论文标题
互动在结构化估计中的作用
The Role of Interactivity in Structured Estimation
论文作者
论文摘要
我们研究了三个自然限制下的高维稀疏估计:通信约束,局部隐私约束和线性测量(压缩感应)。没有稀疏性假设,已经确定交互性无法提高这些信息限制下的最小值估计速率。互动是否有助于自然推理任务的问题一直是积极研究的话题。我们通过证明交互式和非相互作用方案之间的差距,在肯定的问题上解决了这个问题。我们进一步确定,当我们具有更大的稀疏性时,差距会增加:对于块稀疏性,该差距在维度上可能与多项式一样大。因此,稀疏性的结构越多,相互作用的优势就越大。证明下限需要使用Baranyai定理将相关的随机变量总和仔细分解为独立的组件,这可能是独立的。
We study high-dimensional sparse estimation under three natural constraints: communication constraints, local privacy constraints, and linear measurements (compressive sensing). Without sparsity assumptions, it has been established that interactivity cannot improve the minimax rates of estimation under these information constraints. The question of whether interactivity helps with natural inference tasks has been a topic of active research. We settle this question in the affirmative for the prototypical problems of high-dimensional sparse mean estimation and compressive sensing, by demonstrating a gap between interactive and noninteractive protocols. We further establish that the gap increases when we have more structured sparsity: for block sparsity this gap can be as large as polynomial in the dimensionality. Thus, the more structured the sparsity is, the greater is the advantage of interaction. Proving the lower bounds requires a careful breaking of a sum of correlated random variables into independent components using Baranyai's theorem on decomposition of hypergraphs, which might be of independent interest.