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practical perspective, it is important to suggest names for coarse-grained activi-
ties that are products of activity aggregation. Finally, we would like to improve
the validation method for activity aggregation. On the one hand, this implies re-
placing correlation with an alternative metric for activity aggregation quality. On
the other hand, the validation will require an empirical study involving human
modelers and stakeholders, who can evaluate the proposed activity aggregation.
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