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A Hybrid LSTM-Based Ensemble Learning Approach for China Coastal Bulk Coal Freight Index Prediction

机译:中国沿海煤炭货运指数预测的基于混合LSTM的集合学习方法

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China Coastal Bulk Coal Freight Index (CBCFI) reflects how the coastal coal transporting market’s freight rates in China are fluctuated, significantly impacting the enterprise’s strategic decisions and risk-avoiding. Though trend analysis on freight rate has been extensively conducted, the property of the shipping market, i.e., it varies over time and is not stable, causes CBCFI to be hard to be accurately predicted. A novel hybrid approach is developed in the paper, integrating Long Short-Term Memory (LSTM) and ensemble learning techniques to forecast CBCFI. The hybrid LSTM-based ensemble learning (LSTM-EL) approach predicts the CBCFI by extracting the time-dependent information in the original data and incorporating CBCFI-related data, e.g., domestic and overseas thermal coal spot prices, coal inventory, the prices of fuel oil, and crude oil. To demonstrate the applicability and generality of the proposed approach, different time-scale datasets (e.g., daily, weekly, and monthly) in a rolling forecasting experiment are conducted. Empirical results show that domestic and overseas thermal coal spot prices and crude oil prices have great influences on daily, weekly, and monthly CBCFI values. And in daily, weekly, and monthly forecasting cases, the LSMT-EL approaches have higher prediction accuracy and a greater trend complying ratio than the relevant single ensemble learning algorithm. The hybrid method outperforms others when it works with information involving a dramatic market recession, elucidating CBCFI’s predictable ability. The present work is of high significance to general commerce, commerce-related, and hedging strategic procedures within the coastal shipping market.
机译:中国沿海煤炭货运指数(CBCFI)反映了中国沿海煤炭运输市场的运费波动,显着影响企业的战略决策和避免风险。虽然对货运率的趋势分析已被广泛进行,但运输市场的财产,即它随着时间的推移而变化而且不稳定,导致CBCFI难以准确预测。在纸质中开发了一种新颖的混合方法,整合了长短的短期记忆(LSTM)和集合学习技术来预测CBCFI。基于混合LSTM的集合学习(LSTM-EL)方法通过提取原始数据中的时间依赖信息并包含CBCFI相关数据,例如国内外热煤现货价格,煤炭库存,价格来预测CBCFI燃油和原油。为了证明所提出的方法的适用性和普遍性,不同的时间级数据集(例如,每日,每周和每月和每月)进行滚动预测实验。经验结果表明,国内外热煤现货价格和原油价格对日报,每周和每月CBCFI值有很大影响。在日常,每周和每月预测情况下,LSMT-EL方法具有更高的预测精度和比相关的单一集合学习算法更高的趋势趋势。混合方法在与涉及戏剧性市场衰退的信息工作时,阐明了CBCFI的可预测能力,且杂交方法表现出其他人。本作对沿海航运市场内的一般商务,商业有关和对冲战略程序具有很大的意义。

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