This study presents a novel approach to forecast freight rates in container shipping by integrating soft facts in the form of measures originating from surveys among practitioners asked about their sentiment, confidence or perception about present and future market development. As a base case, an autoregressive integrated moving average (ARIMA) model was used and compared the results with multivariate modelling frameworks that could integrate exogenous variables, that is, ARIMAX and Vector Autoregressive (VAR). We find that incorporating the Logistics Confidence Index (LCI) provided by Transport Intelligence into the ARIMAX model improves forecast performance greatly. Hence, a sampling of sentiments, perceptions and/or confidence from a pan...
Over the years, the issue of freight rates has been a thorn in the flesh for most cargo owners in re...
The fast-paced and ever changing freight market compels maritime executives to use sound forecasting...
With the increasing availability of large datasets and improvements in prediction algorithms, machin...
This study presents a novel approach to forecast freight rates in container shipping by integrating ...
Reliable freight rate forecasts are essential to stimulate ocean transportation and ensure stakehold...
PhD ThesisThis thesis uses econometric modelling and forecasting to investigate a number of importan...
This paper addresses the issue of freight rate risk measurement via value at risk (VaR) and forecast...
This thesis investigates whether multivariate machine learning forecasting methods, using informatio...
The volatile characteristics of the tanker market pose challenges to forecasting. In addition, the v...
AbstractThis paper investigates the accuracy of judgmental forecasting methods for dry bulk freight ...
The dry bulk shipping market is a major component of the international shipping market and it is cha...
This thesis investigates whether information derived from AIS-data incorporates superior information...
iContainers is an on-line maritime freight forwarder firm that offers real time prices on its websit...
iContainers is an on-line maritime freight forwarder firm that offers real time prices on its websit...
The main purpose of this thesis is to provide best possible one-month forecasts of both dry bulk (Ba...
Over the years, the issue of freight rates has been a thorn in the flesh for most cargo owners in re...
The fast-paced and ever changing freight market compels maritime executives to use sound forecasting...
With the increasing availability of large datasets and improvements in prediction algorithms, machin...
This study presents a novel approach to forecast freight rates in container shipping by integrating ...
Reliable freight rate forecasts are essential to stimulate ocean transportation and ensure stakehold...
PhD ThesisThis thesis uses econometric modelling and forecasting to investigate a number of importan...
This paper addresses the issue of freight rate risk measurement via value at risk (VaR) and forecast...
This thesis investigates whether multivariate machine learning forecasting methods, using informatio...
The volatile characteristics of the tanker market pose challenges to forecasting. In addition, the v...
AbstractThis paper investigates the accuracy of judgmental forecasting methods for dry bulk freight ...
The dry bulk shipping market is a major component of the international shipping market and it is cha...
This thesis investigates whether information derived from AIS-data incorporates superior information...
iContainers is an on-line maritime freight forwarder firm that offers real time prices on its websit...
iContainers is an on-line maritime freight forwarder firm that offers real time prices on its websit...
The main purpose of this thesis is to provide best possible one-month forecasts of both dry bulk (Ba...
Over the years, the issue of freight rates has been a thorn in the flesh for most cargo owners in re...
The fast-paced and ever changing freight market compels maritime executives to use sound forecasting...
With the increasing availability of large datasets and improvements in prediction algorithms, machin...