论文标题
低度多项式估计的计算障碍
Computational Barriers to Estimation from Low-Degree Polynomials
论文作者
论文摘要
高维统计数据的一个基本目标是检测或恢复嘈杂数据中隐藏的种植结构(例如低级别矩阵)。越来越多的工作研究低级多项式作为此类问题的计算模型的限制模型:在各种情况下,数据的低级多项式可以与最知名的多项式算法的统计性能相匹配。先前的工作已经研究了低度多项式的力量,以检测隐藏结构的存在。在这项工作中,我们将这些方法扩展到解决估计和恢复问题(而不是检测)。对于大量的“信号加噪声”问题,我们给出一个用户友好的下限,以获得最佳的平方平方错误,可以通过任何度d多项式实现。据我们所知,这些是建立相关检测问题的恢复问题低度硬度的第一个结果。作为应用,我们对种植的子决定和种植密集的子图问题的低度最小平方误差进行了严格的特征,解决了两种情况下恢复的计算复杂性的开放问题(在低度框架中)。
One fundamental goal of high-dimensional statistics is to detect or recover planted structure (such as a low-rank matrix) hidden in noisy data. A growing body of work studies low-degree polynomials as a restricted model of computation for such problems: it has been demonstrated in various settings that low-degree polynomials of the data can match the statistical performance of the best known polynomial-time algorithms. Prior work has studied the power of low-degree polynomials for the task of detecting the presence of hidden structures. In this work, we extend these methods to address problems of estimation and recovery (instead of detection). For a large class of "signal plus noise" problems, we give a user-friendly lower bound for the best possible mean squared error achievable by any degree-D polynomial. To our knowledge, these are the first results to establish low-degree hardness of recovery problems for which the associated detection problem is easy. As applications, we give a tight characterization of the low-degree minimum mean squared error for the planted submatrix and planted dense subgraph problems, resolving (in the low-degree framework) open problems about the computational complexity of recovery in both cases.