We use numerous high-frequency transaction data sets to evaluate the forecasting performances of several dynamic ordinal-response time series models with generalized autoregressive conditional heteroscedasticity (GARCH). The specifications account for three components: leverage effects, in-mean effects and moving average error terms. We estimate the model parameters by developing Markov chain Monte Carlo algorithms. Our empirical analysis shows that the proposed ordinal-response GARCH models achieve better point and density forecasts than standard benchmarks
ii Autoregressive and Moving Average time series models and their combination are reviewed. Autoregr...
Most high-frequency asset returns exhibit seasonal volatility patterns. This article proposes a new ...
This article discusses the ability of information criteria toward the correct selection of different...
We use numerous high-frequency transaction data sets to evaluate the forecasting performances of sev...
We propose a new model for transaction data that accounts jointly for the time duration between tran...
Using numerous transaction data on the number of stock trades, we conduct a forecasting exercise wit...
The models for volatility, autoregressive conditional heteroscedastic (ARCH) and generalized autor...
This paper addresses the question of the selection of multivariate generalized autoregressive condit...
We propose a state space mixed model with stochastic volatility for ordinal-response time series dat...
A seasonal conditional heteroscedastic model is proposed. The identification, estimation, and diagno...
A new variant of the ARCH class of models for forecasting the conditional variance, to be called the...
We propose a new method for multivariate forecasting which combines Dynamic Factor and multivariate ...
We propose a new method for multivariate forecasting which combines the Generalized Dynamic Factor M...
We propose a new method for multivariate forecasting which combines Dynamic Factor and multivariate ...
We develop a class of ARCH models for series sampled at unequal time intervals set by trade orquote ...
ii Autoregressive and Moving Average time series models and their combination are reviewed. Autoregr...
Most high-frequency asset returns exhibit seasonal volatility patterns. This article proposes a new ...
This article discusses the ability of information criteria toward the correct selection of different...
We use numerous high-frequency transaction data sets to evaluate the forecasting performances of sev...
We propose a new model for transaction data that accounts jointly for the time duration between tran...
Using numerous transaction data on the number of stock trades, we conduct a forecasting exercise wit...
The models for volatility, autoregressive conditional heteroscedastic (ARCH) and generalized autor...
This paper addresses the question of the selection of multivariate generalized autoregressive condit...
We propose a state space mixed model with stochastic volatility for ordinal-response time series dat...
A seasonal conditional heteroscedastic model is proposed. The identification, estimation, and diagno...
A new variant of the ARCH class of models for forecasting the conditional variance, to be called the...
We propose a new method for multivariate forecasting which combines Dynamic Factor and multivariate ...
We propose a new method for multivariate forecasting which combines the Generalized Dynamic Factor M...
We propose a new method for multivariate forecasting which combines Dynamic Factor and multivariate ...
We develop a class of ARCH models for series sampled at unequal time intervals set by trade orquote ...
ii Autoregressive and Moving Average time series models and their combination are reviewed. Autoregr...
Most high-frequency asset returns exhibit seasonal volatility patterns. This article proposes a new ...
This article discusses the ability of information criteria toward the correct selection of different...