This paper introduces a Threshold Asymmetric Conditional Autoregressive Range (TACARR) formulation for modeling the daily price ranges of financial assets. It is assumed that the process generating the conditional expected ranges at each time point switches between two regimes, labeled as upward market and downward market states. The disturbance term of the error process is also allowed to switch between two distributions depending on the regime. It is assumed that a self-adjusting threshold component that is driven by the past values of the time series determines the current market regime. The proposed model is able to capture aspects such as asymmetric and heteroscedastic behavior of volatility in financial markets. The proposed model is an attempt at addressing several potential deficits found in existing price range models such as the Conditional Autoregressive Range (CARR), Asymmetric CARR (ACARR), Feedback ACARR (FACARR) and Threshold Autoregressive Range (TARR) models. Parameters of the model are estimated using the Maximum Likelihood (ML) method. A simulation study shows that the ML method performs well in estimating the TACARR model parameters. The empirical performance of the TACARR model was investigated using IBM index data and results show that the proposed model is a good alternative for in-sample prediction and out-of-sample forecasting of volatility. Key Words: Volatility Modeling, Asymmetric Volatility, CARR Models, Regime Switching.
翻译:本文介绍了用于模拟金融资产每日价格范围模型的临界对称自动递减偏差值(TACARR)公式,假定每个时间点在两种制度之间产生有条件的预期偏差的过程,标记为向上市场和向下市场状态;还允许错误过程的扰动性条件根据制度在两种分配之间转换;假设由时间序列过去值驱动的自我调整阈值部分决定了当前的市场制度;拟议的模型能够捕捉金融市场波动不对称和超摄氏性行为等各个方面;拟议的模型试图解决现有价格范围模型中发现的若干潜在赤字,例如条件自动递减区域(CARR)、Asymor Re(AC)、FACARR(FAC)、ACAR(FAC)和Trostsold 自动递增幅度区域(TARR)模型。模型的参数是使用最大易变利度方法估算的。模拟研究表明,ML方法在估算TRAAA预测模型和TRA的模型中进行良好模拟。