多项Logit模型的快速估计:R包

Asad Hasan, Wang Zhiyu, A. S. Mahani
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引用次数: 43

摘要

我们提出了R包mnlogit用于训练多项逻辑回归模型,特别是那些涉及大量类和特征的模型。与现有软件相比,mnlogit为中等规模的问题提供10 -50倍的速度,为较大的问题提供100倍以上的速度。在多核机器上以并行模式运行mnlogit可以在多达8个处理器内核上获得2 -4倍的额外加速。通过利用中间计算中出现的矩阵结构,大大加快了对数似然函数的Hessian矩阵的计算速度,从而实现了计算效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Estimation of Multinomial Logit Models: R Package mnlogit
We present R package mnlogit for training multinomial logistic regression models, particularly those involving a large number of classes and features. Compared to existing software, mnlogit offers speedups of 10x-50x for modestly sized problems and more than 100x for larger problems. Running mnlogit in parallel mode on a multicore machine gives an additional 2x-4x speedup on up to 8 processor cores. Computational efficiency is achieved by drastically speeding up calculation of the log-likelihood function's Hessian matrix by exploiting structure in matrices that arise in intermediate calculations.
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