锥体回归原理

Mariella Dimiccoli
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引用次数: 1

摘要

圆锥回归是二次规划的一种特殊情况,它在一组线性不等式约束下最小化加权残差平方和。一些重要的统计问题,如等压、凹回归或偏序下的方差分析,仅举几例,可以被认为是锥回归问题的特殊实例。鉴于其在统计学中的相关性,本文旨在从理论和实践的角度解决锥体回归的基本原理。考虑了锥回归问题的几种表述,并以凹回归为例,通过数值模拟对几种算法进行了定性和定量的分析和比较。提出了提高数值稳定性和限制计算成本的若干改进措施。对于所分析的每个算法,都提供了伪代码及其在Scilab中的对应代码。研究结果表明,优化方法的选择对数值性能有很大影响。研究还表明,目前还没有有效解决大维度(超过数千个点)的锥回归问题的方法。我们建议通过进一步的研究来填补这一空白,利用和适应经典的多尺度策略来计算近似解。
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Fundamentals of cone regression
Cone regression is a particular case of quadratic programming that minimizes a weighted sum of squared residuals under a set of linear inequality constraints. Several important statistical problems such as isotonic, concave regression or ANOVA under partial orderings, just to name a few, can be considered as particular instances of the cone regression problem. Given its relevance in Statistics, this paper aims to address the fundamentals of cone regression from a theoretical and practical point of view. Several formulations of the cone regression problem are considered and, focusing on the particular case of concave regression as example, several algorithms are analyzed and compared both qualitatively and quantitatively through numerical simulations. Several improvements to enhance numerical stability and bound the computational cost are proposed. For each analyzed algorithm, the pseudo-code and its corresponding code in Scilab are provided. The results from this study demonstrate that the choice of the optimization approach strongly impacts the numerical performances. It is also shown that methods are not currently available to solve efficiently cone regression problems with large dimension (more than many thousands of points). We suggest further research to fill this gap by exploiting and adapting classical multi-scale strategy to compute an approximate solution.
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