dyadic designs to model relations in social interaction data todd d. little yale university

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Dyadic designs to model Dyadic designs to model relations in social relations in social interaction data interaction data Todd D. Little Yale University

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Page 1: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

Dyadic designs to model Dyadic designs to model relations in social interaction relations in social interaction

datadata

Todd D. Little

Yale University

Page 2: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

OutlineOutline

•Why have such a symposium

•Dyadic Designs and Analyses

•Thoughts on Future Directions

Page 3: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

Some Bad MethodsSome Bad Methods

•Dyad-level Setups (Ignore individuals)•Target-Partner Setups

• Arbitrary assignment of target vs partner•Loss of power•Often underestimates relations•Ignores dyadic impact

•Target with multiple-Partner• Take average of partners to reduce dyad-

level influences•Doesn't really do it•Ignores dyadic impact

Page 4: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

Intraclass SetupsIntraclass Setups

•Represents target with partner & partner with target in same data structure

•Exchangeable case (target/partner arbitrary)•Distinguishable case (something systematic)

• Keeps dyadic influence• Contains dependencies• Requires adjustments for accurate statistical

inferences (see e.g., Gonzalez & Griffin)

Page 5: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

Between-Friend Correlations

NN EE OO AA CC

Child-Rated

.05 .10 .06 .06 .06

Parent-Rated

.07 .02 .06 -.04 .17

Teacher-Rated

.35 .21 .29 .36 .30

Page 6: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

Canonical Correlations

All .16 .26 .485 .31 .59 .536 .34 .66 .637 .17 .42 .738 .16 .34 .739 .28 .44 .65

10 .26 .40 .61

Child-Rated

Parent-Rated

Teacher-Rated

Grade

Page 7: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

Social Relations Model (Kenny et al.)Social Relations Model (Kenny et al.)

•Xijk = mk + ai + bj + gij + eijk

Where Xijk is the actor i's behavior with partner j at occasion kmk is a grand mean or intercept ai is variance unique to the actor ibj is variance unique to the partner jgij is variance unique to the ij-dyadeijk is error variance

•Round-Robin designs: (n * (n-1) / 2)• Sample from all possible interactions

•Block designs: p persons interact with q persons• Checker-board: multiple p's and q's of 2 or more

Page 8: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

Development

Gender

Persistence

Tenure

RelativeAbility to Compete

Onlooking

Directives

Imitation.12

.39

-25

.68

.51

-.26

-.27

From Hawley & Little, 1999

SEM of a Block Design SEM of a Block Design

Page 9: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

Multilevel ApproachesMultilevel Approaches

• Distinguish HLM (a specific program) from hierarchical linear modeling, the technique– A generic term for a type of analysis

• Probably best to discuss MRC(M) Modeling– Multilevel Random Coefficient Modeling

• Different program implementations– HLM, MLn, SAS, BMDP, LISREL, and others

Page 10: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

"Once you know that "Once you know that hierarchies exist, hierarchies exist,

you see them you see them everywhere."everywhere."

-Kreft and de Leeuw (1998)

Page 11: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

Logic of MRCMLogic of MRCM

• Coefficients describing level 1 phenomena are estimated within each level 2 unit (e.g., individual-level effects)– Intercepts—means

– Slopes—covariance/regression coefficients

• Level 1 coefficients are also analyzed at level 2 (e.g., dyad-level effects)– Intercepts: mean effect of dyad

– Slopes: effects of dyad-level predictors

Page 12: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

Negative Individual, Positive GroupNegative Individual, Positive Group

Page 13: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

Positive Individual, Negative GroupPositive Individual, Negative Group

Page 14: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

No Individual, Positive GroupNo Individual, Positive Group

Page 15: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

No Group, Mixed IndividualNo Group, Mixed Individual

Page 16: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

A Contrived ExampleA Contrived Example

• Yij = Friendship Closeness ratings of each

individual i within each dyad j.

• Level 1 Measures: Age & Social Skill of

the individual participants

• Level 2 Measures: Length of Friendship

& Gender Composition of Friendship

Page 17: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

The EquationsThe Equations

yij = 0j + 1jAge + 2jSocSkill + 3jAge*Skill + rij

The Level 1 Equation:

0j = 00 + 01(Time) + 02(Gnd) + 03(Time*Gnd) + u0j

1j = 10 + 11(Time) + 12(Gnd) + 13(Time*Gnd) + u1j

2j = 20 + 21(Time) + 22(Gnd) + 23(Time*Gnd) + u2j

3j = 30 + 31(Time) + 32(Gnd) + 33(Time*Gnd) + u3j

The Level 2 Equations:

Page 18: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

Future DirectionsFuture Directions

•OLS vs. ML estimator and bias

•Individual-oriented data vs. dyad-oriented data

•Thoughts on Future Directions

Page 19: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

Level 1 Equations: Level 1 Equations: Meaning of Intercepts Meaning of Intercepts

• Y = Friendship Closeness Ratings– i individuals– across j dyads– rij individual level error

• Intercept (Dyad-mean Closeness)– Yij = 0j + rij

Page 20: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

Level 2 Equations:Level 2 Equations:Meaning of Intercepts Meaning of Intercepts

• Do Dyad Means Differ?

• Mean Closeness across Dyads– 0j = 00 + u0j

• Mean Closeness and dyad-level variables (time together and gender composition)– 0j = 00 + 01 (TIME) + 02 (Gen) + u0j

Page 21: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

Level 1 Equations: Level 1 Equations: Meaning of SlopeMeaning of Slope

• E.g., Relationship between Closeness and Social Skill within each dyad– Yij = 0j + 2j (SocSkil) + rij

• Intercept for each dyad:0j

• Social Skill slope for each dyad:2j

Page 22: Dyadic designs to model relations in social interaction data Todd D. Little Yale University

Level 2 Equations: Level 2 Equations: Meaning of SlopesMeaning of Slopes

• Mean Social Skill-Closeness relationship across all dyads

– j = 10 + u1j

• Does SocSkill-Closeness relationship vary as a function of how long the dyad has been together?– 1j = 10 + 11(TIME) + u1j