An Experimental Study and Analysis of Long-Term Multi-Trending Trajectory Forecasting of Stock Indices Using Time Series Inferential Statistical Projection

K. G, B. S, Piriadarshani D
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Abstract

The focus of this study is on time series inferential statistical projection and analysis for long-term multi-trending trajectory forecast modelling. Inferential statistics was used for projection and analysis of long-term multi-trending trajectory forecasting. The proposed model is trained, tested and validated on three different types of stocks viz. NVIDIA, UNG and IBM taken from the NASDAQ stock market index. In Phase I, the long-term deterministic multi-trending model is assessed and fitted. Model skewed residual series is assessed using the goodness of fit in Phase II. The future stock close prices and long-term multi-trending trajectory paths are simulated and analyzed in Phase III. Finally, in Phase IV, epsilon-skew-normal results and normal distribution assumptions are compared. The experimental result shows that an uptrend trajectory of historical close price simulates an uptrend trajectory in the forecasted close price, a downtrend trajectory of historical close price simulates a downtrend trajectory in the forecasted close price, a sideways or mixed trend trajectory of historical close price simulates a sideways or mixed trend trajectory in the forecasted close price.
基于时间序列推理统计投影的股票指数长期多趋势轨迹预测实验研究与分析
本研究的重点是长期多趋势轨迹预测模型的时间序列推断统计预测和分析。采用推理统计方法对长期多趋势轨迹预测进行预测和分析。所提出的模型在纳斯达克股票市场指数中的三种不同类型的股票即NVIDIA, UNG和IBM上进行了训练,测试和验证。在第一阶段,评估和拟合长期确定性多趋势模型。模型偏态残差序列在第二阶段使用拟合优度进行评估。第三阶段模拟和分析了未来股票收盘价和长期多趋势轨迹路径。最后,在第四阶段,比较了ε -偏态正态结果和正态分布假设。实验结果表明,历史收盘价的上行轨迹模拟了预测收盘价的上行轨迹,历史收盘价的下行轨迹模拟了预测收盘价的下行轨迹,历史收盘价的横盘或混合趋势轨迹模拟了预测收盘价的横盘或混合趋势轨迹。
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