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How good is good? Probabilistic benchmarks and nanofinance+

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  • Rolando Gonzales Martinez

Abstract

Benchmarks are standards that allow to identify opportunities for improvement among comparable units. This study suggests a 2-step methodology for calculating probabilistic benchmarks in noisy data sets: (i) double-hyperbolic undersampling filters the noise of key performance indicators (KPIs), and (ii) a relevance vector machine estimates probabilistic benchmarks with denoised KPIs. The usefulness of the methods is illustrated with an application to a database of nano-finance+. The results indicate that-in the case of nano-finance groups-a higher discrimination power is obtained with variables that capture the macro-economic environment of the country where a group operates. Also, the estimates show that groups operating in rural regions have different probabilistic benchmarks, compared to groups in urban and peri-urban areas.

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  • Rolando Gonzales Martinez, 2021. "How good is good? Probabilistic benchmarks and nanofinance+," Papers 2103.01669, arXiv.org.
  • Handle: RePEc:arx:papers:2103.01669
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    References listed on IDEAS

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