Linear regression without correspondence
–Neural Information Processing Systems
This article considers algorithmic and statistical aspects of linear regression when the correspondence between the covariates and the responses is unknown. First, a fully polynomial-time approximation scheme is given for the natural least squares optimization problem in any constant dimension. Next, in an average-case and noise-free setting where the responses exactly correspond to a linear function of i.i.d.
Neural Information Processing Systems
Mar-17-2026, 17:16:00 GMT
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