Abstract
This paper proposes a new classification of correlated data types based upon the relative number of direct connections among observations, producing a family of correlated observations embracing seven categories, one whose empirical counterpart currently is unknown, and ranging from independent (i.e., no links) to approaching near-complete linkage (i.e., n(n − 1)/2 links). Analysis of specimen datasets from publicly available data sources furnishes empirical illustrations for these various categories. Their descriptions also include their historical context and calculation of their effective sample sizes (i.e., an equivalent number of independent observations). Concluding comments contain some state-of-the-art future research topics.
Reference49 articles.
1. Statistical analysis of longitudinal and correlated data;Todem,2011
2. Improving the reproducibility of science
3. The Importance of Accounting for Correlated Observations
4. Earliest Known Uses of Some of the Words of Mathematicshttp://jeff560.tripod.com/mathword.html
5. The Early History of Average Values and Implications for Education
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