Nonparametric Vector Quantile Autoregression
By: Alberto González-Sanz, Marc Hallin, Yisha Yao
Potential Business Impact:
Predicts many things happening together at once.
Prediction is a key issue in time series analysis. Just as classical mean regression models, classical autoregressive methods, yielding L$^2$ point-predictions, provide rather poor predictive summaries; a much more informative approach is based on quantile (auto)regression, where the whole distribution of future observations conditional on the past is consistently recovered. Since their introduction by Koenker and Xiao in 2006, autoregressive quantile autoregression methods have become a popular and successful alternative to the traditional L$^2$ ones. Due to the lack of a widely accepted concept of multivariate quantiles, however, quantile autoregression methods so far have been limited to univariate time series. Building upon recent measure-transportation-based concepts of multivariate quantiles, we develop here a nonparametric vector quantile autoregressive approach to the analysis and prediction of (nonlinear as well as linear) multivariate time series.
Similar Papers
Generative Quantile Bayesian Prediction
Methodology
Predicts future events more accurately.
Probabilistic Forecasting Cryptocurrencies Volatility: From Point to Quantile Forecasts
Statistical Finance
Predicts crypto price swings more accurately.
Forecasting stock return distributions around the globe with quantile neural networks
General Finance
Predicts stock prices better than before.