This paper presents a nonlinear model for computing the time-dependent evolution of the variance in time series of returns on assets. First, we design a recurrent network representation of the variance, which extends the typically linear models. Second, we derive temporal training equations with which the network weights are inferred so as to maximize the likelihood of the data. Experimental results show that this dynamic recurrent network model yields results with improved statistical characteristics and economic performance
This paper uses Long Short Term Memory Recurrent Neural Networks to extract information from the int...
In this work, I will describe a new approach for time series non linearity testing by means of neura...
Leveraging advances in variational inference, we propose to enhance recurrent neural networks with l...
This paper presents an improved nonlinear mixture density approach to modeling the time-dependent va...
In this paper, we show that the recent integration of statistical models with deep recurrent neural ...
It is shown that time series about financial market variables are highly nonlinearly dependent on ti...
In the context of nonlinear financial time series, both conditional mean and variance (volatility) t...
An autoregressive-ARCH model with possible exogeneous variables is treated. We estimate the conditio...
This paper reports about a comparative study on several linear and nonlinear feedforward and recurre...
This study proposes a novel type of dynamic neural network model that can learn to extract stochasti...
In this chapter, we present three different recurrent neural network architectures that we employ fo...
In this paper, we explore the dynamical features of a neural network model which presents two types ...
Time series forecasting based on deep architectures has been gaining popularity in recent years due ...
In this thesis, artificial neural networks (ANNs) are used for prediction of financial and macroecon...
Recurrent neural networks have been used for time-series prediction with good results. In this disse...
This paper uses Long Short Term Memory Recurrent Neural Networks to extract information from the int...
In this work, I will describe a new approach for time series non linearity testing by means of neura...
Leveraging advances in variational inference, we propose to enhance recurrent neural networks with l...
This paper presents an improved nonlinear mixture density approach to modeling the time-dependent va...
In this paper, we show that the recent integration of statistical models with deep recurrent neural ...
It is shown that time series about financial market variables are highly nonlinearly dependent on ti...
In the context of nonlinear financial time series, both conditional mean and variance (volatility) t...
An autoregressive-ARCH model with possible exogeneous variables is treated. We estimate the conditio...
This paper reports about a comparative study on several linear and nonlinear feedforward and recurre...
This study proposes a novel type of dynamic neural network model that can learn to extract stochasti...
In this chapter, we present three different recurrent neural network architectures that we employ fo...
In this paper, we explore the dynamical features of a neural network model which presents two types ...
Time series forecasting based on deep architectures has been gaining popularity in recent years due ...
In this thesis, artificial neural networks (ANNs) are used for prediction of financial and macroecon...
Recurrent neural networks have been used for time-series prediction with good results. In this disse...
This paper uses Long Short Term Memory Recurrent Neural Networks to extract information from the int...
In this work, I will describe a new approach for time series non linearity testing by means of neura...
Leveraging advances in variational inference, we propose to enhance recurrent neural networks with l...