We provide an algorithm to PAC learn multivariate polynomials with real coefficients. The instance space from which labeled
samples are drawn is IRN but the coordinates of such samples are known only approximately. The algorithm is iterative and the main ingredient of its
complexity, the number of iterations it performs, is estimated using the condition number of a linear programming problem
associated to the sample. To the best of our knowledge, this is the first study of PAC learning concepts parameterized by
real numbers from approximate data.