分拆(数论)
凸性
初始化
线性模型
线性规划
数学优化
计算机科学
正多边形
一般化
数学
算法
组合数学
机器学习
数学分析
几何学
金融经济学
经济
程序设计语言
作者
Hidekazu Oiwa,Ryohei Fujimaki
出处
期刊:Cornell University - arXiv
日期:2014-12-08
卷期号:27: 3527-3535
被引量:14
摘要
Region-specific linear models are widely used in practical applications because of their non-linear but highly interpretable model representations. One of the key challenges in their use is non-convexity in simultaneous optimization of regions and region-specific models. This paper proposes novel convex region-specific linear models, which we refer to as partition-wise linear models. Our key ideas are 1) assigning linear models not to regions but to partitions (region-specifiers) and representing region-specific linear models by linear combinations of partition-specific models, and 2) optimizing regions via partition selection from a large number of given partition candidates by means of convex structured regularizations. In addition to providing initialization-free globally-optimal solutions, our convex formulation makes it possible to derive a generalization bound and to use such advanced optimization techniques as proximal methods and decomposition of the proximal maps for sparsity-inducing regularizations. Experimental results demonstrate that our partition-wise linear models perform better than or are at least competitive with state-of-the-art region-specific or locally linear models.
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