2022
DOI: 10.3390/jmse10111608
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On the K-Means Clustering Model for Performance Enhancement of Port State Control

Abstract: Nowadays, the concept of port state control is viewed as a safety net to safeguard maritime security, protect the marine environment, and ensure decent working and living circumstances for seafarers on board to a large extent. The ship can be detained for further checking if significant deficiencies are discovered during a port state control inspection. There is much research on this topic, but there have been few studies on the relationship between ship deficiencies and ship detention decisions using unsuperv… Show more

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Cited by 3 publications
(2 citation statements)
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“…Clustering models can be utilized to investigate the relationships between data points and outlier data points, which is aimed to reduce the dimensionality of a dataset and to detect anomalies. Clustering models can also be used to improve the performance of supervised learning algorithms including classification and regression [8]. Through knowing the general structure of a dataset, clustering models can assist to improve the accuracy and speed of supervised learning models [9].…”
Section: Introductionmentioning
confidence: 99%
“…Clustering models can be utilized to investigate the relationships between data points and outlier data points, which is aimed to reduce the dimensionality of a dataset and to detect anomalies. Clustering models can also be used to improve the performance of supervised learning algorithms including classification and regression [8]. Through knowing the general structure of a dataset, clustering models can assist to improve the accuracy and speed of supervised learning models [9].…”
Section: Introductionmentioning
confidence: 99%
“…Port state control, wherein port authorities enforce these regulations on visiting foreign-flagged ships, is an effective approach to ensuring the compliance of these ships with international laws and regulations. Aiming to improve the efficiency of port state control, Hou et al [1] designed an unsupervised machine learning model-a K means clustering model-to inform port state authorities of the conditions of visiting ships, enabling targeted inspections of substandard ships. Yang et al [2] proposed several supervised machine learning models-a traditional linear regression model, a linear regression model with a pairwise comparison loss function, and a support vector machine model with a pairwise comparison loss function-to recommend ships for the port states to inspect.…”
mentioning
confidence: 99%