This paper considers the problem of matrix-variate logistic regression. The fundamental error threshold on estimating coefficient matrices in the logistic regression problem is found by deriving a lower bound on the minimax risk. The focus of this paper is on derivation of a minimax risk lower bound for low-rank coefficient matrices. The bound depends explicitly on the dimensions and distribution of the covariates, the rank and energy of the coefficient matrix, and the number of samples. The resulting bound is proportional to the intrinsic degrees of freedom in the problem, which suggests the sample complexity of the low-rank matrix logistic regression problem can be lower than that for vectorized logistic regression. \color{red}\color{black} The proof techniques utilized in this work also set the stage for development of minimax lower bounds for tensor-variate logistic regression problems.
翻译:本文考虑了矩阵变差物流回归的问题。 估算物流回归问题系数矩阵的基本误差阈值是通过对微量负风险的下限得出的。 本文的重点是对低量系数矩阵的微量最大风险下限的衍生。 该约束值明确取决于共差的大小和分布、系数矩阵的等级和能量以及样本的数量。 由此产生的约束值与问题内在的自由度成比例, 这表明低量矩阵的样本复杂性可以低于载量化物流回归的样本复杂性。 这项工作中使用的验证技术也为发展微量负值低限的慢度物流回归问题奠定了基础。