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Einleitung des Herausgebers

Wie der Titel schon sagt, enthält dieser Abschnitt einige einführende Arbeiten zur Ökonometrie, die Ihnen helfen werden, das Thema zu verstehen und eine breitere Perspektive zu gewinnen.

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Aher, V. (2023). Einführung und Überblick. In: Aher, V. (eds) Statistische und mathematische Methoden in der Wirtschaft. Springer Gabler, Wiesbaden. https://doi.org/10.1007/978-3-658-39275-8_1

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