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(2004)

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BibTeX

@MISC{04,
    author = {},
    title = {},
    year = {2004}
}

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Abstract

“Exploratory ” and “confirmatory ” data analysis can both be viewed as methods for comparing observed data to what would be obtained under an implicit or explicit statistical model. For example, many of Tukey’s methods can be interpreted as checks against hypothetical linear models and Poisson distributions. In more complex situations, Bayesian methods can be useful for constructing reference distributions for various plots that are useful in exploratory data analysis. We propose an approach to unify exploratory data analysis with more formal statistical methods based on probability models. We develop these ideas in the context of examples from fields including psychology, medicine, and social science.

Keyphrases

exploratory data analysis    explicit statistical model    confirmatory data analysis    bayesian method    social science    formal statistical method    poisson distribution    complex situation    various plot    hypothetical linear model    reference distribution    probability model   

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