On the Success Probability of the Box-Constrained Rounding and Babai Detectors

Abstract

In communications, one frequently needs to detect a parameter vector in a box from a linear model. The box-constrained rounding detector and Babai detector are often used to detect due to their high probability of correct detection, which is referred to as success probability, and their high efficiency of implimentation. It is generally believed that the success probability P of is not larger than the success probability P of . In this paper, we first present formulas for P and P for two different situations: is deterministic and is uniformly distributed over the constraint box. Then, we give a simple example to show that P may be strictly larger than P if is deterministic, while we rigorously show that P≤ P always holds if is uniformly distributed over the constraint box.

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