It should be noted that these methods are largely atheoretical and group membership is merely based on empirical similarities within a cluster and differences across clusters. In order to examine possible subgroups in the three component processes, factor composites for capacity, AC,
and SM were formed (see Unsworth, 2009 Z-VAD-FMK order for a similar approach). Next, the three factor composites were entered into a two-step cluster analysis. In this analysis, cases were first grouped into pre-clusters at the first step by constructing a cluster feature tree (see Zhang, Ramakrishnan, & Livny, 1996). For each case the algorithm determined if the case should be included with a previously formed pre-cluster or a new pre-cluster should be created based on the cluster feature tree. In the second stage an agglomerative hierarchical clustering method was used on the pre-clusters and allowed for an exploration of different numbers
of clusters. In this stage clusters were recursively merged until the desired number of clusters was determined by the algorithm. In these analyses, distance between clusters was based on a log-likelihood measure whereby distance was related to the decrease in log-likelihood as the clusters were formed into a single cluster. The algorithm automatically determines the number of clusters by taking into account the lowest information criterion (here AIC) and the highest ratio of distance measures (indicating Osimertinib solubility dmso the best separation of the clusters). The cluster analysis suggested the presence of five groups consisting of 34, 30, 40, 35, and 32 participants each. Shown in Table 4 are the resulting groups’ scores on each respective factor. Specifically, as shown in Table 4 looking at capacity suggested that Groups 1 and 4 were weak in capacity whereas Group 5 was strong in capacity and Groups 2 and 3 were more average in capacity. A one-way ANOVA on the capacity scores confirmed these impressions, F(4, 166) = 63.98, MSE = .34, p < .01, partial η2 = .61. Bonferroni post hoc comparisons suggested that there were significant differences
(all ps < .01) between all of the groups in Dichloromethane dehalogenase capacity (except for Groups 2 and 3, which did not differ [p > .50]). 3 As shown in Table 4, examining AC suggested that Group 1 was weak in AC, while Groups 2 and 5 were strong in AC abilities and Groups 3 and 4 were more average in AC. These impressions were confirmed with a one-way ANOVA on AC scores, F(4, 166) = 83.38, MSE = .19, p < .01, partial η2 = .67. Bonferroni post hoc comparisons suggested that there were significant differences (all ps < .01) between all of the groups in AC (except for Groups 2 and 5, which did not differ [p > .90] and Groups 3 and 4, which did not differ [p > .90]). Finally, as shown in Table 4, examining SM scores suggested that Group 1 was weak in SM, whereas Groups 4 and 5 were strong in SM and Groups 2 and 3 were average to weak in SM.