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Algebra / Mathematics / Linear algebra / Similarity / Equivalence class / Matrix / Rank / Equivalence of categories / Euclidean vector / Partition of a set / Equivalence relation
Date: 2015-10-12 19:12:55
Algebra
Mathematics
Linear algebra
Similarity
Equivalence class
Matrix
Rank
Equivalence of categories
Euclidean vector
Partition of a set
Equivalence relation

7 POSITIONS Ideas of social role have been important to social theorists since the middle of the century. Social networks provide an ideal environment in which to formalise the theoretical concepts of role and position.

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