Motivated by models for multiway comparison data, we consider the problem of estimating a coordinate-wise isotonic function on the domain $[0, 1]^d$ from noisy observations collected on a uniform lattice, but where the design points have been permuted along each dimension. While the univariate and bivariate versions of this problem have received significant attention, our focus is on the multivariate case $d \geq 3$. We study both the minimax risk of estimation (in empirical $L_2$ loss) and the fundamental limits of adaptation (quantified by the adaptivity index) to a family of piecewise constant functions. We provide a computationally efficient Mirsky partition estimator that is minimax optimal while also achieving the smallest adaptivity index possible for polynomial time procedures. Thus, from a worst-case perspective and in sharp contrast to the bivariate case, the latent permutations in the model do not introduce significant computational difficulties over and above vanilla isotonic regression. On the other hand, the fundamental limits of adaptation are significantly different with and without unknown permutations: Assuming a hardness conjecture from average-case complexity theory, a statistical-computational gap manifests in the former case. In a complementary direction, we show that natural modifications of existing estimators fail to satisfy at least one of the desiderata of optimal worst-case statistical performance, computational efficiency, and fast adaptation. Along the way to showing our results, we improve adaptation results in the special case $d = 2$ and establish some properties of estimators for vanilla isotonic regression, both of which may be of independent interest.
翻译:在多路比较数据模型的推动下,我们考虑了在统一的固定值上收集的杂乱观测所得出的领域 $[0, 1] 美元中估算出协调性等离子函数的问题。虽然这个问题的单轨和双轨版本得到了极大关注,但我们关注的是多轨情况 $d\geq 3 。我们既研究估算的最小最大风险(实证为$_2美元损失),也研究调整(由调整性能指数量化)到零散不变不变常数功能组的基本限度。我们提供了一个计算效率高效的米尔斯基分配估计估计值,该计算值在每一个方面都是最优化的,同时为多元时间程序取得最小的适应性指数。因此,从最坏的角度看,与双轨情况相比,模型的潜伏变化不会带来重大的计算困难。另一方面,在最坏的递增性价比中,某些特殊的适应限度与最差的调整值不同,在最坏的统计性能中,我们假设了一种自然的精确性能变化。