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7.4: Conclusion

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    57741
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    This chapter presented three comprehensive analytical examples demonstrating the practical application of linear regression techniques to real-world criminological data.

    The chapter began with an analysis using simple linear regression to model a state's violent crime rate. This section showed the process of specifying a single-predictor model, examining the relationship between the violent crime rate in 2000 and in 1990. It covered model formulation, parameter estimation, interpretation of the slope and intercept, and assessment of model fit using the \(R^2\).

    The second analysis expanded the framework to ANCOVA, which combines regression and categorical factors. This section explored how to test for group differences (here, across the nine census regions) while statistically controlling for one or more continuous confounding variables (here, the covariate was the GSP per capita).

    The final analysis introduced a robust, computer-intensive method by applying non-parametric bootstrap to a linear regression context. This technique was used to answer the actual research question about the likelihood of the ballot measure passing. Regression was only able to estimate the proportion of those votes in favor.

    Collectively, these analyses illustrated a progression in analytical complexity — from a basic associative model to a controlled group comparison, and finally to a robust, resampling-based inference. The chapter emphasized not only the mechanics of each method but also their appropriate application, assumption checking, and interpretation of results within a coherent research narrative focused on understanding crime-related phenomena.

    Caution

    Again, be aware of the multiple comparisons issue discussed in The Appendix of Statistics. It explains why you need to either adjust your p-value or your alpha level when performing multiple tests, such as when you are testing both \(\beta_0 = 0\) and \(\beta_1=0\).


    This page titled 7.4: Conclusion is shared under a CC BY-NC-SA 4.0 license and was authored, remixed, and/or curated by Ole Forsberg.

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