Time-series classification is a complex task filled with noisy data and complexity. Recent studies with high-frequency financial time-series have shown that neural network attention can be used to enhance the performance of the model and to understand and highlight the decisions and the information a neural network has obtained from the underlying data. Neural networks have been called black boxes because of the challenges they propose for the humans who try to understand the inherent tangled nature of their decision making, that is how the weights are connected to each other and what exactly is prioritized in the given data. The development of attention mechanisms has clarified both what the model is concentrating on and what is important...
This report investigates how prediction of stock markets with Artificial Neural Networks (ANN) is af...
Human cognition is fundamentally a network phenomenon: our thoughts, sense of self, and our other br...
Machine language is a sequence of algorithm assign to do a particular task. Neural Networking is ins...
Time-series analysis has long been a challenging problem and has been studied extensively over the p...
The increasing complexity of financial trading in recent years revealed the need for methods that ca...
This thesis proposes a new convolutional long short-term memory network with a feature-dimension att...
Time-series forecasting has various applications in a wide range of domains, e.g., forecasting stock...
Neural attention has become a key component in many deep learning applications, ranging from machine...
Regression problems with time-series predictors are common in banking and many other areas of applic...
Managing the prediction of metrics in high‐frequency financial markets is a challenging task. An eff...
Deep Learning models have become dominant in tackling financial time-series analysis problems, overt...
Attention models are used in neural machine translation to overcome the challenges of classical enco...
We develop a large-scale deep learning model to predict price movements from limit order book (LOB) ...
In this paper, predictions of future price movements of a major American stock index were made by an...
This thesis proposes a convolutional long short-term memory neural network model for predicting limi...
This report investigates how prediction of stock markets with Artificial Neural Networks (ANN) is af...
Human cognition is fundamentally a network phenomenon: our thoughts, sense of self, and our other br...
Machine language is a sequence of algorithm assign to do a particular task. Neural Networking is ins...
Time-series analysis has long been a challenging problem and has been studied extensively over the p...
The increasing complexity of financial trading in recent years revealed the need for methods that ca...
This thesis proposes a new convolutional long short-term memory network with a feature-dimension att...
Time-series forecasting has various applications in a wide range of domains, e.g., forecasting stock...
Neural attention has become a key component in many deep learning applications, ranging from machine...
Regression problems with time-series predictors are common in banking and many other areas of applic...
Managing the prediction of metrics in high‐frequency financial markets is a challenging task. An eff...
Deep Learning models have become dominant in tackling financial time-series analysis problems, overt...
Attention models are used in neural machine translation to overcome the challenges of classical enco...
We develop a large-scale deep learning model to predict price movements from limit order book (LOB) ...
In this paper, predictions of future price movements of a major American stock index were made by an...
This thesis proposes a convolutional long short-term memory neural network model for predicting limi...
This report investigates how prediction of stock markets with Artificial Neural Networks (ANN) is af...
Human cognition is fundamentally a network phenomenon: our thoughts, sense of self, and our other br...
Machine language is a sequence of algorithm assign to do a particular task. Neural Networking is ins...