Deep Reinforcement Learning for Asset Allocation: Reward Clipping
Recently, there are many trials to apply reinforcement learning in asset allocation for earning more stable profits. In this paper, we compare performance between several reinforcement learning algorithms - actor-only, actor-critic and PPO models. Furthermore, we analyze each models' character...
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Zusammenfassung: | Recently, there are many trials to apply reinforcement learning in asset
allocation for earning more stable profits. In this paper, we compare
performance between several reinforcement learning algorithms - actor-only,
actor-critic and PPO models. Furthermore, we analyze each models' character and
then introduce the advanced algorithm, so called Reward clipping model. It
seems that the Reward Clipping model is better than other existing models in
finance domain, especially portfolio optimization - it has strength both in
bull and bear markets. Finally, we compare the performance for these models
with traditional investment strategies during decreasing and increasing
markets. |
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DOI: | 10.48550/arxiv.2301.05300 |