Machine learning methods, such as Long Short-Term Memory (LSTM) neural networks can predict real-life time series data. Here, we present a new approach to predict time series data combining interpolation techniques, randomly parameterized LSTM neural networks and measures of signal complexity, which we will refer to as complexity measures throughout this research. First, we interpolate the time series data under study. Next, we predict the time series data using an ensemble of randomly parameterized LSTM neural networks. Finally, we filter the ensemble prediction based on the original data complexity to improve the predictability, i.e., we keep only predictions with a complexity close to that of the training data. We test the proposed appro...
Typically, time series forecasting is done by using models based directly on the past observations f...
Time series prediction can be generalized as a process that extracts useful information from histori...
Ensemble methods can improve prediction accuracy of machine learning models, but applying ensemble m...
Recurrent neurons (and in particular LSTM cells) demonstrated to be efficient when used as basic blo...
Recurrent Neural Networks (RNNs) have shown great success in sequence-to-sequence processing due to ...
This paper demonstrates the development of an Long-Short Term Memory (LSTM) network and its applicat...
In this paper, we present the exploitation of a method to extract information from microscopic sampl...
It has been demonstrated that in the realm of complex systems not only exact predic-tions of multiva...
Time series forecasting is a problem that is strongly dependent on the underlying process which gene...
Attempting to predict the future long precedes the time where we could first quantify much of our pr...
Recent advances in nonlinear time-series prediction demonstrated the ability of recurrent neural net...
Recurrent neural networks have recently proved the state-of-the-art approach in forecasting complex ...
Traditional statistical, physical, and correlation models for chaotic time series prediction have pr...
Typically, time series forecasting is done by using models based directly on the past observations f...
Time series prediction can be generalized as a process that extracts useful information from histori...
Ensemble methods can improve prediction accuracy of machine learning models, but applying ensemble m...
Recurrent neurons (and in particular LSTM cells) demonstrated to be efficient when used as basic blo...
Recurrent Neural Networks (RNNs) have shown great success in sequence-to-sequence processing due to ...
This paper demonstrates the development of an Long-Short Term Memory (LSTM) network and its applicat...
In this paper, we present the exploitation of a method to extract information from microscopic sampl...
It has been demonstrated that in the realm of complex systems not only exact predic-tions of multiva...
Time series forecasting is a problem that is strongly dependent on the underlying process which gene...
Attempting to predict the future long precedes the time where we could first quantify much of our pr...
Recent advances in nonlinear time-series prediction demonstrated the ability of recurrent neural net...
Recurrent neural networks have recently proved the state-of-the-art approach in forecasting complex ...
Traditional statistical, physical, and correlation models for chaotic time series prediction have pr...
Typically, time series forecasting is done by using models based directly on the past observations f...
Time series prediction can be generalized as a process that extracts useful information from histori...
Ensemble methods can improve prediction accuracy of machine learning models, but applying ensemble m...