oai:ojs2.mf-journal.com:article/2This paper constructs deep neural network (DNN) models for equity-premium forecasting. We compare the forecasting performance of DNN models with that of ordinary least squares (OLS) and historical average (HA) models. The DNN models robustly work best and significantly outperform both OLS and HA models in both in- and out-of-sample tests and asset allocation exercises. Specifically, DNN models generate monthly out-of-sample R2 of 3.42% and an annual utility gain of 2.99% for a mean-variance investor from 2011:1 to 2016:12. Moreover, the forecasting performance of DNN models is enhanced by adding additional 14 variables selected from finance literature
In this paper, I conduct a comprehensive study of using machine learning tools to forecast the U.S. ...
Regression in machine learning is a task of predicting continuous dependent output based on multipl...
Author's OriginalAbility to forecast market variables is critical to analysts, economists and invest...
oai:ojs2.mf-journal.com:article/2This paper constructs deep neural network (DNN) models for equity-p...
Deep learning is drawing keen attention in contemporary financial research. In this article, the aut...
This study re-investigates the relationship between the equity premium and variables, that have been...
The goal of this paper is to compare and analyze the forecasting performance of two artificial neura...
Financial time series forecasting is undoubtedly the top choice of computational intelligence for fi...
Deep learning is a framework for training and modelling neural networks which recently have surpasse...
Forecasting the financial market has proven to be a challenging task due to high volatility. However...
This paper presents an overview of the procedures involved in prediction with machine learning model...
Interest in financial markets has increased in the last couple of decades, among fund managers, poli...
This research explores the application of four deep learning architectures—Multilayer Perceptron (ML...
Volatility modelling is a field dominated by classic Econometric methods such as the Nobel Prize win...
The author uses a Long Short-Term Memory Network (LSTM), a deep learning algorithm, which is designe...
In this paper, I conduct a comprehensive study of using machine learning tools to forecast the U.S. ...
Regression in machine learning is a task of predicting continuous dependent output based on multipl...
Author's OriginalAbility to forecast market variables is critical to analysts, economists and invest...
oai:ojs2.mf-journal.com:article/2This paper constructs deep neural network (DNN) models for equity-p...
Deep learning is drawing keen attention in contemporary financial research. In this article, the aut...
This study re-investigates the relationship between the equity premium and variables, that have been...
The goal of this paper is to compare and analyze the forecasting performance of two artificial neura...
Financial time series forecasting is undoubtedly the top choice of computational intelligence for fi...
Deep learning is a framework for training and modelling neural networks which recently have surpasse...
Forecasting the financial market has proven to be a challenging task due to high volatility. However...
This paper presents an overview of the procedures involved in prediction with machine learning model...
Interest in financial markets has increased in the last couple of decades, among fund managers, poli...
This research explores the application of four deep learning architectures—Multilayer Perceptron (ML...
Volatility modelling is a field dominated by classic Econometric methods such as the Nobel Prize win...
The author uses a Long Short-Term Memory Network (LSTM), a deep learning algorithm, which is designe...
In this paper, I conduct a comprehensive study of using machine learning tools to forecast the U.S. ...
Regression in machine learning is a task of predicting continuous dependent output based on multipl...
Author's OriginalAbility to forecast market variables is critical to analysts, economists and invest...