Barrier Options and Greeks: Modeling with Neural Networks

Author:

Umeorah Nneka1ORCID,Mashele Phillip2,Agbaeze Onyecherelam3,Mba Jules Clement4ORCID

Affiliation:

1. School of Mathematics, Cardiff University, Cardiff CF24 4AG, UK

2. School of Economic and Financial Sciences, University of South Africa, Pretoria 0003, South Africa

3. College of Arts and Sciences, Troy University, Troy, AL 36082, USA

4. School of Economics, College of Business and Economics, University of Johannesburg, Johannesburg 2092, South Africa

Abstract

This paper proposes a non-parametric technique of option valuation and hedging. Here, we replicate the extended Black–Scholes pricing model for the exotic barrier options and their corresponding Greeks using the fully connected feed-forward neural network. Our methodology involves some benchmarking experiments, which result in an optimal neural network hyperparameter that effectively prices the barrier options and facilitates their option Greeks extraction. We compare the results from the optimal NN model to those produced by other machine learning models, such as the random forest and the polynomial regression; the output highlights the accuracy and the efficiency of our proposed methodology in this option pricing problem. The results equally show that the artificial neural network can effectively and accurately learn the extended Black–Scholes model from a given simulated dataset, and this concept can similarly be applied in the valuation of complex financial derivatives without analytical solutions.

Publisher

MDPI AG

Subject

Geometry and Topology,Logic,Mathematical Physics,Algebra and Number Theory,Analysis

Reference46 articles.

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4. Borovykh, A., Bohte, S., and Oosterlee, C.W. (2017). Conditional time series forecasting with convolutional neural networks. arXiv.

5. Babbar, K., and McGhee, W.A. (2022, November 20). A Deep Learning Approach to Exotic Option Pricing under LSVol; University of Oxford Working Paper. Available online: https://www.bayes.city.ac.uk/__data/assets/pdf_file/0007/494080/DeepLearningExoticOptionPricingLSVOL_KB_CassBusinessSchool_2019.pdf.

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