Research background: In the literature little discussion was made about predicting state of time series in daily manner. The ability to recognize the state of a time series gives, for example, an opportunity to measure the level of risk in a state of tranquility and a state of turbulence independently, which can provide more accurate measurements of the market risk in a financial institution. Purpose of the article: The aim of article is to find an appropriate tools to predict, based on today's economic situation, the state, in which time series of financial data will be tomorrow. Methods: This paper proposes an approach to predict states (states of tranquillity and turbulence) for a current portfolio in a one-day horizon. The predict...
The thesis consists of three studies. The first two contribute to financial market risk modelling an...
Forecasting is inevitable process of modern day life. It is about predictions of the future based on...
Abstract of associated article: We use factor augmented vector autoregressive models with time-varyi...
Research background: In the literature little discussion was made about predicting state of time ser...
Market efficiency hypothesis suggests a zero level for the intraday interest rate. However, a liquid...
Assumptions about the impending new global crisis, which are increasingly found in expert discussion...
Market efficiency hypothesis suggests a zero level for the intra-day interest rate. However, a liqu...
The paper evaluates several hundred one-day-ahead VaR forecasting models in the time period between ...
This paper adds a novel perspective to the literature by exploring the predictive performance of two...
Large one-off events cause large changes in prices, but may not affect the volatility and correlatio...
In this paper, an ensemble model for forecasting highly complex financial time series is being intro...
This article provides guidance on how to evaluate and improve the forecasting ability of models in t...
Recent research has suggested that forecast evaluation on the basis of standard statistical loss fun...
This NHH master thesis researches methodologies for forecasting a financial time series, the Baltic...
This thesis studies four related topics in financial economics; realized volatility modelling and fo...
The thesis consists of three studies. The first two contribute to financial market risk modelling an...
Forecasting is inevitable process of modern day life. It is about predictions of the future based on...
Abstract of associated article: We use factor augmented vector autoregressive models with time-varyi...
Research background: In the literature little discussion was made about predicting state of time ser...
Market efficiency hypothesis suggests a zero level for the intraday interest rate. However, a liquid...
Assumptions about the impending new global crisis, which are increasingly found in expert discussion...
Market efficiency hypothesis suggests a zero level for the intra-day interest rate. However, a liqu...
The paper evaluates several hundred one-day-ahead VaR forecasting models in the time period between ...
This paper adds a novel perspective to the literature by exploring the predictive performance of two...
Large one-off events cause large changes in prices, but may not affect the volatility and correlatio...
In this paper, an ensemble model for forecasting highly complex financial time series is being intro...
This article provides guidance on how to evaluate and improve the forecasting ability of models in t...
Recent research has suggested that forecast evaluation on the basis of standard statistical loss fun...
This NHH master thesis researches methodologies for forecasting a financial time series, the Baltic...
This thesis studies four related topics in financial economics; realized volatility modelling and fo...
The thesis consists of three studies. The first two contribute to financial market risk modelling an...
Forecasting is inevitable process of modern day life. It is about predictions of the future based on...
Abstract of associated article: We use factor augmented vector autoregressive models with time-varyi...