Evaluation of the Gauss integral

@article{Martila2022EvaluationOT,
  title={Evaluation of the Gauss integral},
  author={Dmitri Martila and Stefan Groote},
  journal={ArXiv},
  year={2022},
  volume={abs/2202.12394}
}
The normal or Gaussian distribution plays a prominent role in almost all fields of science. However, it is well known that the Gauss (or Euler–Poisson) integral over a finite boundary, as is necessary, for instance, for the error function or the cumulative distribution of the normal distribution, cannot be expressed by analytic functions. This is proven by the Risch algorithm. Regardless, there are proposals for approximate solutions. In this paper, we give a new solution in terms of normal… 

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