Given a data set of size in -dimensional Euclidean space, the -means problem asks for a set of points (called centers) so that the sum of the -distances between points of a given data set of size and the set of centers is minimized. Recent work on this problem in the locally private setting achieves constant multiplicative approximation with additive error and proves a lower bound of on the additive error for any solution with a constant number of rounds. In this work we bridge the gap between the exponents of in the upper and lower bounds on the additive error with two new algorithms. Given any , our first algorithm achieves a multiplicative approximation guarantee which is at most a factor greater than that of any non-private -means clustering algorithm with additive error. Given any , our second algorithm achieves additive error with constant multiplicative approximation. Both algorithms go beyond the factor that occurs in the additive error for arbitrarily small parameters in previous work, and the second algorithm in particular shows for the first time that it is possible to solve the locally private -means problem in a constant number of rounds with constant factor multiplicative approximation and polynomial dependence on in the additive error arbitrarily close to linear.
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