280 likes | 589 Views
Role Analysis in Social Networks. Victor Lee. Outline. What are Social Networks? Role and Position Analysis Equivalence Models for Roles Block Modelling. Social Networks. Not just Facebook and MySpace… A social network is a collection of actors who are joined by pairwise ties .
E N D
Role Analysis in Social Networks Victor Lee
Outline • What are Social Networks? • Role and Position Analysis • Equivalence Models for Roles • Block Modelling
Social Networks • Not just Facebook and MySpace… • A social network is a collection of actors who are joined by pairwise ties. • Actors may be individual persons or organizations • Ties are any type of relationship between two actors, such as friendship, kinship, financial exchange, influence, or prestige.
Representing (Social) Networks • As a Graph • Actor vertex or node • Tie edge or link • Could be directed/undirected,weighted/unweighted • As an Adjacency Matrix • N x N matrix, N = number of vertices • aij = weight of edge from i j 2 1 3 4
Social Position • Social Position = collection of actors similarly embedded in a network • Similar sets of ties to other actors • Not based on adjacency, proximity, or reachability • Example: Nurses at different hospitals occupy the position nurse, even though they don't work with each other, or even the same doctors or patients.
Social Role • Social Role = pattern of relationships that an actor has with other actors • May include both direct and compound relations • Example of Kinship Relations: combinations of relations marriage and descent. • Direct: sister, husband, son • Combination: sister-in-law, uncle, grandson • Position is a grouping;Role is what characterizes the group
Role & Positional Analysis • Positional analysis • Separate actors into subsets of positions Partitioning • Each position is a mathematical equivalence class • Role Analysis • Discover and describe patterns of relationships Pattern Mining or Motif Discovery • Global: look at the full set of edges • Local: look at the neighborhood of an individual
Analysis Approaches • Positional, then Role • Group actors into equivalence classes (positions) • Describe each position with an aggregate role description. • Role, then Positional • Describe the relationships of each individual • Group actors that have equivalent or similar patterns or relations
Equivalence Classes and Relations • An equivalence class C is a set of ordered pairs in which the following properties hold: • Reflexivity: (a,a) ∈ C • Symmetry: if (a,b) ∈ C, then (b,a) ∈ C • Transitivity: if (a,b) and (b,c) ∈ C, then (a,c) ∈ C • An equivalence relation for set A partitions A into equivalence classes {C1, …, Ck}
Equivalence Classes for Roles • Goal: define a rule-based equivalence relation that will partition a set of actors into positions and roles • Three common definitions: • Structural Equivalence • Automorphic Equivalence • Regular Equivalence
Structural Equivalence • Two actors are structurally equivalent if they have identical ties to and from the other actors (Lorrain and White 1971). • Example: • C1 = {1, 4} • C2 = {2,5} • C3 = {3} 1 4 2 5 3
Automorphic Equivalence • Two actors are automorphically equivalent if they have identical ties to equivalent actors. • Must have same number of ties • Recursive definition • If we color the vertices by position, • Vertices are equivalent if their neighborhoods consist of the same number of the same colors • Example: Two families with exactly the same number of children, parents, etc.
Isomorphism and Automorphism • A graph isomorphism of graphs G and H is a bijective mapping of vertices f(V(G)) V(H) • such that all the edges remain the same • That is, e(a,b) ∈ G if and only if e(f(a),f(b)) ∈ H • A graph automorphism is when the isomorphism is to G itself • That is, we rearrange the vertex labels of G • Example: Every possible labeling of a clique is automorphically equivalent • What about a ring? A binary tree?
Regular Eqivalence • Two actors are regularly equivalent if they have ties to equivalent positions. • Need not have the same number of ties • Recursive definition • If we color the vertices by position, • Vertices are equivalent if their neighborhoods consist of the same set of colors • But the quantity of each color does not matter • Example: Two families with different numbers of children, parents, etc.
1 2 3 4 5 6 7 8 9 Comparing Equivalences • Structural: connect to exactly the same neighbors • {5,6}, {8,9}, singletons • Automorphic: connect to the same distribution of colors • {5,6,8,9}, {2,4}, singletons • Regular: connect to the same colors • {5,6,7,8,9}, {2,3,4}, {1}
Block Modeling • Consider the matrix representations • Assume we arrange rows and columns by equivalence class, creating blocks • What do you notice about each block? • What rule would each type of equivalence follow?
Image Matrices & Reduced Graphs • If we can make a simple statement about each block: • “Every relation within the block is (almost) always 1.” • “Every relation within the block is (almost) always 0.” • We can form an image matrix/reduced graph
Density Table • In automorphic equivalence, we expect to see the same number of 1’s in each row and each column within a block • “Every relation within block Bij has a probability pij of being present.” • In-relations can be different from out-relations, so Bij may be different from Bji
Thinking more about Block Models • How would you construct a block model based on regular equivalence? • What if we have weighted edges?
Near-Equivalence • Exact equivalence is often too strict • Also want to know how similar are two actors • We can then cluster together similar actors
Traditional Approaches for Similarity • Euclidean distance • Each vertex or group is a dimension in space • Distance between row vectors & column vectors of two actors: • Correlation (Pearson product-moment) • If two actors are equivalent, the correlation between their rows and columns will be +1
Tools for Partitioning Actors • CONCOR • Iteratively: compute row & column correlations,then split • PCA might be superior • Hierarchical Clustering
Other Topics • Relational Algebra • Given multiple types of edges (say, Friend and Trust) • Form an image matrix for each edge type (F and T) • Image multiplication? Example: R = F x Trxy means “x has a friend z who trusts y” • Optimal Partitioning? • Exact equivalence clear idea of “best” partition • Using similarity trade-off between tight variance with a block and having a small number of blocks • Other tools and methods to compute similarity and to partition?
References These slides are based onWasserman and Faust (2004), Social Network Analysis: Methods and Applications, Ch. 9 – 12. Additional Reading • Concise online book on social network analysis:www.faculty.ucr.edu/~hanneman/nettext/index.html • Review paper from the sociologist’s perspective:Borgatti, S. and Everett, M., Notions of Position in Social Network Analysis, Sociological Methodology (22), 1-35, 1992.