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PART II MATHMATICAL REPRESENTATIONS OF SOCIAL NETWORKS

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Chapter 3 Notation for Social Network Data. Chapter 4 Graphs and Matrices ... other properties of the graph (geodesic distance, diameter, eccentricity, etc) ... – PowerPoint PPT presentation

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Title: PART II MATHMATICAL REPRESENTATIONS OF SOCIAL NETWORKS


1
PART IIMATHMATICAL REPRESENTATIONS OF SOCIAL
NETWORKS 
  • Wasserman and Faust
  • Chapter 3 Notation for Social Network Data
  • Chapter 4 Graphs and Matrices

2
Mathematical Expressions of Network Data
  • Graph Theoretic Notations
  • Directional, Non-Directional, Multiple
  • Not well suited for strength/frequency data sets
  • Sociometric Notations
  • Positive/Negative Relations
  • Sociomatrix
  • Algebraic Notations
  • Most helpful for multirelational networks
  • Not capable of relating values or actor
    attributes
  • Two Sets of Actors

3
Summary Notations
  • ni chooses nj on single relation in question
    the arc from ni to nj is contained in the set L
    , so there is a tie present for ordered pair ltni
    , njgt (p.89).
  • as long as it remains a clear distinction, this
    switch can be made in notation where there is a
    directional line from node i to node j (p. 89).
  • given relation F of i to j, the algebraic
    notation is created (p.89).
  • simple social network S (algebraic structure),
    G d (directed graph/sociogram), and X (adjacency
    matrix or sociomatrix as social network) (p. 90).
  • complicated social network simple social
    network with new matrix Aincluding,
    dimensions (number of actors) x (number of
    attributes) for measurement (p. 90).
  • ni ? nj
  • i ? j can be substituted for ni ? nj
  • iFj can be substituted for i ? j
  • S lt S, G d , X gt
  • S lt S, G d , X , A gt

4
Graphs
  • What do they offer?
  • Graph Theory- gives a representation of a social
    network as a model of a social system consisting
    of a set of actors and the ties between them (p.
    93)
  • Nuts Bolts
  • Nodes - actors
  • Lines - ties between actors
  • Loop - possible ties between node and itself
  • Adjacent - l(k) n(i), n(j), i and j are said
    to be adjacent
  • Incident - a node is said to be incident with a
    line if its one of the unordered pair of nodes
    defining the line
  • Some Types of Graphs

5
Subgraphs
  • Node-Generated Subgraphs
  • Section 2 focuses mainly on this type
  • both dyads and triads are examples
  • helpful when data is missing for some actors in
    the network and only remaining ties can be
    observed
  • useful when conducting a longitudinal study and
    one or more actors leave the network
  • Line-Generated Subgraphs are also discussed,
    but with less emphasis.

6
Walks, Trails, Paths / Connectivity
  • Each are routes used to show the connectivity of
    a graph
  • Can be used to calculate other properties of the
    graph (geodesic distance, diameter, eccentricity,
    etc)
  • Every path is a trail every trail is a walk
  • Connectivity function of whether a graph
    remains connected when nodes and/or lines are
    deleted expressed in terms of (k) a
    disconnected graph is (k) 0 since no node needs
    to be removed, therefore the higher the value of
    (k) the more connected the graph
  • Connected Graph there is a path between every
    pair of nodes in the graph (if not, its
    disconnected). (ex. Fig. 4.8 p. 109)

7
Other Graphs
  • Digraphs-consists of two sets of information a
    set of nodes and a set of arcs (ordered pairs)
  • with the additional element of direction, the
    degree of the node is considered both for the
    indegree and outdegree of a node
  • Signed lines record a valence (, -)
  • Valued - the strength or intensity of each line
    or arc is recorded can refer to directional
    (dollar amount of exports) and nondirectional
    (number of interactions) data
  • Multigraph- allows more than one relation or set
    of lines
  • Hypergraph-consists of a set of objects and a
    collection of subsets of objects, in which each
    object belongs to at least on subset, and no
    subset is empty

8
Core Discussion Networks of AmericansMarsden
  • Looks at the use of the 1985 General Social
    Survey data
  • Exposes weaknesses of survey network data
  • Examines Subgroups
  • States conclusions about American social networks

9
Collection Issues
  • Explaining variations in individual responses
  • Lack of instrument of standardization
    replication issues
  • Boundary setting concerns (name-generators)
  • Correct phrasing
  • Expressing variations in interpersonal
    environments

10
Subgroup Differences Conclusions
  • Kin/nonkin discussed in paper
  • Age, education, race/ethnicity, sex, and size of
    place
  • Conclusions
  • networks are small, kin-centered, relatively
    dense, and homogeneous in comparison with the
    sample of respondents
  • bivariate examination of subgroup differences by
    age, education, race/ethnicity, sex, and size of
    place indicates that network range is greatest
    among the young, highly educated, and
    metropolitan residents
  • sex differences consist primarily of differences
    in kin/nonkin composition of networks

11
Network Data and MeasurementsMarsden
  • Marsden focuses on issues of measurement, design,
    collection, and the quality of the data
  • Issues of Measurement
  • Sound concept in place before measuring
  • Does the research want to measure actual
    relations or the perceptions about relations by
    the actors involved?
  • Time concerns
  • Accuracy

12
Issues continued
  • Boundary Issues
  • Parameter setting
  • Egocentric networks have to define those who will
    be included
  • Accuracy Issues
  • Self-reported data concerns
  • Issues with Sources
  • Reliability
  • Limitations
  • Specialization
  • Issues of Design
  • Hard to get complete data for entire networks
  • Sampling of networks can be biased

13
Conclusions
  • Even with the concerns presented, the research
    offered with network studies is valuable
  • Marsden would like to see two research focuses
  • Better measurement for individual data elements
  • A move to improve the reliability outputs to
    lessen effect of individual error
  • these types of efforts would improve the quality
    of network data and research
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