Simplicial-simplicial regression refers to the regression setting where both the responses and predictor variables lie within the simplex space, i.e. they are compositional. \cite{fiksel2022} proposed a transformation-free lienar regression model, that minimizes the Kullback-Leibler divergence from the observed to the fitted compositions was recently proposed. To effectively estimate the regression coefficients the EM algorithm was employed. We formulate the model as a constrained logistic regression, in the spirit of \cite{tsagris2025}, and we estimate the regression coefficients using constrained iteratively reweighted least squares. This approach makes the estimation procedure significantly faster.
翻译:单纯形-单纯形回归指响应变量与预测变量均位于单纯形空间(即均为成分数据)的回归设定。\\cite{fiksel2022} 近期提出了一种无变换线性回归模型,该模型最小化观测成分数据与拟合成分数据之间的Kullback-Leibler散度。为有效估计回归系数,研究采用了EM算法。本文遵循\\cite{tsagris2025}的思想,将该模型构建为约束逻辑回归模型,并采用约束迭代重加权最小二乘法估计回归系数。该方法显著提升了估计过程的计算效率。