Do mixed-data sampling models help forecast liquidity and volatility?

Barbara Będowska-Sójka, Agata Kliber
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Abstract

This paper aims to contribute to the existing studies on the Granger-causal relationship between volatility and liquidity in the stock market. We examine whether liquidity improves volatility forecasts and whether volatility allows the improvement of liquidity forecasts. The forecasts based on the mixed-data sampling models, MIDAS, are compared to those obtained from models based on daily data. Our results show that volatility and liquidity forecasts from MIDAS models outperform naive forecasts. On the other hand, the application of mixed-data sampling models does not significantly improve the performance of the forecasts of either liquidity or volatility based on a univariate autoregressive model or a vectorautoregressive one. We found that in terms of the forecasting ability, the VAR models and the AR models seem to perform equally well, as the differences in forecasting errors generated by these two types of models are not statistically significant.
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混合数据抽样模型是否有助于预测流动性和波动性?
本文旨在对股票市场波动性与流动性之间的格兰杰因果关系的现有研究做出贡献。我们检验流动性是否改善波动性预测,以及波动性是否允许流动性预测的改善。将基于混合数据采样模型(MIDAS)的预测结果与基于日常数据的模型的预测结果进行了比较。我们的研究结果表明,波动率和流动性预测从MIDAS模型优于朴素预测。另一方面,混合数据采样模型的应用并没有显著提高基于单变量自回归模型或向量自回归模型的流动性或波动性预测的性能。我们发现,在预测能力方面,VAR模型和AR模型似乎表现得同样好,因为这两种模型产生的预测误差差异不具有统计学意义。
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