Factorized Similarity Learning in Networks
Shiyu Chang, Guo-Jun Qi, et al.
ICDM 2014
Many factors can affect the predictability of public bus services such as traffic, weather, day of week, and hour of day. However, the exact nature of such relationships between travel times and predictor variables is, in most situations, not known. In this paper we develop a framework that allows for flexible modeling of bus travel times through the use of Additive Models. The proposed class of models provides a principled statistical framework that is highly flexible in terms of model building. The experimental results demonstrate uniformly superior performance of our best model as compared to previous prediction methods when applied to a very large GPS data set obtained from buses operating in the city of Rio de Janeiro.
Shiyu Chang, Guo-Jun Qi, et al.
ICDM 2014
Theodoros Lappas, Marcos R. Vieira, et al.
SIGMOD 2013
Matthias Kormaksson, Marcos R. Vieira, et al.
SPE Digital Energy 2015
Shiyu Chang, Charu C. Aggarwal, et al.
ICDM 2014