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1.6.5: Illustration- Elections in Ruritania

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    56824
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    Even though it is an absolute monarchy, national elections are held in Ruritania to elect members of the Ruritanian parliament, the Národní Shromáždění (National Assembly). After the most recent election, Ruritanian exiles in Denmark claimed that the ballot boxes were stuffed. That is, the ballot boxes had votes for the government party in them even before voting began. Because guarantees of the "secret ballot" are built into the Ruritanian Constitution, the ballot boxes are opaque. As such, there is no direct evidence of stuffing.

    Ordinary least squares regression is not well-suited for this type of data. There is inherent heteroskedasticity in the proposed model. However, we can use Binomial regression to test the election for evidence of ballot box stuffing.

    As a result of our analysis, we were able to detect some evidence for stuffing (\(\text{p-value} = 0.0441\)). However, because the p-value is so high with respect to the usual \(\alpha=0.05\) value, do we really have the necessary support in the data to claim there was unfairness in the election?

    To claim something so heinous, we should really contemplate the real meaning of the p-value and selecting an appropriate value for \(\alpha\).

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    Here, we had a good understanding of the data-generating process. This allowed us to use that understanding to create a stronger model. Heteroskedasticity can be "adjusted for" in ordinary least squares. However, it is ALWAYS better to explicitly model the different aspects of your data instead of merely "adjusting for them."


    This page titled 1.6.5: Illustration- Elections in Ruritania 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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