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Mean Estimation from Coarse Data: Characterizations and Efficient Algorithms

Machine Learning 2026-02-27 v1 Data Structures and Algorithms Statistics Theory Machine Learning Statistics Theory

Abstract

Coarse data arise when learners observe only partial information about samples; namely, a set containing the sample rather than its exact value. This occurs naturally through measurement rounding, sensor limitations, and lag in economic systems. We study Gaussian mean estimation from coarse data, where each true sample xx is drawn from a dd-dimensional Gaussian distribution with identity covariance, but is revealed only through the set of a partition containing xx. When the coarse samples, roughly speaking, have ``low'' information, the mean cannot be uniquely recovered from observed samples (i.e., the problem is not identifiable). Recent work by Fotakis, Kalavasis, Kontonis, and Tzamos [FKKT21] established that sample-efficient mean estimation is possible when the unknown mean is identifiable and the partition consists of only convex sets. Moreover, they showed that without convexity, mean estimation becomes NP-hard. However, two fundamental questions remained open: (1) When is the mean identifiable under convex partitions? (2) Is computationally efficient estimation possible under identifiability and convex partitions? This work resolves both questions. [...]

Keywords

Cite

@article{arxiv.2602.23341,
  title  = {Mean Estimation from Coarse Data: Characterizations and Efficient Algorithms},
  author = {Alkis Kalavasis and Anay Mehrotra and Manolis Zampetakis and Felix Zhou and Ziyu Zhu},
  journal= {arXiv preprint arXiv:2602.23341},
  year   = {2026}
}

Comments

Abstract truncated to arXiv limits. To appear in ICLR'26