5 edition of **Bayesian statistics for evaluation research** found in the catalog.

Bayesian statistics for evaluation research

William E. Pollard

- 291 Want to read
- 38 Currently reading

Published
**1986** by Sage Publications in Beverly Hills .

Written in English

- Evaluation research (Social action programs) -- Statistical methods,
- Social sciences -- Research -- Statistical methods,
- Bayesian statistical decision theory

**Edition Notes**

Statement | William E. Pollard. |

Series | Contemporary evaluation research ;, v. 8 |

Classifications | |
---|---|

LC Classifications | HA29 .P637 1986 |

The Physical Object | |

Pagination | 256 p. : |

Number of Pages | 256 |

ID Numbers | |

Open Library | OL2533484M |

ISBN 10 | 0803925093 |

LC Control Number | 85014194 |

the application of Bayesian statistics to marketing decision-making and research. The objectives of this paper are: (1) to describe briefly the fundamentals of Bayesian statistics within the framework of marketing research; and (2) to discuss the current state of the art with regard to theory and application.

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Since the early s, there has been increasing interest within the pharmaceutical industry in the application of Bayesian methods at various stages of the research, development, manufacturing, and health economic evaluation of new health care interventions.

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Jianshen (Cassie) Chen is co-Principal Investigator on IES grant # RD, “Bayesian Dynamic Borrowing: A Method for Utilizing Historical Data in Education Research”. Dr. Chen is currently an associate psychometrician in the Learning, Evaluation and Research Division at College Board.Statistics may be defined as the study of uncertainty: how to measure it, and how to make choices in the face ofit.

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