The high volatility of an asset in financial markets is commonly seen as a negative factor. However short-term trades may entail high profits if traders open and close the correct positions. The high volatility of cryptocurrencies, and in particular of Bitcoin, is what made cryptocurrency trading so profitable in these last years. The main goal of this work is to compare several frameworks each other to predict the daily closing Bitcoin price, investigating those that provide the best performance, after a rigorous model selection by the so-called k-fold cross validation method. We evaluated the performance of one stage frameworks, based only on one machine learning technique, such as the Bayesian Neural Network, the Feed Forward and the Lon...
Reliable Bitcoin price forecasts currently represent a challenging issue, due to the high volatility...
Aselsan;et al.;Huawei;IEEE Signal Processing Society;IEEE Turkey Section;Netas26th IEEE Signal Proce...
Machine learning is a method of data analysis which can be used to predict outcomes given previous a...
The high volatility of an asset in financial markets is commonly seen as a negative factor. However ...
This research is concerned with predicting the price of Bitcoin using machine learning. The goal is ...
In this article we forecast daily closing price series of Bitcoin, Litecoin and Ethereum cryptocurre...
Master of ScienceDepartment of Computer ScienceWilliam HsuCryptocurrencies are digital currencies th...
This paper discusses, trying to accurately assess the price of Bitcoin by looking at differ-ent para...
First published online: 29 January 2020Due to the remarkable boost in cryptocurrency trading on digi...
Over the past few years, Bitcoin has attracted the attention of numerous parties, ranging from acade...
This thesis attempts to improve upon models that use Blockchain features to predict the future value...
In this project, I will investigate the performance of several major neural network architectures fo...
With the introduction of Bitcoin in the year 2008 as the first practical decentralized cryptocurrenc...
Generally, information is the fundamental driver of assets pricing volatility in the financial marke...
In this study, the predictability of the most liquid twelve cryptocurrencies are analyzed at the dai...
Reliable Bitcoin price forecasts currently represent a challenging issue, due to the high volatility...
Aselsan;et al.;Huawei;IEEE Signal Processing Society;IEEE Turkey Section;Netas26th IEEE Signal Proce...
Machine learning is a method of data analysis which can be used to predict outcomes given previous a...
The high volatility of an asset in financial markets is commonly seen as a negative factor. However ...
This research is concerned with predicting the price of Bitcoin using machine learning. The goal is ...
In this article we forecast daily closing price series of Bitcoin, Litecoin and Ethereum cryptocurre...
Master of ScienceDepartment of Computer ScienceWilliam HsuCryptocurrencies are digital currencies th...
This paper discusses, trying to accurately assess the price of Bitcoin by looking at differ-ent para...
First published online: 29 January 2020Due to the remarkable boost in cryptocurrency trading on digi...
Over the past few years, Bitcoin has attracted the attention of numerous parties, ranging from acade...
This thesis attempts to improve upon models that use Blockchain features to predict the future value...
In this project, I will investigate the performance of several major neural network architectures fo...
With the introduction of Bitcoin in the year 2008 as the first practical decentralized cryptocurrenc...
Generally, information is the fundamental driver of assets pricing volatility in the financial marke...
In this study, the predictability of the most liquid twelve cryptocurrencies are analyzed at the dai...
Reliable Bitcoin price forecasts currently represent a challenging issue, due to the high volatility...
Aselsan;et al.;Huawei;IEEE Signal Processing Society;IEEE Turkey Section;Netas26th IEEE Signal Proce...
Machine learning is a method of data analysis which can be used to predict outcomes given previous a...