This work studies the deep learning-based numerical algorithms for optimal hedging problems in markets with general convex transaction costs on the trading rates, focusing on their scalability of trading time horizon. Based on the comparison results of the FBSDE solver by Han, Jentzen, and E (2018) and the Deep Hedging algorithm by Buehler, Gonon, Teichmann, and Wood (2019), we propose a Stable Transfer Hedging (ST-Hedging) algorithm, to aggregate the convenience of the leading-order approximation formulas and the accuracy of the deep learning-based algorithms. Our ST-Hedging algorithm achieves the same state-of-the-art performance in short and moderately long time horizon as FBSDE solver and Deep Hedging, and generalize well to long time h...
Nowadays many financial derivatives, such as American or Bermudan options, are of early exercise typ...
We consider the optimal investment and consumption with proportional transaction cost problem in a m...
Deep learning has been widely used in hedge funds and asset management firms. The increasing complex...
Inspired by the recent paper Buehler et al. (2018), this thesis aims to investigate the optimal hedg...
Using techniques from deep learning, we show that neural networks can be trained successfully to rep...
We present a method for finding optimal hedging policies for arbitrary initial portfolios and market...
The computational speedup of computers has been one of the de ning characteristics of the 21st centu...
There is a growing number of applications of machine learning and deep learning in quantitative and ...
Machine learning and deep learning have realized incredible success in areas such as computer vision...
An algorithm that can learn an optimal policy to execute trade profitable is any market participant’...
Models trained under assumptions in the complete market usually don't take effect in the incomplete ...
This thesis proposes an application of state-of-the-art continuous action reinforcement learning for...
In this paper we introduce a deep learning method for pricing and hedging American-style options. It...
This paper proposes a new approach to pricing European options using deep learning techniques under ...
We present an actor-critic-type reinforcement learning algorithm for solving the problem of hedging ...
Nowadays many financial derivatives, such as American or Bermudan options, are of early exercise typ...
We consider the optimal investment and consumption with proportional transaction cost problem in a m...
Deep learning has been widely used in hedge funds and asset management firms. The increasing complex...
Inspired by the recent paper Buehler et al. (2018), this thesis aims to investigate the optimal hedg...
Using techniques from deep learning, we show that neural networks can be trained successfully to rep...
We present a method for finding optimal hedging policies for arbitrary initial portfolios and market...
The computational speedup of computers has been one of the de ning characteristics of the 21st centu...
There is a growing number of applications of machine learning and deep learning in quantitative and ...
Machine learning and deep learning have realized incredible success in areas such as computer vision...
An algorithm that can learn an optimal policy to execute trade profitable is any market participant’...
Models trained under assumptions in the complete market usually don't take effect in the incomplete ...
This thesis proposes an application of state-of-the-art continuous action reinforcement learning for...
In this paper we introduce a deep learning method for pricing and hedging American-style options. It...
This paper proposes a new approach to pricing European options using deep learning techniques under ...
We present an actor-critic-type reinforcement learning algorithm for solving the problem of hedging ...
Nowadays many financial derivatives, such as American or Bermudan options, are of early exercise typ...
We consider the optimal investment and consumption with proportional transaction cost problem in a m...
Deep learning has been widely used in hedge funds and asset management firms. The increasing complex...