The problem of forecasting financial time series has received great attention in the past, from both Econometrics and Pattern Recognition researchers. In this context, most of the efforts were spent to represent and model the volatility of the financial indicators in long time series. In this paper a different problem is faced, the prediction of increases and decreases in short (local) financial trends. This problem, poorly considered by the researchers, needs specific models, able to capture the movement in the short time and the asymmetries between increase and decrease periods. The methodology presented in this paper explicitly considers both aspects, encoding the financial returns in binary values (representing the signs of the returns)...
Abstract:- The increased popularity of financial time series forecasting in recent times lies to its...
In this thesis, we propose two Gaussian hidden Markov models: univariate Gaussian hidden Markov mode...
In recent years, large amounts of financial data have become available for analysis. We propose expl...
Financial markets exhibit alternating periods of rising and falling prices. Stock traders seeking to...
Oelschläger L, Adam T. Detecting bearish and bullish markets in financial time series using hierarch...
This paper provides both leading and coincident indicators of the US business and growth cycles thro...
Hidden Markov models are often used to model daily returns and to infer the hidden state of financia...
This paper presents Hidden Markov Models (HMM) approach for forecasting stock price for interrelated...
This paper develops the model of Bicego, Grosso, and Otranto (2008) and applies Hidden Markov Models...
Abstract—Financial time sequence analysis has been a popular research topic in the field of finance,...
This thesis explores the application of a probabilistic model\ud known as the Hidden Markov Model (H...
Hidden Markov Models, usually referred to as HMMs, are one of the most successful concepts in statis...
In financial investment, market trends are ubiquitous. Put simply, trending markets are characterize...
This paper presents a method to predict short-term trends in financial time series data found in the...
Deriving a relationship that allows to predict future values of a time series is a challenging task ...
Abstract:- The increased popularity of financial time series forecasting in recent times lies to its...
In this thesis, we propose two Gaussian hidden Markov models: univariate Gaussian hidden Markov mode...
In recent years, large amounts of financial data have become available for analysis. We propose expl...
Financial markets exhibit alternating periods of rising and falling prices. Stock traders seeking to...
Oelschläger L, Adam T. Detecting bearish and bullish markets in financial time series using hierarch...
This paper provides both leading and coincident indicators of the US business and growth cycles thro...
Hidden Markov models are often used to model daily returns and to infer the hidden state of financia...
This paper presents Hidden Markov Models (HMM) approach for forecasting stock price for interrelated...
This paper develops the model of Bicego, Grosso, and Otranto (2008) and applies Hidden Markov Models...
Abstract—Financial time sequence analysis has been a popular research topic in the field of finance,...
This thesis explores the application of a probabilistic model\ud known as the Hidden Markov Model (H...
Hidden Markov Models, usually referred to as HMMs, are one of the most successful concepts in statis...
In financial investment, market trends are ubiquitous. Put simply, trending markets are characterize...
This paper presents a method to predict short-term trends in financial time series data found in the...
Deriving a relationship that allows to predict future values of a time series is a challenging task ...
Abstract:- The increased popularity of financial time series forecasting in recent times lies to its...
In this thesis, we propose two Gaussian hidden Markov models: univariate Gaussian hidden Markov mode...
In recent years, large amounts of financial data have become available for analysis. We propose expl...