We consider linear regression problems with a varying number of random projections, where we provably exhibit a double descent curve for a fixed prediction problem, with a high-dimensional analysis based on random matrix theory. We first consider the ridge regression estimator and review earlier results using classical notions from non-parametric statistics, namely degrees of freedom, also known as effective dimensionality. We then compute asymptotic equivalents of the generalization performance (in terms of squared bias and variance) of the minimum norm least-squares fit with random projections, providing simple expressions for the double descent phenomenon.
翻译:我们考虑的是线性回归问题,其随机预测数量不尽相同,我们可以发现,我们为固定预测问题展示了双向下降曲线,根据随机矩阵理论进行高维分析。我们首先考虑山脊回归估计值,并利用非参数统计的经典概念,即自由度(也称为有效维度)来审查早期结果。然后,我们计算出最低标准最低方位与随机预测相适应的通用性表现(以平方偏差和差异为单位)的无症状等值,为双向下降现象提供简单的表达。</s>