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Machine Learning and Finance

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Theories of Change

Part of the book series: Sustainable Finance ((SUFI))

Abstract

The article provides a short overview of recent developments driven by the application of Artificial Intelligence (AI) or, more specifically, Machine Learning (ML) in the financial sector. The focus is on the practical consequences of ML use, especially at Pretrade analytics, Portfolio Management or in the field of service.

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Correspondence to Bernhard Villhauer .

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Villhauer, B. (2021). Machine Learning and Finance. In: Wendt, K. (eds) Theories of Change. Sustainable Finance. Springer, Cham. https://doi.org/10.1007/978-3-030-52275-9_22

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