数据集中,该方法的运行速度比不使用树修剪的朴素方法快几个数量级。我们还通过经验证明,非负性约束减少的活动特征数量远少于LASSO,从而导致模式搜索的显着加速。在使用HIV-1耐药数据集的实验中,该方法可以成功地模拟HIV-1基因序列突变积累引发的快速增加的耐药性。我们还证明了非负性约束在抑制假阳性特征方面的有效性,从而产生具有更少特征的模型,从而提高了可解释性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Entire Regularization Path for Sparse Nonnegative Interaction Model
Building sparse combinatorial model with non-negative constraint is essential in solving real-world problems such as in biology, in which the target response is often formulated by additive linear combination of features variables. This paper presents a solution to this problem by combining itemset mining with non-negative least squares. However, once incorporation of modern regularization is considered, then a naive solution requires to solve expensive enumeration problem many times for every regularization parameter. In this paper, we devise a regularization path tracking algorithm such that combinatorial feature is searched and included one by one to the solution set. Our contribution is a proposal of novel bounds specifically designed for the feature search problem. In synthetic dataset, the proposed method is demonstrated to run orders of magnitudes faster than a naive counterpart which does not employ tree pruning. We also empirically show that non-negativity constraints can reduce the number of active features much less than that of LASSO, leading to significant speed-ups in pattern search. In experiments using HIV-1 drug resistance dataset, the proposed method could successfully model the rapidly increasing drug resistance triggered by accumulation of mutations in HIV-1 genetic sequences. We also demonstrate the effectiveness of non-negativity constraints in suppressing false positive features, resulting in a model with smaller number of features and thereby improved interpretability.
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