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AI/Machine learning approach to identifying potential statistical arbitrage opportunities with FX and Bitcoin Markets

In this study, a methodology is presented where a hybrid system combining an evolutionary algorithm with artificial neural networks (ANNs) is designed to make weekly directional change forecasts on the USD by inferring a prediction using closing spot rates of three currency pairs: EUR/USD, GBP/USD a...

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Main Author: Ntsaluba, Kuselo Ntsika
Other Authors: Georg, Co-Pierre
Format: Thesis
Language:English
Published: African Institute of Financial Markets and Risk Management 2020
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access_status_str Open Access
author Ntsaluba, Kuselo Ntsika
author2 Georg, Co-Pierre
author_browse Georg, Co-Pierre
Ntsaluba, Kuselo Ntsika
author_facet Georg, Co-Pierre
Ntsaluba, Kuselo Ntsika
author_sort Ntsaluba, Kuselo Ntsika
collection Thesis
description In this study, a methodology is presented where a hybrid system combining an evolutionary algorithm with artificial neural networks (ANNs) is designed to make weekly directional change forecasts on the USD by inferring a prediction using closing spot rates of three currency pairs: EUR/USD, GBP/USD and CHF/USD. The forecasts made by the genetically trained ANN are compared to those made by a new variation of the simple moving average (MA) trading strategy, tailored to the methodology, as well as a random model. The same process is then repeated for the three major cryptocurrencies namely: BTC/USD, ETH/USD and XRP/USD. The overall prediction accuracy, uptrend and downtrend prediction accuracy is analyzed for all three methods within the fiat currency as well as the cryptocurrency contexts. The best models are then evaluated in terms of their ability to convert predictive accuracy to a profitable investment given an initial investment. The best model was found to be the hybrid model on the basis of overall prediction accuracy and accrued returns.
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institution University of Cape Town (South Africa)
language eng
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license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from UCTD — University of Cape Town Open Access Repository
publishDate 2020
publishDateRange 2020
publishDateSort 2020
publisher African Institute of Financial Markets and Risk Management
publisherStr African Institute of Financial Markets and Risk Management
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source_str UCTD — University of Cape Town Open Access Repository
spelling oai:open.uct.ac.za:11427/31185 AI/Machine learning approach to identifying potential statistical arbitrage opportunities with FX and Bitcoin Markets Ntsaluba, Kuselo Ntsika Georg, Co-Pierre Financial Technology In this study, a methodology is presented where a hybrid system combining an evolutionary algorithm with artificial neural networks (ANNs) is designed to make weekly directional change forecasts on the USD by inferring a prediction using closing spot rates of three currency pairs: EUR/USD, GBP/USD and CHF/USD. The forecasts made by the genetically trained ANN are compared to those made by a new variation of the simple moving average (MA) trading strategy, tailored to the methodology, as well as a random model. The same process is then repeated for the three major cryptocurrencies namely: BTC/USD, ETH/USD and XRP/USD. The overall prediction accuracy, uptrend and downtrend prediction accuracy is analyzed for all three methods within the fiat currency as well as the cryptocurrency contexts. The best models are then evaluated in terms of their ability to convert predictive accuracy to a profitable investment given an initial investment. The best model was found to be the hybrid model on the basis of overall prediction accuracy and accrued returns. 2020-02-20T09:42:27Z 2020-02-20T09:42:27Z 2019 2020-02-14T08:12:15Z Master Thesis Masters MPhil http://hdl.handle.net/11427/31185 eng application/pdf African Institute of Financial Markets and Risk Management Faculty of Commerce
spellingShingle Financial Technology
Ntsaluba, Kuselo Ntsika
AI/Machine learning approach to identifying potential statistical arbitrage opportunities with FX and Bitcoin Markets
thesis_degree_str Master's
title AI/Machine learning approach to identifying potential statistical arbitrage opportunities with FX and Bitcoin Markets
title_full AI/Machine learning approach to identifying potential statistical arbitrage opportunities with FX and Bitcoin Markets
title_fullStr AI/Machine learning approach to identifying potential statistical arbitrage opportunities with FX and Bitcoin Markets
title_full_unstemmed AI/Machine learning approach to identifying potential statistical arbitrage opportunities with FX and Bitcoin Markets
title_short AI/Machine learning approach to identifying potential statistical arbitrage opportunities with FX and Bitcoin Markets
title_sort ai machine learning approach to identifying potential statistical arbitrage opportunities with fx and bitcoin markets
topic Financial Technology
url http://hdl.handle.net/11427/31185
work_keys_str_mv AT ntsalubakuselontsika aimachinelearningapproachtoidentifyingpotentialstatisticalarbitrageopportunitieswithfxandbitcoinmarkets