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Exploiting multiclass classification algorithms for the prediction of ship routes: a study in the area of Malta

机译:利用船舶路线预测的多标配分类算法:马耳他地区的研究

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Purpose - Ship route prediction (SRP) is a quite complicated task, which enables the determination of the next position of a ship after a given period of time, given its current position. This paper aims to describe a study, which compares five families of multiclass classification algorithms to perform SRP. Design/methodology/approach-Tested algorithm families include: Naive Bayes (NB), nearest neighbors, decision trees, linear algorithms and extension from binary. A common structure for all the algorithm families was implemented and adapted to the specific case, according to the test to be done. The tests were done on one month of real data extracted from automatic identification system messages, collected around the island of Malta.Findings-Experiments show that K-nearest neighbors and decision trees algorithms outperform all the other algorithms. Experiments also demonstrate that linear algorithms and NB have a very poor performance. Research limitations/implications - This study is limited to the area surrounding Malta. Thus, findings cannot be generalized to every context. However, the methodology presented is general and can help other researchers in this area to choose appropriate methods for their problems.Practical implications-The results of this study can be exploited by applications for maritime surveillance to build decision support systems to monitor and predict ship routes in a given area. For example, to protect the marine environment, the use of SRP techniques could be used to protect areas at risk such as marine protected areas, from illegal fishing.Originality/value - The paper proposes a solid methodology to perform tests on SRP, based on a series of important machine learning algorithms for the prediction.
机译:目的 - 船舶路由预测(SRP)是一个非常复杂的任务,这使得在给定的时间段之后,能够在给定其当前位置确定船的下一个位置。本文旨在描述一项研究,该研究比较了五种多种多组分类算法进行了SRP。设计/方法/接近测试算法家族包括:Naive Bayes(NB),最近的邻居,决策树,线性算法和二进制的扩展。根据要完成的测试,实现并适用于特定情况的所有算法系列的共同结构。测试是在从自动识别系统消息中提取的一个月的实际数据中完成的,在马耳他岛周围收集。实验显示K-Collect邻居和决策树算法优于所有其他算法。实验还证明了线性算法和NB的性能非常差。研究限制/影响 - 本研究仅限于马耳他周围的地区。因此,结果无法推广到每个上下文。但是,所呈现的方法是一般的,可以帮助该领域的其他研究人员选择适当的方法。实践意义 - 本研究的结果可以通过海事监控的应用来建立决策支持系统来监控和预测船舶路线在给定区域。例如,为了保护海洋环境,可以使用SRP技术的使用来保护面临的面积,如海洋保护区,非法捕捞。物流/价值 - 论文提出了一种基于SRP的测试测试,基于一系列重要的预测机器学习算法。

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