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Figure 1: Sample variance for each of the principalcomponents
Table 2: Posterior probabilities of models and parameter estimates under the super heavy-tailed distributionassumption based on the data set without outliers
Table 4: Cumulative explained variationsfor the first eighth to eleventh components
Figure 3: Errors of Model 4 under the super heavy-tailed assumption computed using posterior medians
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