Chien-fei Chen , Rebecca Napolitano , Yuqing Hu , Bandana Kar , Bing Yao
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Addressing machine learning bias to foster energy justice
Energy justice advocates for the equitable and accessible provision of energy services, mainly focusing on marginalized communities. Adopting machine learning in analyzing energy-related data can unintentionally reinforce social inequalities. This perspective highlights the stages in the machine learning process where biases may emerge, from data collection and model development to deployment. Each phase presents distinct challenges and consequences, ultimately influencing the fairness and accuracy of machine learning models. The ramifications of machine learning bias within the energy sector are profound, encompassing issues such as inequalities, the perpetuation of negative feedback loops, privacy concerns regarding, and economic impacts arising from energy burden and energy poverty. Recognizing and rectifying these biases is imperative for leveraging technology to advance society rather than perpetuating existing injustices. Addressing biases at the intersection of energy justice and machine learning requires a comprehensive approach, acknowledging the interconnectedness of social, economic, and technological factors.
期刊介绍:
Energy Research & Social Science (ERSS) is a peer-reviewed international journal that publishes original research and review articles examining the relationship between energy systems and society. ERSS covers a range of topics revolving around the intersection of energy technologies, fuels, and resources on one side and social processes and influences - including communities of energy users, people affected by energy production, social institutions, customs, traditions, behaviors, and policies - on the other. Put another way, ERSS investigates the social system surrounding energy technology and hardware. ERSS is relevant for energy practitioners, researchers interested in the social aspects of energy production or use, and policymakers.
Energy Research & Social Science (ERSS) provides an interdisciplinary forum to discuss how social and technical issues related to energy production and consumption interact. Energy production, distribution, and consumption all have both technical and human components, and the latter involves the human causes and consequences of energy-related activities and processes as well as social structures that shape how people interact with energy systems. Energy analysis, therefore, needs to look beyond the dimensions of technology and economics to include these social and human elements.