2 edition of **Statistical interactive programming system (SIPS)** found in the catalog.

Statistical interactive programming system (SIPS)

Kenneth Rowe

- 313 Want to read
- 3 Currently reading

Published
**1978**
by Dept. of Statistics, Oregon State University in Corvallis, Or
.

Written in English

- Interactive computer systems -- Handbooks, manuals, etc.,
- Mathematical statistics -- Data processing -- Handbooks, manuals, etc.

**Edition Notes**

Statement | Kenneth Rowe and Jo An Barnes. |

Series | Statistical computing report -- no. 3. |

Contributions | Barnes, Jo An., Oregon State University. Dept. of Statistics. |

The Physical Object | |
---|---|

Pagination | i, 66 leaves ; |

Number of Pages | 66 |

ID Numbers | |

Open Library | OL15482570M |

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