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The graph edit distance hierarchy error, d2, is a measure for the error of the inferred module hierarchy.
In Figure 8 B we show the the empirical cumulative distribution function (ecdf) of the graph edit distance hierarchy error d2.
For our analysis we are using U to define an error measure d2, defined in section 'Graph edit distance hierarchy error'.
The second measure, d2, is the graph edit distance hierarchy error that computes the graph edit distance [ 46- 48] between the reference adjacency matrix of interconnected network modules and the inferred similarity matrix U, described in section 'Hierarchical network organization'.
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In addition, the cache can reduce the average latency of memory hierarchy for error correction, with only about 20.2% of L2 cache energy cost and 2% of L2 cache silicon overhead.
Finally, responses to stimulus differences fit well conceptually with predictive coding principles, proposing that deviations from cortically generated predictions are propagated up the visual hierarchy as error signals (Friston 2005; Garrido et al. 2009).
There was a borderline significant effect of group on the number of hierarchy recall errors made: F 1, 28) = 3.8, P = 0.06.
Wherever the meaning guessed from the concept name of a category differs from the meaning deduced from the hierarchy translation errors may arise.
We found a significant overall effect (ANOVA: F 2, 27) = 11.1, P < 0.001) that was related to a significant effect of hierarchy recall errors (beta = −0.64, P < 0.001: see Fig. 3B) but not awareness score (beta = 0.04, P > 0.8).
Finally, we performed a multiple regression analysis where the relationship between inferential performance (i.e., averaged across blocks) and the two debriefing measures (i.e., awareness score, number of hierarchy recall errors) was assessed, across the whole group of 30 participants.
When both groups were considered together, there was a significant correlation between performance on inference test pairs (i.e., averaged across all 12 blocks) and number of hierarchy recall errors (r = −0.67, P < 0.001)—and also with awareness score (r = 0.46, P < 0.05).
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