Title: Diffusion
1Diffusion Interventions
- Diffusion of innovations
- Behavior change
- Behavior change is short term whereas diffusion
looks at the long view of how new behaviors spread
1
2Diffusion of Innovations
- New ideas and practices originate enter
communities from some external source. These
external sources can be mass media, labor
exchanges, cosmopolitan contact, technical shifts
and so on. Adoption of the new idea or practice
then flows through interpersonal contact
networks.
2
3Diffusion of Innovations
- Rogers wrote consecutive texts on this topic
- 1962 1st Edition
- 1971 2nd Edition (with Shoemaker)
- 1983 3rd Edition
- 1995 4th Edition
- 2003 5th Edition
- Synthesized, elaborated, codified, explained
diffusion of innovations
3
4ELEMENTS OF THE DIFFUSION OF INNOVATIONS
- 1) The rate of diffusion is influenced by the
perceived characteristics of the innovation such
as relative advantage, compatibility,
observability, trialability and complexity,
radicalness, and cost. - 2) Diffusion occurs over time such that the rate
of adoption often yields a cumulative adoption
S-shaped pattern. - 3) Individuals can be classified as early or late
adopters. - 4) Individuals pass through stages during the
adoption process typically classified as (1)
knowledge, (2) persuasion, (3) decision, (4)
implementation or trial, and (5) confirmation.
4
5Characteristics of an Innovation
- Relative advantage
- Compatibility
- Complexity
- Trialability
- Observability
- Cost
- Radicalness
5
64 Elements according to Rogers
- Innovation An idea or practice perceived as new
- Perceived attributes relative advantage,
compatibility, complexity, trialability,
observability - Communication channels
- Homophily vs. heterophily
- Time at the individual macro levels
- Social system
6
7Hypothetical Cumulative and Incidence Adoption
Curves for DiffusionHomogenous Mixing
7
88
9Behavior Change Stages in Four Models
9
10Diffusion
- Takes time
- Is difficult even when something is seemingly
worthwhile - Is guided and influenced by many factors, some
obvious, some not so obvious - Provides a macro micro perspective on behavior
change
10
11Diffusion
- Process by which an innovation is communicated
through certain channels over time among the
members of a social system - Communication is special in that it attempts to
reduce uncertainty about the innovation - Diffusion vs. Dissemination vs. Technology
Transfer
11
1212
13Hypothetical Diffusion When Adopters Persuade
Non-adopters at a Rate of One Percent(Homogenous
Mixing)
13
14Hypothetical Cumulative and Incidence Adoption
Curves for DiffusionHomogenous Mixing
14
15The Diffusion of Knowledge, Attitudes and
Practices (KAP)
15
16Example of Diffusion
16
17The Two-Step Flow Hypothesis of Mass Media
Influence
Friends
Family
Mass Media
Opinion Leaders
Coworkers
Others
17
18Mathematical Models Used to Derive Diffusion Rate
Parameters
18
19History
- Early pre-paradigmatic research by
Anthropologists, Economists, Sociologists
interested in cultural change (1903-1940) - In 1943, Ryan Gross published a study farmers
adoption of hybrid seed creating the paradigm - By 1962 Rogers published Diffusion of
Innovations which solidified the paradigm - Coleman, Katz Menzels (1966) study of Medical
Innovation solidified the theory on diffusion
networks
19
20Ryan Gross
- Studied the diffusion of hybrid seed corn,
retrospectively 1928-1941 - 2 communities in Iowa, 255 of 257 farmers adopted
- Contrasted economic and social variables
- Established diffusion paradigm
20
21Number of Diffusion Publications Over Time
21
22Diffusion Publications and Research
InnovationsRatio of Innovations to Publications
Remained Constant
22
23Reasons for Decline
- It was perceived as fallow intellectually (15 of
18 variables used by Ryan Gross) - Political climate was against cultural
imperialism. It was politically incorrect
associated with technological hegemony - Environment suffered from the spread of
technological innovations (pesticides,
herbicides) - Social scientists not trained in matrix methods
to investigate network reasons for diffusion
23
24Research on Innovation Diffusion in Many Fields
- In Demography and fertility transition studies
- In Sociology by re-newed attention on diffusion
networks - In Communication as a tool to evaluate
communication campaigns - In Organizations as a means to understand and
plan change
24
25Diffusion Networks
- A specific branch and approach to diffusion study
- Some might argue that diffusion is only diffusion
when one looks at networks and that other
diffusion studies are behavior or social change - Diffusion networks has been historically the
branch of networks focused on behavior change
25
26Lineage of Diffusion Network Models From Valente
(2006)
- Type (1) Social integration
- Social Factors are important - Ryan Gross 1943
- Social Integration - Coleman Katz Menzel 1966
- Opinion Leaders - Rogers 1964
- Norms - Becker 1970
- Rogers Kincaid 1981
- Type (2) Bridges Structure
- Weak Ties - Granovetter 1973
- Burt 1987 1992
- Watts (2002)
26
27Lineage (cont.)
- Type (3) Critical levels
- Schelling 1972
- Thresholds - Granovetter 1978
- Critical Mass - Marwell, Oliver et al. 1988
Markus 1988 - Network Thresholds - Valente 1995/1996
- Type (4) Dynamics
- Marsden Polodny 1990
- Spatial Temporal Heterogeneity Strang Tuma,
1995 - Valente 1995 2005
27
28(1) Social Integration/ Opinion Leaders
- Integration can be measured many ways
- Behavior is a function of being embedded within
a/the community - Usually operationalized as receiving ties
28
29Coleman Katz Menzel 1966
- Actually 1957 was first paper
- Data collected 1955-1956
- Interviewed all MDs in 4 Illinois cities Peoria,
Bloomington, Galesburg, Quincy - Sampled prescription records first 3 days of each
month to measure Time of Tetracycline Adoption
29
30Diffusion of Tetracycline for Marginal versus
Integrated Doctors
30
31Diffusion Network Simulation w/ 3 Initial
Adopter Conditions (Valente Davis, 1999)
31
32Diffusion Network Game
- Distribute red, white blue chips
- Give
- Red to OLs
- Blue to Randoms and
- White
- Allow them to give chips to those people who
nominated them
32
3333
34Diffusion Network Game
- Distribute Red, White Blue Chips to different
initial starts - Red awareness
- White attitude
- Blue behavior
- Can only receive a white chip if have red one
only receive a blue one if have red white
34
3535
36(2) Structural
- Structural models require data from the entire
network - Can use sociometric data to identify bridges
- Can also use to measure structural equivalence
and constraint
36
37Granovetter, Strength of Weak Ties (1973), AJS
- Seminal article
- Cited thousands of times
- Granovetter was Whites student
- First faculty appointment at JHU
- Left JHU for Stonybrook, now at Stanford
37
38Granovetter, Strength of Weak Ties (cont.)
- Cognitive balance inclines friends of friends to
know friends - transitivity. Granovetter shows
Figure 1 which is the forbidden triad, i.e., this
type of network configuration rarely occurs.
C
The Forbidden Triad
A
B
C
If A B are linked and A C are linked then
it implies that C B are linked
A
B
38
39SWT Bridges created shorter paths
- Bridges - individuals who link otherwise
disconnected sub-groups. Individuals who act as
bridges have weak ties. So a bridge is composed
of weak ties, but not all weak ties are bridges.
I
H
G
D
J
F
C
A
B
K
E
L
Weak Tie
39
40(3) Critical Levels
- Tipping points
- Macro vs. micro tipping points, critical mass vs.
thresholds - Most CM/threshold models were not explicitly
social network explanations
40
41 (4) Dynamics
- Can model how ideas/behaviors spread through a
network - Simplest model assumes static (fixed) network and
the idea spreads on that network - Start with initial adopters and let the behavior
percolate through the network
41
42Network Exposure
Non User
User
Exposure33
Exposure66
Exposure100
42
43Exposure Equation
where E is the exposure matrix, S is the social
network, A is the adoption matrix, n is the
number of respondents, n indicates the sum of
each row, and t is the time period. The exposure
equation is a very general model in which the
social network can be direct relations,
positional relations, narrowly focused, or
broadly focused.
43
44Computing Network Weighted Scores Such as Network
Exposure
Nx1 Vector of Row Totals
Nx1 Vector of Scores
Nx1 Vector of Network Weighted Scores
1 2 3 4 ....N
1 2 3 4 ..N
N x N Adjacency Matrix (or weight matrix)
X
44
45Computing Network Weighted Scores Such as Network
Exposure
Nx1 Vector of Row Totals
Nx1 Vector of Scores
Nx1 Vector of Network Weighted Scores
1 2 3 4 ....N
1 2 3 4 ..N
0 1 0 1 0 . 1 0 1 0 0 . 0 1 0 1 1 . 1 0 0 0
1 . 1 0 0 1 0 . . .
1 0 1 1 0 . .
2 2 3 2 2 . .
.5 1.0 .33 .5 1.0 . .
X
45
46NxT Matrix of Exposure Scores
1 2 3 4 ...T
1 2 3 4 ..N
0.00 0.25 0.50 0.50 ... 0.00 0.00 0.00 0.00
. 0.00 0.00 0.00 0.00 . 0.25 0.25 0.25 0.25
. 0.33 0.33 0.66 1.00 . . .
46
474. Personal network exposure
- Personal network exposure is the degree an
individual is exposed to an innovation through
his/her personal network. - Network exposure provides
- 1. awareness information
- 2. influence/persuasion
- 3. detailed information on how to get the
innovation, possible problems, updates, refills,
enhancements, novel uses - 4. something to talk about
47
48Network Exposure (cont.)
- 5. social support needed to face opposition
- 6. reinforcement and a sense of belonging
- 7. relay experiences
- Exposure computed on direct ties and on ties of
ties by using the geodesic and weighing the ties
by its inverse. - Every network has a different maximum geodesic
measure so we need to approximate the influence
of any one point on any other point. Luckily the
flow matrix has been created which does precisely
that.
48
49Three Studies with Data on Time-of-adoption
Social Networks
49
50Datasets
- Provide static view of network
- 1 based on observational data on adoption (but it
is sampled) - 2 based on recall- though recall is probably
pretty good - They are varied and the network data are pretty
good
50
51Two of these Datasets Have Received the Most
Attention
- Medical innovation by Coleman, Katz Menzel
(1966) - Burt, 1987 Marsden Podolny 1990 Strang and
Tuma, 1993 Valente, 1995 1996 Van den Bulte
Lilien, 2001 - Korean family planning by Rogers Kincaid
(1981) - Dozier, 1977 Montgomery, 1994 Valente,
1995 1996.
51
52Regression on Time to Adoption by Network
Exposure External Contacts
52
53Maximum Likelihood Logistic Regression on
Adoption by Time, Ties Sent/Received Network
Exposure.
53
54Exposure Adoption?
- Represents a challenge to the diffusion and
other behavior change models - Could be a function of location on the diffusion
curve more likely after critical mass - Very disappointing from a replication perspective
- What model can explain this?
54
55Network Threshold
Non User
User
PN Threshold33
PN Threshold66
PN Threshold100
55
56Graph of KFP Communication Network Rogers
Kincaid, 1981
56
57Graph of Time of Adoption by Network Threshold
for One Korean Family Planning Community
100
Threshold
0
57
Time
1973
1963
58Table Adjusted Odds Ratios for the Likelihood of
Low and High-threshold Adoption.
58
59Network Structure
- Network structure is partly defined by
centrality. - Central members, popular students for example,
both influence and are influenced by group norms - Central members can also contribute
disproportionately to peer influence at micro
level
59
60Agent Based Models
- Advent of computing has enabled scientists to
generate hypothetical scenarios and model how
people interact - Fundamental issue is
- Do assumptions match reality
- Are the processes reasonable
61First Contact Diffusion (Rumor)/Random Seeds
61
62Rate of Diffusion
- Network Structure
- Real Rnd Cent Clustered
- Seeds Leaders 0.16 0.42 0.41 0.27
- Random 0.18 0.43 0.41 0.27
- Between 0.20 0.45 0.47 0.27
- Marginals 0.20 0.44 0.45 0.27
63Simulated Network Structural Properties