Publication | Closed Access
Graph-Theoretic Measures of Multivariate Association and Prediction
116
Citations
12
References
1983
Year
EngineeringStatistical FoundationNetwork AnalysisInterpoint-distance-based GraphsGeneralized Correlation CoefficientLink PredictionData ScienceMultivariate AssociationStatisticsSocial Network AnalysisGraphical ModelKnowledge DiscoveryMultidimensional AnalysisAsymmetric CoefficientFunctional Data AnalysisGraph TheoryHigh-dimensional MethodBusinessStatistical InferenceGraph AnalysisMultivariate Analysis
Interpoint-distance-based graphs can be used to define measures of association that extend Kendall's notion of a generalized correlation coefficient. We present particular statistics that provide distribution-free tests of independence sensitive to alternatives involving non-monotonic relationships. Moreover, since ordering plays no essential role, the ideas are fully applicable in a multivariate setting. We also define an asymmetric coefficient measuring the extent to which (a vector) $X$ can be used to make single-valued predictions of (a vector) $Y$. We discuss various techniques for proving that such statistics are asymptotically normal. As an example of the effectiveness of our approach, we present an application to the examination of residuals from multiple regression.
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