A new qualitative method using the concept of dynamical Bayesian factor graph is developed in this paper for the prediction of stock market trend. The essence of this method is to compute the corresponding dynamical Bayesian factor graph for a selected set of macroeconomic factors over a period of time of interest. The computed time series of graphs capture both the mutual influential relationships and the evaluation of these relationships among these factors over a specified period of time. Then any topological structural change in the adjacent graphs at anytime predicts a change in market trend in a short future. Our computational analysis also indicates that if the topological structure of the underlying dynamical Bayesian factor graph i...
In the stock market, return reversal occurs when investors sell overbought stocks and buy oversold s...
The daily fluctuation trends of a stock market are illustrated by three statuses: up, equal, and dow...
In this paper we provide a comprehensive Bayesian posterior analysis of trend determination in gener...
Trend forecasting could be one of the most challenging things in stock market analysis, as the data ...
This paper aims to investigate the dependence structure of global financial markets using an systema...
Bayesian network is the graphical model which can represent the stochastic dependency of the random ...
The importance of considering related stocks data for the prediction of stock price movement has bee...
Stock trend classification remains a fundamental yet challenging task, owing to the intricate time-e...
Stock market prediction is one of the most challenging problems which has been distressing both rese...
Stock market forecasting is a knotty challenging task due to the highly noisy, nonparametric, comple...
This paper presents a method to predict short-term trends in financial time series data found in the...
Abstract A stock market is considered as one of the highly complex systems, which consists of many c...
This thesis develops mathematical tools used to model and forecast different economic phenomena. The...
In the stock market,return reversal happens when investors sell overbought stocks and buy oversold s...
Over the last twenty years, researchers and practitioners have attempted in many ways to effectively...
In the stock market, return reversal occurs when investors sell overbought stocks and buy oversold s...
The daily fluctuation trends of a stock market are illustrated by three statuses: up, equal, and dow...
In this paper we provide a comprehensive Bayesian posterior analysis of trend determination in gener...
Trend forecasting could be one of the most challenging things in stock market analysis, as the data ...
This paper aims to investigate the dependence structure of global financial markets using an systema...
Bayesian network is the graphical model which can represent the stochastic dependency of the random ...
The importance of considering related stocks data for the prediction of stock price movement has bee...
Stock trend classification remains a fundamental yet challenging task, owing to the intricate time-e...
Stock market prediction is one of the most challenging problems which has been distressing both rese...
Stock market forecasting is a knotty challenging task due to the highly noisy, nonparametric, comple...
This paper presents a method to predict short-term trends in financial time series data found in the...
Abstract A stock market is considered as one of the highly complex systems, which consists of many c...
This thesis develops mathematical tools used to model and forecast different economic phenomena. The...
In the stock market,return reversal happens when investors sell overbought stocks and buy oversold s...
Over the last twenty years, researchers and practitioners have attempted in many ways to effectively...
In the stock market, return reversal occurs when investors sell overbought stocks and buy oversold s...
The daily fluctuation trends of a stock market are illustrated by three statuses: up, equal, and dow...
In this paper we provide a comprehensive Bayesian posterior analysis of trend determination in gener...