Item Details
Skip Navigation Links
   ActiveUsers:852Hits:19998474Skip Navigation Links
Show My Basket
Contact Us
IDSA Web Site
Ask Us
Today's News
HelpExpand Help
Advanced search

In Basket
  Journal Article   Journal Article
 

ID179692
Title ProperExploring the complex origins of energy poverty in the Netherlands with machine learning
LanguageENG
AuthorLonga, Francesco Dalla ;  Sweerts, Bart ;  Van der Zwaan, Bob
Summary / Abstract (Note)Energy poverty is receiving increased attention in developed countries like the Netherlands. Although it only affects a relatively small share of the population, it constitutes a stern challenge that is hard to quantify and monitor, hence difficult to effectively tackle through adequate policy measures. In this paper we introduce a framework to categorize energy poverty risk based on income and energy expenditure. We propose the use of a machine learning classifier to predict energy poverty risk from a broad set of socio-economic parameters: house value, ownership and age, household size, and average population density. While income remains the single most important predictor, we find that the inclusion of these additional socio-economic features is indispensable in order to achieve high prediction reliability. This result forms an indication of the complex nature of the mechanisms underlying energy poverty. Our findings are valid at different geographical scales, i.e. both for single households and for entire neighborhoods. Extensive sensitivity analysis shows that our results are independent of the precise position of risk category boundaries. The outcomes of our study indicate that machine learning could be used as an effective means to monitor energy poverty, and assist the design and implementation of appropriate policy measures.
`In' analytical NoteEnergy Policy Vol. 156; Sep 2021: p.112373
Journal SourceEnergy Policy 2021-09 156
Key WordsEnergy Poverty ;  Household Energy Demand ;  Energy Affordability