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Branch-and-bound algorithms for computing the best-subset regression models

机译:用于计算最佳子集回归模型的分支定界算法

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摘要

An efficient branch-and-bound algorithm for computing the best-subset regression models is proposed. The algorithm avoids the computation of the whole regression tree that generates all possible subset models. It is formally shown that if the branch-and-bound test holds, then the current subtree together with its right-hand side subtrees are cut. This reduces significantly the computational burden of the proposed algorithm when compared to an existing leaps-and-bounds method which generates two trees. Specifically, the proposed algorithm, which is based on orthogonal transformations, outperforms by O(n(3)) the leaps-and-bounds strategy. The criteria used in identifying the best subsets are based on monotone functions of the residual sum of squares (RSS) such as R-2, adjusted R-2, mean square error of prediction, and C-p. Strategies and heuristics that improve the computational performance of the proposed algorithm are investigated. A computationally efficient heuristic version of the branch-and-bound strategy which decides to cut subtrees using a tolerance parameter is proposed. The heuristic algorithm derives models close to the best ones. However, it is shown analytically that the relative error of the RSS, and consequently the corresponding statistic, of the computed subsets is smaller than the value of the tolerance parameter which lies between zero and one. Computational results and experiments on random and real data arc presented and analyzed.
机译:提出了一种计算最佳子集回归模型的高效分支定界算法。该算法避免了生成所有可能子集模型的整个回归树的计算。正式表明,如果分支定界测试成立,则当前子树及其右侧子树将被剪切。与现有的产生两棵树的跨越式方法相比,这大大减少了所提出算法的计算负担。具体来说,基于正交变换的拟议算法比O(n(3))跨越策略更胜一筹。用于识别最佳子集的标准基于残差平方和(RSS)的单调函数,例如R-2,调整后的R-2,预测的均方误差和C-p。研究了改善所提出算法的计算性能的策略和启发式方法。提出了一种计算效率高的启发式版本的分支定界策略,该策略决定使用容差参数切割子树。启发式算法得出的模型接近于最佳模型。但是,从分析上可以看出,RSS的相对误差以及所计算出的子集的相应误差小于容差参数的值(介于零和一之间)。给出并分析了随机和真实数据的计算结果和实验。

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