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MRQAP Network Regression×Dyadic Analysis×
CampSociologySociology
FamíliaRegression modelRegression model
Any d'origen1988 (MRQAP); 2007 (double-semipartialing test)1981
Autor originalDavid Krackhardt; David Dekker, David Krackhardt & Tom SnijdersHolland & Leinhardt (p1); Kenny (Social Relations Model)
TipusPermutation-based multiple regression for dyadic (matrix) outcomesAnalysis of the dyad as the unit, decomposing relational effects
Font seminalKrackhardt, D. (1988). Predicting with networks: Nonparametric multiple regression analysis of dyadic data. Social Networks, 10(4), 359–381. DOI ↗Holland, P. W., & Leinhardt, S. (1981). An exponential family of probability distributions for directed graphs. Journal of the American Statistical Association, 76(373), 33–50. DOI ↗
ÀliesMRQAP, multiple regression QAP, Dekker double-semipartialing, QAP regressiondyad analysis, dyadic data analysis, social relations model, dyad census
Relacionats44
ResumMultiple regression quadratic assignment procedure (MRQAP) extends QAP to the regression setting: it predicts a dependent relational matrix from several independent relational matrices on the same actors — for example, modeling who collaborates with whom as a function of who is co-located, who shares a department, and who has prior friendship. Coefficients are estimated by ordinary least squares on the vectorized matrices, but significance is assessed by permutation, because dyadic dependence invalidates the standard regression standard errors.Dyadic analysis treats the dyad — the pair of actors and the relation between them — as the unit of analysis, separating the relational outcome into what each actor brings to all their relationships and what is unique to the specific pair. It spans the descriptive dyad census of network analysis and statistical frameworks such as Holland and Leinhardt's p1 model and Kenny's Social Relations Model, all of which respect the structural non-independence inherent in relational data.
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ScholarGateCompara mètodes: MRQAP Network Regression · Dyadic Analysis. Recuperat el 2026-06-24 de https://scholargate.app/ca/compare