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Dokumenttyp:
Masterarbeit
Autor(en):
Bürgermeister, Janik
Titel:
Reinforcement Learning for Dynamic Investment Strategies in Continuous Time
Abstract:
In this thesis, we investigate the applicability of reinforcement learning to dynamic investment strategies in continuous time. Firstly, we derive optimal trading and consumption strategies for an utility maximizing investor in a Black-Scholes market. In particular, we consider the logarithmic and power utility. To bridge the theoretical gap between continuous-time portfolio optimization and discrete-time RL, we also derive the discretized optimal trading and consumption strategies and the opti...     »
Aufgabensteller:
Prof. Dr. Rudi Zagst
Betreuer:
Michel Kschonnek
Jahr:
2022
Hochschule / Universität:
Technische Universität München
TUM Einrichtung:
Lehrstuhl für Finanzmathematik
Bearbeitungsbeginn:
15.06.2022
Bearbeitungsende:
15.03.2023
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