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  • title: Analyzing the Global Energy Discourse with Machine Learning
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            Analyzing the Global Energy Discourse with Machine Learning
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            Analyzing the Global Energy Discourse with Machine Learning

            Dez 2, 2022

            Sprecher:innen

            MT

            Malte Toetzke

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            BP

            Benedict Probst

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            YT

            Yasin Tatar

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            Über

            To transform our economy towards net-zero emissions, industrial development of clean energy technologies (CETs) to replace fossil energy technologies (FETs) is crucial. Although the media has great power in influencing consumer behavior and decision making in business and politics, its role in the energy transformation is still underexplored. In this paper, we analyze the global energy discourse via machine learning. For this, we collect a large-scale dataset with  5 million news articles …

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            NeurIPS 2022

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