Forecasting the (open-high-low-close)OHLC data contained in candlestick chart is of great practical importance, as exemplified by applications in the field of finance. Typically, the existence of the inherent constraints in OHLC data poses great challenge to its prediction, e.g., forecasting models may yield unrealistic values if these constraints are ignored. To address it, a novel transformation approach is proposed to relax these constraints along with its explicit inverse transformation, which ensures the forecasting models obtain meaningful openhigh-low-close values. A flexible and efficient framework for forecasting the OHLC data is also provided. As an example, the detailed procedure of modelling the OHLC data via the vector auto-regression (VAR) model and vector error correction (VEC) model is given. The new approach has high practical utility on account of its flexibility, simple implementation and straightforward interpretation. Extensive simulation studies are performed to assess the effectiveness and stability of the proposed approach. Three financial data sets of the Kweichow Moutai, CSI 100 index and 50 ETF of Chinese stock market are employed to document the empirical effect of the proposed methodology.
翻译:如金融领域的应用所示,对烛台图中(开放低距离)OHLC数据进行预测具有重大的实际意义,通常,OHLC数据中存在的内在限制对其预测构成巨大挑战,例如,如果忽视这些限制,预测模型可能会产生不现实的价值;为解决这一问题,建议采取新的转变办法,放宽这些限制,同时明确进行反向转换,确保预测模型获得有意义的开放低距离值;还提供了预测OHLC数据灵活有效的框架,例如,通过矢量自动反射模型和矢量错误纠正模型建立OHLC数据模型的详细程序;新方法具有高度的实际效用,因为其灵活性、简单实施和直截了当的解释;进行广泛的模拟研究,评估拟议方法的实效和稳定性;利用中国股票市场的Kweichow Moutai、CSI 100指数和50 ETF三套财务数据来记录拟议方法的经验效果。