VaR as a mitigating risk tool in the maritime sector: An empirical approach on freight rates

IF 3.2 Q1 BUSINESS, FINANCE Quantitative Finance and Economics Pub Date : 2022-01-01 DOI:10.3934/qfe.2022007
Basdekis Charalampos, Katsampoxakis Ioannis, Gkolfinopoulos Alexandros
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引用次数: 2

Abstract

Shipping freight rates fluctuation is considered as one of the most important risk factors that participants face in the tanker shipping market (ship-owners, charterers, traders, hedge funds, banks and other financial institutions) in order to watch its evolution. This study examines freight rates for two of the most popular clean and dirty tanker routes; TC2 and TD3 from 22 May 2007 to 21 September 2015, using daily spot and future prices. The full data sample is divided into two sub periods, from 22 May 2007 to 13 August 2013 (in sample period) on which the model estimation section is based and from 14 August 2013 to 21 September 2015 (out of sample period) over which the Value at Risk is measured and backtesting process was performed. In all cases tested, there are observed high peaks and fat tails in all distributions. We apply a range of VaR models (parametric and non-parametric) in order to estimate the risk of the returns of TC2 route and TD3 route for spot, one month and three months future market. Backtesting tools are implemented in order to find the best fit model in terms of economic and statistical accuracy. Our empirical analysis concludes that the best fit models used for mitigating risk are simple GARCH model and non-parametric model. The above outcome seems to be valid a) for spot returns as well as for future returns and b) for short and long positions. In addition to the aforementioned conclusions, it is observed high freight rate risk at all routes. Our results are useful for risk management purposes for all the tanker shipping market participants and derivatives' counterparties.
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风险价值作为海事部门降低风险的工具:运费的实证方法
航运运价波动被认为是油轮运输市场参与者(船东、租船商、贸易商、对冲基金、银行和其他金融机构)面临的最重要的风险因素之一,以便观察其演变。本研究考察了两条最受欢迎的清洁和肮脏油轮航线的运费;TC2和TD3从2007年5月22日至2015年9月21日,使用每日现货和期货价格。完整的数据样本分为两个子周期,从2007年5月22日到2013年8月13日(样本期),模型估计部分基于此,从2013年8月14日到2015年9月21日(样本期外),在此期间测量风险值并执行回测过程。在所有测试的情况下,在所有分布中都观察到高峰和肥尾。我们应用了一系列VaR模型(参数和非参数)来估计TC2路线和TD3路线在现货、一个月和三个月未来市场的收益风险。实施回溯测试工具是为了在经济和统计准确性方面找到最适合的模型。我们的实证分析表明,最适合降低风险的模型是简单GARCH模型和非参数模型。上述结果似乎对a)即期回报和未来回报都有效,b)空头和多头头寸都有效。除了上述结论,观察到所有航线的高运费风险。我们的研究结果对所有油轮运输市场参与者和衍生品交易对手的风险管理目的都是有用的。
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来源期刊
CiteScore
0.30
自引率
1.90%
发文量
14
审稿时长
12 weeks
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