Neural Networks for Delta Hedging
The Black-Scholes model, defined under the assumption of a perfect financial market, theoretically creates a flawless hedging strategy allowing the trader to evade risks in a portfolio of options. However, the concept of a "perfect financial market," which requires zero transaction and con...
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Zusammenfassung: | The Black-Scholes model, defined under the assumption of a perfect financial
market, theoretically creates a flawless hedging strategy allowing the trader
to evade risks in a portfolio of options. However, the concept of a "perfect
financial market," which requires zero transaction and continuous trading, is
challenging to meet in the real world. Despite such widely known limitations,
academics have failed to develop alternative models successful enough to be
long-established. In this paper, we explore the landscape of Deep Neural
Networks(DNN) based hedging systems by testing the hedging capacity of the
following neural architectures: Recurrent Neural Networks, Temporal
Convolutional Networks, Attention Networks, and Span Multi-Layer Perceptron
Networks. In addition, we attempt to achieve even more promising results by
combining traditional derivative hedging models with DNN based approaches.
Lastly, we construct \textbf{NNHedge}, a deep learning framework that provides
seamless pipelines for model development and assessment for the experiments. |
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DOI: | 10.48550/arxiv.2112.10084 |