Networks of Social Influence - PowerPoint PPT Presentation

1 / 61
About This Presentation
Title:

Networks of Social Influence

Description:

... making, close relationships, persuasion, intergroup relations, negotiation, etc... Persuasion. Intended by influence source. Via message. Conformity ... – PowerPoint PPT presentation

Number of Views:56
Avg rating:3.0/5.0
Slides: 62
Provided by: vwInd
Learn more at: http://vw.indiana.edu
Category:

less

Transcript and Presenter's Notes

Title: Networks of Social Influence


1
Networks of Social Influence
  • Eliot Smith
  • Indiana University, Bloomington
  • March, 2007

2
Social influenceThe core of social psychology
  • Definitionally (Allport) Social psychology
    studies the effect of others (real, imagined, or
    implied) on our thoughts, feelings, and actions
  • Substantively Social influence underlies every
    major topic area conformity, group decision
    making, close relationships, persuasion,
    intergroup relations, negotiation, etc.

3
Typical research approach
  • Micro-level focus on individual cognitive
    processes
  • One-shot influence
  • Experimenter-constructed messages

4
Types of influence
  • Persuasion
  • Intended by influence source
  • Via message
  • Conformity
  • Often not intended by influence source
  • Multiple motives of influence targets
  • Want to fit in with crowd (identity)
  • See benefits in what others are doing (rewards)

5
Broadening the focus
  • Patterns of influence that emerge when
  • many people (each acting as source and target of
    influence)
  • influence each other over time
  • As in face-to-face groups
  • Emergence Even complete knowledge of micro-level
    processes insufficient for prediction and
    understanding

6
Our project
  • Review, conceptually analyze social influence
    models that look at multidirectional influence
    over time
  • Encourage integration of social psychologys
    knowledge about micro-level processes with
    broader context provided by these models
  • Winter Mason, Frederica (Riki) Conrey, Eliot
    Smith (Personality and Social Psychology Review,
    in press)

7
First lesson learned
  • Vast majority of models are from outside social
    psychology
  • Economics, sociology, political science,
    cognitive science, cognitive anthropology,
    physics,
  • Many disciplines are interested in social
    influence processes
  • Rumor spread, group problem-solving and
    decision-making, word of mouth about new
    products,
  • Closely related models disease epidemics

8
  • Models from other fields
  • usually more concerned with macro-level outcomes
    (e.g., of population who hears rumor) than with
    micro-process
  • rarely if ever draw on social psychological
    theory or findings

9
First question about each model
  • How (and whether) it avoids predicting collapse
    of attitudes or beliefs to complete uniformity
  • Relevant to exploitation/exploration tradeoff
    maintaining diversity allows exploration,
    sampling of different regions of search space
  • Hutchins example

10
Abelsons dilemma
  • Consider 3 assumptions
  • Multiple actors (who are all connected)
  • Influence over many time steps
  • Assimilative influence, linear in form
  • Linear, assimilative influence means recipient of
    influence, on average, moves some percentage of
    the way from original position toward
    influencers position

11
Abelsons dilemma
  • With those assumptions the inevitable outcome is
    complete uniformity of attitudes within the range
    of original attitudes
  • R. P. Abelson (1964)

12
Abelsons dilemma
  • But this outcome is not often observed in reality
  • Minority opinions persist
  • Attitudes show variation
  • Groups often polarize
  • Move outside original range of opinions

13
Avoiding Abelsons dilemma
  • Four distinct ways to avoid collapse
  • Constitute four dimensions on which to place
    social influence models
  • Patterns of Connectivity
  • Behavior vs. Attitudes
  • Variable Environmental Influences
  • Assimilation vs. Contrast

14
Remainder of talk
  • Briefly describe the four dimensions
  • Give examples of models
  • Describe how each dimension can help avoid
    Abelsons collapse, maintain variability and
    diversity

15
1. Patterns of connectivity
  • The pathways along which influence flows
    determine the final outcome for a group
  • How many buy a product
  • Strength and certainty of attitudes
  • Polarization or conformity

16
(No Transcript)
17
(No Transcript)
18
(No Transcript)
19
Patterns of connectivity
  • Models assume different patterns of influence
  • All-connect
  • Regular networks
  • General networks
  • Dynamic networks (not today)

20
All-connect
  • Each person potentially influences each other

A
B
E
C
D
21
All-connect
  • Most small group research in social psychology
    (Levine Moreland, 1998 Stasser, 1988)
  • Thinking of group sitting around a table
  • Innovation diffusion models (Granovetter, 1978)

22
Innovation diffusion(Granovetter, 1978)
  • Individuals have different thresholds for
    adopting innovation (e.g., new product)
  • Threshold of others who must use innovation
    before the individual will
  • Early adopters (0-1 threshold) start the process
    off, then those with low thresholds jump on
    board, and so on
  • All-connect network assumption each individual
    knows how many others in whole population have
    adopted innovation

23
Regular (grid) networks
  • Each person connected to some number of nearest
    neighbors only
  • No long-distance links

A
B
E
C
D
24
Regular (grid) networks
  • Cellular Automata models (Conway, 1990)
  • Dynamic Social Impact Model (Nowak, Szamrej,
    Latané, 1990)

25
Dynamic Social Impact Model(Nowak et al., 1990)
  • Individuals have binary (pro/con) attitudes,
    initially random
  • Fixed locations in rectangular grid
  • Influenced by close others (influence declines as
    square of distance)
  • Change attitude if total influence to change gt
    total influence to stay

26
Dynamic Social Impact Model
  • Predictions
  • Initial majority (e.g., 60) increases (e.g., to
    90)
  • polarization
  • Minority persists by becoming spatially clustered
  • protected from majority influence by clustering
    together

27
General networks
  • Each person can have unique pattern of links
  • Number of links may vary (degree)
  • Mix of local, longer-range connections

A
B
E
C
D
28
General networks
  • Bavelas (1950) Leavitt (1950)
  • Watts Strogatz (1998) small-world networks
  • Friedkin (1998) sociological model
  • Preference distribution
  • Influence networks

29
Collapse to uniformity
30
(No Transcript)
31
  • All-connect network most subject to Abelsons
    collapse
  • Every individual influenced by same overall
    majority
  • Rather than influenced by unique set of network
    neighbors

32
Maintaining diversity
  1. Isolation
  2. Homophily (network linkages correlate with
    attitude similarity)

33
Isolation
34
(No Transcript)
35
Homophily
  • Friends correlate in attitudes, beliefs
  • Empirically found almost universally
  • Arises from
  • social influence (transmitted along friendship
    links)
  • social selection (choice of friends based on
    pre-existing similarity)
  • likely the more important process

36
Homophily
37
2. Modeling attitude vs. behavior
  • Attitude (continuous quantity) allows possibility
    of graded influence
  • Linear influence rule, move x of the way toward
    influence source --gt Abelson collapse
  • Behavior (often discrete quantity), usually
    threshold for influence
  • E.g., adopt behavior if majority of neighbors do
  • Nonlinear rule, collapse not inevitable

38
Continuous attitudes
2.6
0.6
1.3
1.2
0.8
2.0
1.1
1.6
2.3
2.8
1.8
1.9
39
Continuous attitudes
0.0
0.0
0.0
0.0
0.0
0.0
0.0
0.0
0.0
0.0
0.0
0.0
40
Discrete behaviors
0.6
2.8
1.3
1.2
1.1
1.6
0.8
2.2
2.8
2.3
1.9
1.8
41
Discrete behaviors
42
Maintaining diversity
  • Easier for models of discrete behaviors than for
    models of continuous attitudes

43
Attitudes and behavior?
  • Possible to model both attitudes and behaviors
  • Attitudes are continuous, function as summary of
    input evaluative information
  • Behaviors are discrete, are observable to others
  • Influence only from behaviors, not attitudes

44
Attitudes and Behavior?
  • No models in this category yet
  • But social psych research on how attitudes guide
    behavior should help construct them
  • Would allow for modeling pluralistic ignorance

45
3. Variable environmental influences
  • Some models consider ONLY social influence
  • Dynamic Social Impact (Nowak et al.)
  • Information other than social influence
  • Theory of Reasoned Action
  • Attitude and subjective norm
  • Swarm intelligence (Kennedy Eberhart)
  • Try things yourself, hear about what neighbors
    have tried

46
(No Transcript)
47
(No Transcript)
48
Information cascade model(Bikhchandani et al.,
1992)
  • Biased coin, known to fall one way 2/3 of the
    time
  • Is it biased toward heads or tails?
  • Each person in turn flips coin privately
    (evidence), announces guess about coin
  • People can use earlier guesses as well as their
    own private evidence

49
Information cascade model
  • Person 1 sees H, guesses bias is H
  • Person 2 sees T
  • Knows H, T have been seen, makes 50-50 guess
  • More interesting person 2 also sees H
  • Knows H, H have been seen, guesses coin is H
  • Now even if person 3 sees T, should guess H!
  • Same (even stronger) for all later people

50
4. Assimilation vs. contrast
  • Most models assume purely assimilative influence
    move toward others positions
  • This is likely when influence is purely
    informational
  • Learn about others successful problem solutions

51
4. Assimilation vs. contrast
  • But several processes can generate movement away
    from others positions
  • Reactance processes
  • Resist threats to behavioral freedom
  • Social Identity Theory, Optimal Distinctiveness
    Theory
  • Motive to seek distinctiveness of ingroup from
    outgroup
  • Avoiding competition
  • Seek rewards less exploited by others

52
(No Transcript)
53
(No Transcript)
54
(No Transcript)
55
Seceder model(Dittrich et al., 2000)
  • Each person in group has random number between 0
    - 100 (attitude, behavior)
  • Each person in turn
  • Picks 3 others at random, sees their numbers
    (e.g., 16, 27, 88)
  • Identifies the number that is farthest from the
    mean of the 3 (e.g., 88)
  • Changes his own number to that (plus random error)

56
Seceder model
  • Model is from physics
  • Parallel to Optimal Distinctiveness Theory
  • Seek distinctiveness (move away from boring
    average)
  • But not all alone! (only go where another is
    already located)
  • Joining that person makes region less distinctive

57
Space of social influence models
  • Patterns of Connectivity
  • (All-connect, Grid, Heterogeneous, Dynamic)
  • Behavior vs. Attitudes
  • (Continuous, Discrete, Both)
  • Variable Environmental Influences
  • (Only social influence, Other influences)
  • Assimilation vs. Contrast
  • (Pure assimilation, Contrast possible)
  • 4x3x2x248 categories of models in principle

58
Avoiding Abelson collapse
  • Patterns of Connectivity
  • (All-connect, Grid, Heterogeneous, Dynamic)
  • Behavior vs. Attitudes
  • (Continuous, Discrete, Both)
  • Variable Environmental Influences
  • (Only social influence, Other influences)
  • Assimilation vs. Contrast
  • (Pure assimilation, Contrast possible)

59
Methodological note
  • How to model complex patterns of influence among
    many individuals over time?
  • Some models use mathematical approach
  • Equations describe patterns of social influence
  • Equations solved or iterated to describe
    influence over time

60
Methodological note
  • Others use agent-based modeling
  • Not equations but autonomous agents
  • Interact with each other over time
  • Change attitudes according to stated rules
  • Much more flexible approach compared to equations
  • More congenial to thinking about processes that
    generate influence, rather than numerical law
    that describes influence outcomes

61
Methodological note
  • Possibly familiar examples
  • Axelrod evolution of cooperation
  • Kalick Hamilton attractiveness matching in
    dating relationships
  • Multi-agent approach reviewed by Smith Conrey,
    PSPR, 2007

62
Integration
  • Social psychology offers
  • Well-supported models of micro-processes of
    social influence
  • Evidence at level of individual behavior
  • Other fields offer
  • Formal models of macro-level processes
  • Evidence at level of influence outcomes over
    multiple actors and many time periods

63
Integration
  • These naturally complement each other
  • Social psychological models need contextual
    component (I.e., social networks) to predict
    large-scale outcomes
  • Models from other fields need empirically and
    theoretically grounded assumptions about
    micro-level patterns of influence

64
Thank You!
Write a Comment
User Comments (0)
About PowerShow.com