Selected article for: "important feature and model important feature"

Author: Matsui, Toshiko; Perez, Daniel
Title: Data-driven analysis of central bank digital currency (CBDC) projects drivers
  • Cord-id: 9pe1uw50
  • Document date: 2021_2_23
  • ID: 9pe1uw50
    Snippet: In this paper, we use a variety of machine learning methods to quantify the extent to which economic and technological factors are predictive of the progression of Central Bank Digital Currencies (CBDC) within a country, using as our measure of this progression the CBDC project index (CBDCPI). We find that a financial development index is the most important feature for our model, followed by the GDP per capita and an index of the voice and accountability of the country's population. Our results
    Document: In this paper, we use a variety of machine learning methods to quantify the extent to which economic and technological factors are predictive of the progression of Central Bank Digital Currencies (CBDC) within a country, using as our measure of this progression the CBDC project index (CBDCPI). We find that a financial development index is the most important feature for our model, followed by the GDP per capita and an index of the voice and accountability of the country's population. Our results are consistent with previous qualitative research which finds that countries with a high degree of financial development or digital infrastructure have more developed CBDC projects. Further, we obtain robust results when predicting the CBDCPI at different points in time.

    Search related documents:
    Co phrase search for related documents
    • Try single phrases listed below for: 1