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Optimizing Data-driven Weights In Multidimensional Indexes

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arxiv 2504.06012 v1 pith:ZLYNPKGJ submitted 2025-04-08 econ.EM stat.AP

Optimizing Data-driven Weights In Multidimensional Indexes

classification econ.EM stat.AP
keywords weightsapproachindexesmodelsmultidimensionalpropertiesacrossattributing
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Multidimensional indexes are ubiquitous, and popular, but present non-negligible normative choices when it comes to attributing weights to their dimensions. This paper provides a more rigorous approach to the choice of weights by defining a set of desirable properties that weighting models should meet. It shows that Bayesian Networks is the only model across statistical, econometric, and machine learning computational models that meets these properties. An example with EU-SILC data illustrates this new approach highlighting its potential for policies.

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