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Linganisha mbinu

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MRQAP Network Regression×Network Autocorrelation Model×
NyanjaSociologySociology
FamiliaRegression modelRegression model
Mwaka wa asili1988 (MRQAP); 2007 (double-semipartialing test)1980 (spatial/network models); 2002 (weight matrix)
MwanzilishiDavid Krackhardt; David Dekker, David Krackhardt & Tom SnijdersPatrick Doreian; Roger Leenders (weight-matrix synthesis)
AinaPermutation-based multiple regression for dyadic (matrix) outcomesRegression with an autoregressive term on a network weight matrix
Chanzo asiliaKrackhardt, D. (1988). Predicting with networks: Nonparametric multiple regression analysis of dyadic data. Social Networks, 10(4), 359–381. DOI ↗Leenders, R. Th. A. J. (2002). Modeling social influence through network autocorrelation: Constructing the weight matrix. Social Networks, 24(1), 21–47. DOI ↗
Majina mbadalaMRQAP, multiple regression QAP, Dekker double-semipartialing, QAP regressionnetwork effects model, social influence model, network disturbances model, autoregressive network model
Zinazohusiana44
MuhtasariMultiple 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.The network autocorrelation model adapts spatial-econometric regression to social networks to estimate peer influence: it explains an actor's outcome — an attitude, behavior, or performance — as a function of their own covariates plus a weighted average of their network partners' outcomes. The autocorrelation parameter ρ captures the strength of social influence, and the network weight matrix W encodes who influences whom and how strongly.
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  1. v1
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  3. PUBLISHED

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ScholarGateLinganisha mbinu: MRQAP Network Regression · Network Autocorrelation Model. Imepatikana 2026-06-24 kutoka https://scholargate.app/sw/compare