The evaluations of option prices and implied volatility are critical for option risk management and trading. Common strategies in existing studies relied on the parametric models. However, these models are based on several idealistic assumptions. In addition, previous research of option pricing mainly depends on the historical transaction records without considering the performance of other concurrent options. To address these challenges, we proposed a convolutional neural network (CNN) based system for predicting the implied volatility and the option prices. Specifically, the customized non-parametric learning approach is first used to estimate the implied volatility. Second, several traditional parametric models are also implemented to es...
Predicting volatility is important for asset predicting, option pricing and hedging strategies becau...
INST: L_200In financial mathematics volatility is computed using the Black-Scholes formula for the o...
This paper gives an overview of the research that has been conducted regarding neural networks in op...
The evaluations of option prices and implied volatility are critical for option risk management and ...
Extracting implied information, like volatility and dividend, from observed option prices is a chall...
Currently the most popular method of estimating volatility is the implied volatility. It is calculat...
Part 3: Computational Intelligence and AlgorithmsInternational audienceIn this paper, a Computationa...
Prices of derivative contracts, such as options, traded in the financial markets are expected to hav...
This paper proposes a data-driven approach, by means of an Artificial Neural Network (ANN), to value...
This paper proposes a data-driven approach, by means of an Artificial Neural Network (ANN), to value...
In this paper, we start from the no-arbitrage constraints in option pricing and develop a novel hybr...
The theory of option pricing made a dramatic step forward when Black and Scholes published a centen...
The modern derivatives market has been steadily growing since the development of the first accurate ...
In this paper, we compare three methods of estimating the volatility of daily SBP 100 Index for opti...
The Black-Scholes model is the standard approach used for pricing financial options. However, althou...
Predicting volatility is important for asset predicting, option pricing and hedging strategies becau...
INST: L_200In financial mathematics volatility is computed using the Black-Scholes formula for the o...
This paper gives an overview of the research that has been conducted regarding neural networks in op...
The evaluations of option prices and implied volatility are critical for option risk management and ...
Extracting implied information, like volatility and dividend, from observed option prices is a chall...
Currently the most popular method of estimating volatility is the implied volatility. It is calculat...
Part 3: Computational Intelligence and AlgorithmsInternational audienceIn this paper, a Computationa...
Prices of derivative contracts, such as options, traded in the financial markets are expected to hav...
This paper proposes a data-driven approach, by means of an Artificial Neural Network (ANN), to value...
This paper proposes a data-driven approach, by means of an Artificial Neural Network (ANN), to value...
In this paper, we start from the no-arbitrage constraints in option pricing and develop a novel hybr...
The theory of option pricing made a dramatic step forward when Black and Scholes published a centen...
The modern derivatives market has been steadily growing since the development of the first accurate ...
In this paper, we compare three methods of estimating the volatility of daily SBP 100 Index for opti...
The Black-Scholes model is the standard approach used for pricing financial options. However, althou...
Predicting volatility is important for asset predicting, option pricing and hedging strategies becau...
INST: L_200In financial mathematics volatility is computed using the Black-Scholes formula for the o...
This paper gives an overview of the research that has been conducted regarding neural networks in op...