Bayesian network is the graphical model which can represent the stochastic dependency of the random variables via the acyclic directed graph. In this study, Bayesian network is applied for the up/down analysis of the stock index. The up/down rates of the daily stock indexes in three major markets are taken as the network nodes and then, the network is determined by K2 algorithm with the K2 metric as the prediction accuracy of the network. The present algorithm is applied for predicting the up/down analysis of the daily stock indeies in 2007 and the results are compared with the traditional algorithms; Psychological line and trend estimation, which are popular algorithms which are well-known by the traders. Their accuracy comparison shows th...
In this paper, we revisit the parameter learning problem, namely the estimation of model parameters ...
Stock picking based on regularities in time series is one of the most studied topics in the financia...
We propose a systematic factor analysis approach using the Bayesian Network (BN) framework by taking...
A new qualitative method using the concept of dynamical Bayesian factor graph is developed in this p...
This paper aims to investigate the dependence structure of global financial markets using an systema...
Portfolio managers and investors have to face the perils of the markets and the trade-off between r...
In order to model and explain the dynamics of the market, different types and sources of informatio...
Stock market is considered too uncertain to be predictable. Many individuals have developed methodol...
Bayesian networks have grown to become a dominant type of model within the domain of probabilistic g...
Bayesian Networks (BNs) are a useful graphical probabilistic structure for visualizing and understan...
Recently, there has been much attention in the use of machine learning methods, particularly deep le...
Predicting the future stock price has always been considered as an important issue by both buyers an...
Predicting stock data with traditional time series analysis has become one popular research issue. A...
Abstract A stock market is considered as one of the highly complex systems, which consists of many c...
We predict stock markets using information contained in articles published on the Web. Mostly textua...
In this paper, we revisit the parameter learning problem, namely the estimation of model parameters ...
Stock picking based on regularities in time series is one of the most studied topics in the financia...
We propose a systematic factor analysis approach using the Bayesian Network (BN) framework by taking...
A new qualitative method using the concept of dynamical Bayesian factor graph is developed in this p...
This paper aims to investigate the dependence structure of global financial markets using an systema...
Portfolio managers and investors have to face the perils of the markets and the trade-off between r...
In order to model and explain the dynamics of the market, different types and sources of informatio...
Stock market is considered too uncertain to be predictable. Many individuals have developed methodol...
Bayesian networks have grown to become a dominant type of model within the domain of probabilistic g...
Bayesian Networks (BNs) are a useful graphical probabilistic structure for visualizing and understan...
Recently, there has been much attention in the use of machine learning methods, particularly deep le...
Predicting the future stock price has always been considered as an important issue by both buyers an...
Predicting stock data with traditional time series analysis has become one popular research issue. A...
Abstract A stock market is considered as one of the highly complex systems, which consists of many c...
We predict stock markets using information contained in articles published on the Web. Mostly textua...
In this paper, we revisit the parameter learning problem, namely the estimation of model parameters ...
Stock picking based on regularities in time series is one of the most studied topics in the financia...
We propose a systematic factor analysis approach using the Bayesian Network (BN) framework by taking...