Dynamic Portfolio Management for Property and Casualty Insurance

Author(s):  
Giorgio Consigli ◽  
Massimo di Tria ◽  
Michele Gaffo ◽  
Gaetano Iaquinta ◽  
Vittorio Moriggia ◽  
...  
2021 ◽  
Author(s):  
XINYU HUANG ◽  
Massimo Guidolin ◽  
Emmanouil Platanakis ◽  
David Newton

2020 ◽  
Vol 32 (23) ◽  
pp. 17229-17244
Author(s):  
Giorgio Lucarelli ◽  
Matteo Borrotti

AbstractDeep reinforcement learning is gaining popularity in many different fields. An interesting sector is related to the definition of dynamic decision-making systems. A possible example is dynamic portfolio optimization, where an agent has to continuously reallocate an amount of fund into a number of different financial assets with the final goal of maximizing return and minimizing risk. In this work, a novel deep Q-learning portfolio management framework is proposed. The framework is composed by two elements: a set of local agents that learn assets behaviours and a global agent that describes the global reward function. The framework is tested on a crypto portfolio composed by four cryptocurrencies. Based on our results, the deep reinforcement portfolio management framework has proven to be a promising approach for dynamic portfolio optimization.


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