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Non-crossing quantile double-autoregression for the analysis of streaming time series data

期刊

JOURNAL OF TIME SERIES ANALYSIS
卷 -, 期 -, 页码 -

出版社

WILEY
DOI: 10.1111/jtsa.12725

关键词

Double autoregressive model; generalized lambda distribution; online updating; quantile regression; quantile curve crossing; streaming data

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This article proposes a renewable estimation method for quantile double-autoregression analysis of streaming time series data and overcomes the barriers of storage and computation. The proposed method has a flexible parameter structure and can predict any interested quantile value.
Many financial time series not only have varying structures at different quantile levels and exhibit the phenomenon of conditional heteroscedasticity at the same time but also arrive in the stream. Quantile double-autoregression is very useful for time series analysis but faces challenges with model fitting of streaming data sets when estimating other quantiles in subsequent batches. This article proposes a renewable estimation method for quantile double-autoregression analysis of streaming time series data due to its ability to break with storage barrier and computational barrier. Moreover, the proposed flexible parametric structure of the quantile function enables us to predict any interested quantile value without quantile curve crossing problem or keeping the desirable monotone property of the conditional quantile function. The proposed methods are illustrated using current data and the summary statistics of historical data. Theoretically, the proposed statistic is shown to have the same asymptotic distribution as the standard version computed on an entire data stream with the data batches pooled into one data set, without additional condition. Simulation studies and an empirical example are presented to illustrate the finite sample performance of the proposed methods.

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