Original Research

Recurrent Artificial Neural Networks (RANN) for forecasting of forward interest rates

Amine Bensaid, Bouchra Bouqata, Ralph Palliam
South African Journal of Business Management | Vol 31, No 4 | a744 | DOI: https://doi.org/10.4102/sajbm.v31i4.744 | © 2018 Amine Bensaid, Bouchra Bouqata, Ralph Palliam | This work is licensed under CC Attribution 4.0
Submitted: 12 October 2018 | Published: 31 December 2000

About the author(s)

Amine Bensaid, School of Science and Engineering, Al-Akahawayn University, Morocco
Bouchra Bouqata, School of Science and Engineering, Al-Akahawayn University, Morocco
Ralph Palliam, School of Business Administration, Al-Akahawayn University, Morocco

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Abstract

There are numerous methods for estimating forward interest rates as well as many studies testing the accuracy of these methods. The approach proposed in this study is similar to the one in previous works in two respects: firstly, a Monte Carlo simulation is used instead of empirical data to circumvent empirical difficulties: and secondly, in this study, accuracy is measured by estimating the forward rates rather than by exploring bond prices. This is more consistent with user objectives. The method presented here departs from the others in that it uses a Recurrent Artificial Neural Network (RANN) as an alternative technique for forecasting forward interest rates. Its performance is compared to that of a recursive method which has produced some of the best results in previous studies for forecasting forward interest rates.

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