Hyungkun Jung, Kang-Woo Lee, Joong-Hyun Choi, Eun-Sun Cho
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Bayesian Estimation of Vessel Destination and Arrival Times
1Predicting the destination port and arrival time of a vessel is challenging, even with the availability of a tremendous amount of trace data. Our goal for this challenge is to build a solution to accurately predict the destination port and arrival times of a given vessel using Bayesian inference and heuristics.