Modern business statistics / Ronald L., Iman. [y otro] Impreso

By: Contributor(s): Material type: Computer fileLanguage: Inglés Publication details: New York (US) : John Wiley, 1989.Edition: 2nd edDescription: VIII-XV, 910 p. : il. ; 26 x 18 cmISBN:
  • 0-471-81116-5
Subject(s): Summary: Relationship between sampling and statistics.Summary: Displaying sample data.Summary: Descriptive sample statistics.Summary: Probability, populations, and random variables.Summary: Some useful discrete and continuous distributions.Summary: Estimation (one sample).Summary: Hypothesis testing.Summary: Two related samples (matches pairs).Summary: Estimation and hypotheses testing with two independent samples.Summary: Contigency tables (optional).Summary: Correlation.Summary: Regression.Summary: Time series analysis (optional).Summary: Formulating general linear models for fitting data.Summary: Multiple linear regression.Summary: Analysis of variance for one-factor experiments.Summary: Analysis of variance for two-factor experiments.
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Libros Biblioteca Thomas Wood Estantería general 658:519.2 I41 2nd ed. (Browse shelf(Opens below)) Ej.:1 Available U0500

Relationship between sampling and statistics.

Displaying sample data.

Descriptive sample statistics.

Probability, populations, and random variables.

Some useful discrete and continuous distributions.

Estimation (one sample).

Hypothesis testing.

Two related samples (matches pairs).

Estimation and hypotheses testing with two independent samples.

Contigency tables (optional).

Correlation.

Regression.

Time series analysis (optional).

Formulating general linear models for fitting data.

Multiple linear regression.

Analysis of variance for one-factor experiments.

Analysis of variance for two-factor experiments.

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