Incorporating return prediction in portfolio optimization can make portfolio optimization more efficient by selecting the stocks expected to perform well in the future. This paper proposes a hybrid method that integrates a convolutional neural network (CNN) with optimized hyperparameters by the particle swarm optimization (PSO) for stock pre-selection and a mean–variance with forecasting (MVF) model for portfolio optimization. In the stock pre-selection step, to reduce the computational complexity of the model, the CNN network is trained on the clustered stocks via the K-means method instead of training on each stock. The proposed model also includes a novel feature selection method that weighs features based on their impact on predicting s...
We investigate the potential of artificial neural networks (ANN) in the stock selection process of a...
This research examines the forecasting performance of wavelet neural network (WNN) model using publi...
The final year project involves an empirical investigation of the predictability of stock returns a...
WOS: 000488869500041Portfolio optimization is frequently used method for the best portfolio selectio...
Stock occupies a very important position in the market economy. The individual can affect the operat...
This paper used artificial neural networks (ANNs) time series predictor for approximating returns of...
The stock price varies depending on time, so stock market data is time-series data. The prediction o...
This paper presents a methodological proposal for optimizing financial asset portfolios by incorpora...
I use machine learning stock return predictions to improve minimum variance and Sharpe ratio maximiz...
In this paper we examine the ability of Artificial Neural Network methods (ANN) for predicting the s...
Abstract – Stock market prediction is the act of trying to determine the future value of a company s...
Portfolio selection has always been a very popular topic in the financial community. Investors and f...
There have been multiple attempts to predict stock returns using machine learning, which have largel...
This paper attempts to investigate if adopting accurate forecasts from Neural Network (NN) models ca...
Stock prediction has become an emerging issue in recent decades and many studies have incorporated i...
We investigate the potential of artificial neural networks (ANN) in the stock selection process of a...
This research examines the forecasting performance of wavelet neural network (WNN) model using publi...
The final year project involves an empirical investigation of the predictability of stock returns a...
WOS: 000488869500041Portfolio optimization is frequently used method for the best portfolio selectio...
Stock occupies a very important position in the market economy. The individual can affect the operat...
This paper used artificial neural networks (ANNs) time series predictor for approximating returns of...
The stock price varies depending on time, so stock market data is time-series data. The prediction o...
This paper presents a methodological proposal for optimizing financial asset portfolios by incorpora...
I use machine learning stock return predictions to improve minimum variance and Sharpe ratio maximiz...
In this paper we examine the ability of Artificial Neural Network methods (ANN) for predicting the s...
Abstract – Stock market prediction is the act of trying to determine the future value of a company s...
Portfolio selection has always been a very popular topic in the financial community. Investors and f...
There have been multiple attempts to predict stock returns using machine learning, which have largel...
This paper attempts to investigate if adopting accurate forecasts from Neural Network (NN) models ca...
Stock prediction has become an emerging issue in recent decades and many studies have incorporated i...
We investigate the potential of artificial neural networks (ANN) in the stock selection process of a...
This research examines the forecasting performance of wavelet neural network (WNN) model using publi...
The final year project involves an empirical investigation of the predictability of stock returns a...