基于模型的聚类方法分析能源相关金融知识及其决定因素

Nilkanth Kumar
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引用次数: 11

摘要

最近的研究强调了消费者与能源有关的财务知识在采用节能家用电器方面的作用,以便缩小家庭部门的能源效率差距。不过,这种读写能力衡量指标的计算遵循了一种不太精确的方法。本文演示了基于模型的聚类策略的使用,以便根据与能源相关的金融知识水平区分人口。使用瑞士6,722名受访者的数据,我们能够确定三个潜在群体,分别代表低、中、高水平的读写能力。我们在有序logit设置中使用这种新措施,目的是解释与能源相关的金融素养水平的决定因素,并使用经典指标和方法比较实证结果。实证研究结果表明,瑞士人口中存在显著的性别差距,即女性,即使是受过大学教育的女性,也不太可能拥有与能源相关的高水平金融知识。研究还发现,那些对自己的节能行为表现出强烈关注的人,属于低文化水平群体的几率更高。结果表明,识别具有一般和直观含义的潜在类是可能的,并为基于模型的聚类方法作为一种复杂的替代方法提供了支持。当实证研究人员对(基于属性的)潜在消费者群体感兴趣时,这可能是一种有用的方法。对潜在阶层的识别也提供了一种可能性,以属于这些阶层的消费者为目标,采取具体的政策措施,以提高他们的识字水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Model-based Clustering Approach for Analyzing Energy-related Financial Literacy and Its Determinants
Recent research highlights the role of consumer’s energy-related financial literacy in adoption of energy efficient household appliances in order to reduce the energy-efficiency gap within the household sector. The computation of an indicator for such a literacy measure has followed a somewhat less refined approach though. This paper demonstrates the use of a model-based clustering strategy in order to differentiate the population based on the level of energy-related financial literacy. Using a Swiss data with 6, 722 respondents, we are able to identify three latent groups that represent low, mid and high levels of literacy. We use this new measure within an ordered logit setting with the goal of explaining the determinants of the level of energy-related financial literacy and compare empirical results using classical indicators and approaches. The empirical findings suggest a significant gender-gap among the Swiss population, i.e. females, even those with university education, are less likely to possess a high level of energy-related financial literacy. Individuals who display strong concern for free-riding on their own energy reduction behavior, are also found to have higher odds of belonging to the low literacy group. The results show that it is possible to identify latent classes that have a general and intuitive meaning and provides support to the model-based clustering approach as a sophisticated alternative. This could be a useful approach when empirical researchers are interested in (attribute-based) latent groups of consumers. The identification of latent classes also provides a possibility to target consumers belonging to these classes with specific policy measures in order to increase their level of literacy.
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