Bayesian Posterior Predictive Probability Happiness

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DOI: 10.4236/am.2016.78068    2,110 Downloads   3,711 Views  Citations

ABSTRACT

We propose to determine the underlying causal structure of the elements of happiness from a set of empirically obtained data based on Bayesian. We consider the proposal to study happiness as a multidimensional construct which converges four dimensions with two different Bayesian techniques, in the first we use the Bonferroni correction to estimate the mean multiple comparisons, on this basis it is that we use the function t and a z-test, in both cases the results do not vary, so it is decided to present only those shown by the t test. In the Bayesian Multiple Linear Regression, we prove that happiness can be explained through three dimensions. The technical numerical used is MCMC, of four samples. The results show that the sample has not atypical behavior too and that suitable modifications can be described through a test. Another interesting result obtained is that the predictive probability for the case of sense positive of life and personal fulfillment dimensions exhibit a non-uniform variation.

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Rodríguez-Hernández, G. , Domínguez-Zacarías, G. and Lugo, C. (2016) Bayesian Posterior Predictive Probability Happiness. Applied Mathematics, 7, 753-764. doi: 10.4236/am.2016.78068.

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