Corpus ID: 235358410

3D Tensor-based Deep Learning Models for Predicting Option Price

  title={3D Tensor-based Deep Learning Models for Predicting Option Price},
  author={Muyang Ge and Shen Zhou and Shijun Luo and Bo Tian},
Option pricing is a significant problem for option risk management and trading. In this article, we utilize a framework to present financial data from different sources. The data is processed and represented in a form of 2D tensors in three channels. Furthermore, we propose two deep learning models that can deal with 3D tensor data. Experiments performed on the Chinese market option dataset prove the practicability of the proposed strategies over commonly used ways, including B-S model and… Expand

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