The objective of this paper is to train a data-driven price prediction model for container pricing based on demand and supply for the Australian container shipping industry. The sourcing of demand, supply and pricing data has been done from Australian ports, Sea-Intelligence maritime analysis and the Shanghai Freight Index (SCFI) respectively. Data-driven prediction have been realized by applying three different regression models that include support vector regression (SVR), random forest regression (RFR) and gradient booster regression (GBR) over the gathered datasets after initial feature engineering. A comparison of research outcomes shows that GBR outperforms all the other models by offering a test accuracy of 84%
This study demonstrates how to profit from up-to-date dynamic economic big data, which contributes t...
Supply chain disruptions are expected to significantly increase over the next decades. In particular...
This data set provides pricing details discussed in the article and explains the results shown in th...
Not having an exact cost standard can present a problem for setting the shipping costs on a freight ...
University of Technology Sydney. Faculty of Engineering and Information Technology.Machine Learning ...
This thesis investigates whether multivariate machine learning forecasting methods, using informatio...
Demand forecasting has a pivotal role in making informed business decisions by predicting future sal...
This thesis focuses on the application of machine learning for vessel valuation. In the following pa...
The volatile characteristics of the tanker market pose challenges to forecasting. In addition, the v...
Background With the development of global trade, the volume of goods transported around the world is...
Demand forecasting has a pivotal role in making informed business decisions by predicting future sal...
iContainers is an on-line maritime freight forwarder firm that offers real time prices on its websit...
The shipping industry is fairly volatile pertaining to shipment pricing. To handle this volatility, ...
This paper presents mathematical relationships that allow forecast of the estimated sale price of ne...
With the increasing availability of large datasets and improvements in prediction algorithms, machin...
This study demonstrates how to profit from up-to-date dynamic economic big data, which contributes t...
Supply chain disruptions are expected to significantly increase over the next decades. In particular...
This data set provides pricing details discussed in the article and explains the results shown in th...
Not having an exact cost standard can present a problem for setting the shipping costs on a freight ...
University of Technology Sydney. Faculty of Engineering and Information Technology.Machine Learning ...
This thesis investigates whether multivariate machine learning forecasting methods, using informatio...
Demand forecasting has a pivotal role in making informed business decisions by predicting future sal...
This thesis focuses on the application of machine learning for vessel valuation. In the following pa...
The volatile characteristics of the tanker market pose challenges to forecasting. In addition, the v...
Background With the development of global trade, the volume of goods transported around the world is...
Demand forecasting has a pivotal role in making informed business decisions by predicting future sal...
iContainers is an on-line maritime freight forwarder firm that offers real time prices on its websit...
The shipping industry is fairly volatile pertaining to shipment pricing. To handle this volatility, ...
This paper presents mathematical relationships that allow forecast of the estimated sale price of ne...
With the increasing availability of large datasets and improvements in prediction algorithms, machin...
This study demonstrates how to profit from up-to-date dynamic economic big data, which contributes t...
Supply chain disruptions are expected to significantly increase over the next decades. In particular...
This data set provides pricing details discussed in the article and explains the results shown in th...