Predicting the behavior of financial markets is largely an unsolved problem. The problem hasbeen approached with many different methods ranging from binary logic, statisticalcalculations and genetic algorithms. In this thesis, the problem is approached with a machinelearning method, namely the Long Short-Term Memory (LSTM) variant of Recurrent NeuralNetworks (RNNs). Recurrent neural networks are artificial neural networks (ANNs)—amachine learning algorithm mimicking the neural processing of the mammalian nervoussystem—specifically designed for time series sequences. The thesis investigates the capabilityof the LSTM in modeling financial market behavior as well as compare it to the traditionalRNN, evaluating their performances using various ...
Machine learning models as tools for predicting time series have in recent years proven to perform e...
Synthetic short positions constructed by equity options and stock loan short sells are linked by arb...
In response to the Great Financial Crisis of 2008, a handful of measures were taken to increase the ...
Predicting the behavior of financial markets is largely an unsolved problem. The problem hasbeen app...
Interpreting time varying phenomena is a key challenge in the capital markets. Time series analysis ...
In this bachelor thesis we investigate the importance of feature selection when making predictions o...
Deep learning and neural networks has recently become a powerful tool to solve complex problem due t...
Artificial neural networks are, again, on the rise. The decreasing costs of computing power and the ...
Abstract— Today the trading business has become a trend to get money easily without having to work h...
In today’s increasingly data-driven world, time series forecasting is becoming a prevalent practice....
This study is about prediction of the stockmarket through a comparison of neural networks and statis...
This study investigates a neural networks approach to portfolio choice. Linear regression models are...
The stock market is a non-linear field, but many of the best-known portfolio optimization algorithms...
This report assesses different machine learning models’accuracies to predict whether a stock will go...
The idea of predicting the stock market has existed for hundreds of years. From the pre-industrial a...
Machine learning models as tools for predicting time series have in recent years proven to perform e...
Synthetic short positions constructed by equity options and stock loan short sells are linked by arb...
In response to the Great Financial Crisis of 2008, a handful of measures were taken to increase the ...
Predicting the behavior of financial markets is largely an unsolved problem. The problem hasbeen app...
Interpreting time varying phenomena is a key challenge in the capital markets. Time series analysis ...
In this bachelor thesis we investigate the importance of feature selection when making predictions o...
Deep learning and neural networks has recently become a powerful tool to solve complex problem due t...
Artificial neural networks are, again, on the rise. The decreasing costs of computing power and the ...
Abstract— Today the trading business has become a trend to get money easily without having to work h...
In today’s increasingly data-driven world, time series forecasting is becoming a prevalent practice....
This study is about prediction of the stockmarket through a comparison of neural networks and statis...
This study investigates a neural networks approach to portfolio choice. Linear regression models are...
The stock market is a non-linear field, but many of the best-known portfolio optimization algorithms...
This report assesses different machine learning models’accuracies to predict whether a stock will go...
The idea of predicting the stock market has existed for hundreds of years. From the pre-industrial a...
Machine learning models as tools for predicting time series have in recent years proven to perform e...
Synthetic short positions constructed by equity options and stock loan short sells are linked by arb...
In response to the Great Financial Crisis of 2008, a handful of measures were taken to increase the ...