In the last years, energy markets have shown a great volatility with high prices' variations. Most of the machine learning algorithms implemented to forecast the market evolution and to optimize the trading strategies are data-driven and data-intensive; thus, it is important to have a sufficient number of training samples to avoid the overfitting issue. In this context, Generative Adversarial Networks (GANs) have become very popular in the recent years, especially in computer vision, where they are used to manipulate and generate video and images. This methodology has been applied also for time series analysis, especially in the financial context for generating synthetic data. In this work, the application of GANs for generating intraday op...
Load modeling is one of the crucial tasks for improving smart grids’ energy efficiency. Among many a...
Financial markets have always been a point of interest for automated systems. Due to their complex n...
Los modelos GAN se han usado de forma exitosa para realizar aumento de datos en problemas relaciona...
The scarcity of historical financial data has been a huge hindrance for the development algorithmic ...
The creation of high fidelity synthetic data has long been an important goal in machine learning, pa...
Financial time series simulation is a central topic since it extends the limited real data for train...
Driven by the good results obtained in computer vision, deep generative methods for time series have...
The Industry 4.0 revolution allows monitoring and intelligent processing of big amounts of data. Whe...
Accurately predicting extreme stock market fluctuations at the right time will allow traders and inv...
Over the decades, the Markowitz framework has been used extensively in portfolio analysis though it ...
Trading equities can be very lucrative for some and a gamble for others. Professional traders and re...
In the last decade, market financial forecasting has attracted high interests amongst the researcher...
Deep learning methods (DML) have been widely used in financial fields recently, such as stock market...
We consider 2 types of instruments traded on the markets, stocks and cryptocurrencies. In particula...
Generative adversarial network (GAN) studies have grown exponentially in the past few years. Their i...
Load modeling is one of the crucial tasks for improving smart grids’ energy efficiency. Among many a...
Financial markets have always been a point of interest for automated systems. Due to their complex n...
Los modelos GAN se han usado de forma exitosa para realizar aumento de datos en problemas relaciona...
The scarcity of historical financial data has been a huge hindrance for the development algorithmic ...
The creation of high fidelity synthetic data has long been an important goal in machine learning, pa...
Financial time series simulation is a central topic since it extends the limited real data for train...
Driven by the good results obtained in computer vision, deep generative methods for time series have...
The Industry 4.0 revolution allows monitoring and intelligent processing of big amounts of data. Whe...
Accurately predicting extreme stock market fluctuations at the right time will allow traders and inv...
Over the decades, the Markowitz framework has been used extensively in portfolio analysis though it ...
Trading equities can be very lucrative for some and a gamble for others. Professional traders and re...
In the last decade, market financial forecasting has attracted high interests amongst the researcher...
Deep learning methods (DML) have been widely used in financial fields recently, such as stock market...
We consider 2 types of instruments traded on the markets, stocks and cryptocurrencies. In particula...
Generative adversarial network (GAN) studies have grown exponentially in the past few years. Their i...
Load modeling is one of the crucial tasks for improving smart grids’ energy efficiency. Among many a...
Financial markets have always been a point of interest for automated systems. Due to their complex n...
Los modelos GAN se han usado de forma exitosa para realizar aumento de datos en problemas relaciona...