SYSTAT/SYGRAPH and Micro-TSP

@article{Jarrett1992SYSTATSYGRAPHAM,
  title={SYSTAT/SYGRAPH and Micro-TSP},
  author={Jeffrey E. Jarrett},
  journal={Statistics and Computing},
  year={1992},
  volume={2},
  pages={231-236}
}
  • J. Jarrett
  • Published 1992
  • Computer Science
  • Statistics and Computing

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