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 ...
Uses for machine learning methods have dramatically increased over the last decade. With a diverse a...
Recent years witnessed significant investor interest in cryptocurrencies particularly since price of...
This thesis consists of four essays exploring quantitative methods for investment analysis. Chapter ...
Machine learning techniques have found application in the study and development of quantitative tra...
Machine learning and AI-assisted trading have attracted growing interest for the past few years. Her...
This paper explores the use of machine learning algorithms and narrative sentiments when applied to ...
The cryptocurrency market is amongst the fastest-growing of all the financial markets in the world. ...
Bitcoin has drawn a lot of interest recently as a possible high-earning investment. There are signif...
We consider a technique involving Neural Networks in order to try to predict trends for cryptocurren...
It is proposed to conduct a project aimed at forecasting cryptocurrency price values. The concept of...
Due to economic uncertainty and the financial crisis of 2008, a desire for an unregu-lated currency ...
El problema abordado por este trabajo es la predicción del precio de activos cotizados y la automati...
Predicting a currency Exchange rate and performing analysis is an action to try to determine the pri...
2014 dissertation for MSc in Financial Management. Selected by academic staff as a good example of a...
Machine Learning is part of Artificial Intelligence that has the ability to make future forecastings...
Uses for machine learning methods have dramatically increased over the last decade. With a diverse a...
Recent years witnessed significant investor interest in cryptocurrencies particularly since price of...
This thesis consists of four essays exploring quantitative methods for investment analysis. Chapter ...
Machine learning techniques have found application in the study and development of quantitative tra...
Machine learning and AI-assisted trading have attracted growing interest for the past few years. Her...
This paper explores the use of machine learning algorithms and narrative sentiments when applied to ...
The cryptocurrency market is amongst the fastest-growing of all the financial markets in the world. ...
Bitcoin has drawn a lot of interest recently as a possible high-earning investment. There are signif...
We consider a technique involving Neural Networks in order to try to predict trends for cryptocurren...
It is proposed to conduct a project aimed at forecasting cryptocurrency price values. The concept of...
Due to economic uncertainty and the financial crisis of 2008, a desire for an unregu-lated currency ...
El problema abordado por este trabajo es la predicción del precio de activos cotizados y la automati...
Predicting a currency Exchange rate and performing analysis is an action to try to determine the pri...
2014 dissertation for MSc in Financial Management. Selected by academic staff as a good example of a...
Machine Learning is part of Artificial Intelligence that has the ability to make future forecastings...
Uses for machine learning methods have dramatically increased over the last decade. With a diverse a...
Recent years witnessed significant investor interest in cryptocurrencies particularly since price of...
This thesis consists of four essays exploring quantitative methods for investment analysis. Chapter ...