Making and evaluating point forecasts
T Gneiting - Journal of the American Statistical Association, 2011 - Taylor & Francis
Typically, point forecasting methods are compared and assessed by means of an error
measure or scoring function, with the absolute error and the squared error being key …
measure or scoring function, with the absolute error and the squared error being key …
Multivariate high‐frequency‐based volatility (HEAVY) models
This paper introduces a new class of multivariate volatility models that utilizes high‐
frequency data. We discuss the models' dynamics and highlight their differences from …
frequency data. We discuss the models' dynamics and highlight their differences from …
On the forecasting accuracy of multivariate GARCH models
This paper addresses the question of the selection of multivariate generalized
autoregressive conditional heteroskedastic (GARCH) models in terms of variance matrix …
autoregressive conditional heteroskedastic (GARCH) models in terms of variance matrix …
The conditional autoregressive Wishart model for multivariate stock market volatility
We propose a Conditional Autoregressive Wishart (CAW) model for the analysis of realized
covariance matrices of asset returns. Our model assumes an autoregressive moving …
covariance matrices of asset returns. Our model assumes an autoregressive moving …
Robust forecasting of dynamic conditional correlation GARCH models
Large one-off events cause large changes in prices, but may not affect the volatility and
correlation dynamics as much as smaller events. In such cases, standard volatility models …
correlation dynamics as much as smaller events. In such cases, standard volatility models …
The empirical analysis of bitcoin price prediction based on deep learning integration method
S Zhang, M Li, C Yan - Computational Intelligence and …, 2022 - Wiley Online Library
As a new type of electronic currency, bitcoin is more and more recognized and sought after
by people, but its price fluctuation is more intense, the market has certain risks, and the price …
by people, but its price fluctuation is more intense, the market has certain risks, and the price …
MGARCH models: Trade-off between feasibility and flexibility
Multivariate GARCH (MGARCH) models need to be restricted so that their estimation is
feasible in large systems and so that the covariance stationarity and positive definiteness of …
feasible in large systems and so that the covariance stationarity and positive definiteness of …
Multivariate leverage effects and realized semicovariance GARCH models
We propose new asymmetric multivariate volatility models. The models exploit estimates of
variances and covariances based on the signs of high-frequency returns, measures known …
variances and covariances based on the signs of high-frequency returns, measures known …
Missing in asynchronicity: a Kalman‐em approach for multivariate realized covariance estimation
Motivated by the need for a positive‐semidefinite estimator of multivariate realized
covariance matrices, we model noisy and asynchronous ultra‐high‐frequency asset prices …
covariance matrices, we model noisy and asynchronous ultra‐high‐frequency asset prices …
Stochastic nonlinear time series forecasting using time-delay reservoir computers: Performance and universality
Reservoir computing is a recently introduced machine learning paradigm that has already
shown excellent performances in the processing of empirical data. We study a particular …
shown excellent performances in the processing of empirical data. We study a particular …