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|a Ortiz, Dania
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|a Migueis, Vera
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|a Leal, Vitor
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|a Knox-Hayes, Janelle
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|a Chun, Jungwoo
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|a Analysis of Renewable Energy Policies through Decision Trees
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|b Multidisciplinary Digital Publishing Institute,
|c 2022-07-11T14:39:44Z.
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|u https://hdl.handle.net/1721.1/143639
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|a This paper presents an alternative way of making predictions on the effectiveness and efficacy of Renewable Energy (RE) policies using Decision Trees (DT). As a data-driven process for decision-making, the analysis uses the Renewable Energy (RE) target achievement, predicting whether or not a RE target will likely be achieved (efficacy) and to what degree (effectiveness), depending on the different criteria, including geographical context, characterizing concerns, and policy characteristics. The results suggest different criteria that could help policymakers in designing policies with a higher propensity to achieve the desired goal. Using this tool, the policy decision-makers can better test/predict whether the target will be achieved and to what degree. The novelty in the present paper is the application of Machine Learning methods (through the Decision Trees) for energy policy analysis. Machine learning methodologies present an alternative way to pilot RE policies before spending lots of time, money, and other resources. We also find that using Machine Learning techniques underscores the importance of data availability. A general summary for policymakers has been included.
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