There are more and more popular investment fund projects in the continuous economic development; the prediction and performance continuity become hot topics in the financial field. Scholars’ enthusiasm for this also reflects the domestic fund primary stage progress, and there is a huge application demand in China. The prediction of fund performance can help investors to avoid risks and improve returns and help managers to learn more unknown information from the prediction for the sake of guide market well and manage the market orderly. In the past research, the traditional way is to use the advantages of neural network to build a model to predict the continuous trend foundation performance, but the author found that the traditional single n...
The aim of this bachelor thesis is to create a recurrent neural network, which uses investment fund ...
Deep artificial neural networks have been popular for time series forecasting literature in recent y...
In this paper, we implement an effective way for forecasting financial time series with nonlinear re...
This study utilizes an artificial neural network (ANN) approach to predict the performance of equity...
Based on systematic analysis of BP neural network, a back-propagation neural network predicting mode...
With the development of social economy, people pay more and more attention to investment and financi...
Incorporating return prediction in portfolio optimization can make portfolio optimization more effic...
The rapid development of Internet money funds (IMFs) may become the main development direction of mo...
Alternate Models for Forecasting Hedge Fund Returns Michael Holden Faculty Sponsor: Gordon Dash, Fin...
This paper mainly analyzes the theories related to the financial risk of the company and combines th...
Financial crisis prediction is a critical issue in the economic phenomenon. Correct predictions can ...
Neural network forecasting models have been widely used in the analyses of finan-cial time series du...
Artificial neural networks (ANNs) can be a potential tool for non-linear processes that have unknown...
The experiment performed showed that predicting stock movements accurately with a neural networks is...
Stock occupies a very important position in the market economy. The individual can affect the operat...
The aim of this bachelor thesis is to create a recurrent neural network, which uses investment fund ...
Deep artificial neural networks have been popular for time series forecasting literature in recent y...
In this paper, we implement an effective way for forecasting financial time series with nonlinear re...
This study utilizes an artificial neural network (ANN) approach to predict the performance of equity...
Based on systematic analysis of BP neural network, a back-propagation neural network predicting mode...
With the development of social economy, people pay more and more attention to investment and financi...
Incorporating return prediction in portfolio optimization can make portfolio optimization more effic...
The rapid development of Internet money funds (IMFs) may become the main development direction of mo...
Alternate Models for Forecasting Hedge Fund Returns Michael Holden Faculty Sponsor: Gordon Dash, Fin...
This paper mainly analyzes the theories related to the financial risk of the company and combines th...
Financial crisis prediction is a critical issue in the economic phenomenon. Correct predictions can ...
Neural network forecasting models have been widely used in the analyses of finan-cial time series du...
Artificial neural networks (ANNs) can be a potential tool for non-linear processes that have unknown...
The experiment performed showed that predicting stock movements accurately with a neural networks is...
Stock occupies a very important position in the market economy. The individual can affect the operat...
The aim of this bachelor thesis is to create a recurrent neural network, which uses investment fund ...
Deep artificial neural networks have been popular for time series forecasting literature in recent y...
In this paper, we implement an effective way for forecasting financial time series with nonlinear re...