Model proposition for predicting sustainability classes using multicriteria decision support and artificial intelligence

Ayrton Benedito Gaia do Couto, L. Rangel
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Abstract

Abstract: The current study proposes a novel prediction model of sustainability classes for electricity distribution companies in Brazil, based on sustainability indicators, aiming at a more effective risk management for a certain company among their competitors. Because such indicators are based on quantitative and qualitative measures and are very likely to incur imprecisions in their measures, the model to be proposed is based on a Multicriteria Decision Support, Rough Sets Theory, which allows the mathematical treatment of those imprecisions, and Artificial Intelligence, in this case, Machine Learning by rules inference. Consequently, decision tables are generated with condition attributes, sustainability indicators, and decision attributes, sustainability classes: high, medium or low. As a result, it is possible to predict sustainability classes based in temporal series of indicators and rules inference from decision tables, using RoughSets package in R and the jMAF software, demonstrating the use of five rule generation algorithms and their respective accuracies.
使用多标准决策支持和人工智能预测可持续性课程的模型命题
摘要:本文基于可持续性指标,提出了一种新的巴西配电公司可持续性等级预测模型,旨在对某公司在竞争对手中进行更有效的风险管理。由于这些指标基于定量和定性度量,并且很可能在度量中产生不精确,因此提出的模型基于多标准决策支持,粗糙集理论,允许对这些不精确进行数学处理,以及人工智能,在这种情况下,通过规则推理的机器学习。因此,生成的决策表包含条件属性、可持续性指标和决策属性、可持续性等级:高、中或低。因此,使用R中的RoughSets包和jMAF软件,可以根据指标的时间序列和决策表中的规则推断来预测可持续性类别,展示了五种规则生成算法的使用及其各自的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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