Network effects govern the evolution of maritime trade

Maritime transport accounts for over 80% of the world trade volume and is the backbone of the global economy. Global supply chains create a complex network of trade flows. The structure of this network impacts not only the socioeconomic development of the concerned regions but also their ecosystems....

Full description

Bibliographic Details
Main Author: Zuzanna Kosowska-Stamirowska
Format: Article in Journal/Newspaper
Language:unknown
Subjects:
Online Access:http://www.pnas.org/content/117/23/12719.full
id ftrepec:oai:RePEc:nas:journl:v:117:y:2020:p:12719-12728
record_format openpolar
spelling ftrepec:oai:RePEc:nas:journl:v:117:y:2020:p:12719-12728 2024-04-14T08:08:17+00:00 Network effects govern the evolution of maritime trade Zuzanna Kosowska-Stamirowska http://www.pnas.org/content/117/23/12719.full unknown http://www.pnas.org/content/117/23/12719.full article ftrepec 2024-03-19T10:34:24Z Maritime transport accounts for over 80% of the world trade volume and is the backbone of the global economy. Global supply chains create a complex network of trade flows. The structure of this network impacts not only the socioeconomic development of the concerned regions but also their ecosystems. The movements of ships are a considerable source of CO 2 emissions and contribute to climate change. In the wake of the announced development of Arctic shipping, the need to understand the behavior of the maritime trade network and to predict future trade flows becomes pressing. We use a unique database of daily movements of the world fleet over the period 1977–2008 and apply machine learning techniques on network data to develop models for predicting the opening of new shipping lines and for forecasting trade volume on links. We find that the evolution of this system is governed by a simple rule from network science, relying on the number of common neighbors between pairs of ports. This finding is consistent over all three decades of temporal data. We further confirm it with a natural experiment, involving traffic redirection from the port of Kobe after the 1995 earthquake. Our forecasting method enables researchers and industry to easily model effects of potential future scenarios at the level of ports, regions, and the world. Our results also indicate that maritime trade flows follow a form of random walk on the underlying network structure of sea connections, highlighting its pivotal role in the development of maritime trade. maritime trade, transport networks, network science, evolving networks, machine learning Article in Journal/Newspaper Arctic Climate change RePEc (Research Papers in Economics) Arctic
institution Open Polar
collection RePEc (Research Papers in Economics)
op_collection_id ftrepec
language unknown
description Maritime transport accounts for over 80% of the world trade volume and is the backbone of the global economy. Global supply chains create a complex network of trade flows. The structure of this network impacts not only the socioeconomic development of the concerned regions but also their ecosystems. The movements of ships are a considerable source of CO 2 emissions and contribute to climate change. In the wake of the announced development of Arctic shipping, the need to understand the behavior of the maritime trade network and to predict future trade flows becomes pressing. We use a unique database of daily movements of the world fleet over the period 1977–2008 and apply machine learning techniques on network data to develop models for predicting the opening of new shipping lines and for forecasting trade volume on links. We find that the evolution of this system is governed by a simple rule from network science, relying on the number of common neighbors between pairs of ports. This finding is consistent over all three decades of temporal data. We further confirm it with a natural experiment, involving traffic redirection from the port of Kobe after the 1995 earthquake. Our forecasting method enables researchers and industry to easily model effects of potential future scenarios at the level of ports, regions, and the world. Our results also indicate that maritime trade flows follow a form of random walk on the underlying network structure of sea connections, highlighting its pivotal role in the development of maritime trade. maritime trade, transport networks, network science, evolving networks, machine learning
format Article in Journal/Newspaper
author Zuzanna Kosowska-Stamirowska
spellingShingle Zuzanna Kosowska-Stamirowska
Network effects govern the evolution of maritime trade
author_facet Zuzanna Kosowska-Stamirowska
author_sort Zuzanna Kosowska-Stamirowska
title Network effects govern the evolution of maritime trade
title_short Network effects govern the evolution of maritime trade
title_full Network effects govern the evolution of maritime trade
title_fullStr Network effects govern the evolution of maritime trade
title_full_unstemmed Network effects govern the evolution of maritime trade
title_sort network effects govern the evolution of maritime trade
url http://www.pnas.org/content/117/23/12719.full
geographic Arctic
geographic_facet Arctic
genre Arctic
Climate change
genre_facet Arctic
Climate change
op_relation http://www.pnas.org/content/117/23/12719.full
_version_ 1796305715707510784