This thesis investigates the problem of statistical hedging with artificial neural networks (ANNs). The statistical hedging is a data-driven approach that derives hedging strategy from data and hence does not rely on making assumptions of the underlying asset. Consider an investor who sells an option and wishes to hedge it with some amount of underlying asset. ANNs can be used to determine this number by minimising the discrete hedging error. In the first chapter, we provide a comprehensive literature review of papers on the topic of using ANNs for option pricing and hedging, as well as other related ones. Based on our research experience and summary of papers, we provide several advices that we believe are critical in using ANNs for option...
In this paper I study whether a deep feedforward network model performs better than the Black- Schol...
This paper proposes a new approach to pricing European options using deep learning techniques under ...
Abstract Neural network algorithms are applied to the problem of option pricing and adopted to sim...
We study neural networks as nonparametric estimation tools for the hedging of options. To this end, ...
We study neural networks as nonparametric estimation tools for the hedging of options. To this end, ...
Machine learning and deep learning have realized incredible success in areas such as computer vision...
Inspired by the recent paper Buehler et al. (2018), this thesis aims to investigate the optimal hedg...
This paper gives an overview of the research that has been conducted regarding neural networks in op...
The Black-Scholes formula is a well-known model for pricing and hedging derivative securities. It re...
A neural network model for hedging crude oil is introduced. The NYMEX futures prices is used t...
In this paper, we start from the no-arbitrage constraints in option pricing and develop a novel hybr...
This paper compares the performance of artificial neural networks (ANNs) with that of the modified B...
In this paper, we start from the no-arbitrage constraints in option pricing and develop a novel hybr...
This paper compares the performance of artificial neural networks (ANNs) with that of the modified B...
We study the capability of arbitrage-free neural-SDE market models to yield effective strategies for...
In this paper I study whether a deep feedforward network model performs better than the Black- Schol...
This paper proposes a new approach to pricing European options using deep learning techniques under ...
Abstract Neural network algorithms are applied to the problem of option pricing and adopted to sim...
We study neural networks as nonparametric estimation tools for the hedging of options. To this end, ...
We study neural networks as nonparametric estimation tools for the hedging of options. To this end, ...
Machine learning and deep learning have realized incredible success in areas such as computer vision...
Inspired by the recent paper Buehler et al. (2018), this thesis aims to investigate the optimal hedg...
This paper gives an overview of the research that has been conducted regarding neural networks in op...
The Black-Scholes formula is a well-known model for pricing and hedging derivative securities. It re...
A neural network model for hedging crude oil is introduced. The NYMEX futures prices is used t...
In this paper, we start from the no-arbitrage constraints in option pricing and develop a novel hybr...
This paper compares the performance of artificial neural networks (ANNs) with that of the modified B...
In this paper, we start from the no-arbitrage constraints in option pricing and develop a novel hybr...
This paper compares the performance of artificial neural networks (ANNs) with that of the modified B...
We study the capability of arbitrage-free neural-SDE market models to yield effective strategies for...
In this paper I study whether a deep feedforward network model performs better than the Black- Schol...
This paper proposes a new approach to pricing European options using deep learning techniques under ...
Abstract Neural network algorithms are applied to the problem of option pricing and adopted to sim...