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Phase transitions and optimal algorithms in high-dimensional Gaussian mixture clustering

Allerton Conference on Communication, Control, and Computing (Allerton), 2016
Abstract

We consider the problem of Gaussian mixture clustering in the high-dimensional limit where the data consists of mm points in nn dimensions, n,mn,m \rightarrow \infty and α=m/n\alpha = m/n stays finite. Using exact but non-rigorous methods from statistical physics, we determine the critical value of α\alpha and the distance between the clusters at which it becomes information-theoretically possible to reconstruct the membership into clusters better than chance. We also determine the accuracy achievable by the Bayes-optimal estimation algorithm. In particular, we find that when the number of clusters is sufficiently large, r>4+2αr > 4 + 2 \sqrt{\alpha}, there is a gap between the threshold for information-theoretically optimal performance and the threshold at which known algorithms succeed.

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