The design dataset is the backbone of data-driven design. Ideally, the
d...
Time series analysis is a fundamental task in various application domain...
Following a leading vehicle is a daily but challenging task because it
r...
Car-following behavior modeling is critical for understanding traffic fl...
Passenger clustering based on travel records is essential for transporta...
Deep probabilistic time series forecasting has gained significant attent...
Accurately monitoring road traffic state and speed is crucial for variou...
Bayesian optimization (BO) primarily uses Gaussian processes (GP) as the...
Highway traffic states data collected from a network of sensors can be
c...
A common assumption in deep learning-based multivariate and multistep tr...
Existing deep learning-based traffic forecasting models are mainly train...
Spatiotemporal traffic data imputation is of great significance in
intel...
The problem of broad practical interest in spatiotemporal data analysis,...
Humans are experts in making decisions for challenging driving tasks wit...
Accurate calibration of car-following models is essential for investigat...
Probabilistic modeling of multidimensional spatiotemporal data is critic...
No human drives a car in a vacuum; she/he must negotiate with other road...
Modeling the relationship between vehicle speed and density on the road ...
The multiple-target self-organizing pursuit (SOP) problem has wide
appli...
Accurate forecasting of bus travel time and its uncertainty is critical ...
Modern time series datasets are often high-dimensional, incomplete/spars...
Estimation of link travel time correlation of a bus route is essential t...
Bus system is a critical component of sustainable urban transportation.
...
Spatiotemporal traffic data (e.g., link speed/flow) collected from senso...
Spatiotemporal kriging is an important application in spatiotemporal dat...
Missing data is an inevitable and ubiquitous problem for traffic data
co...
Spatiotemporal forecasting plays an essential role in various applicatio...
Individual mobility prediction is an essential task for transportation d...
As a regression technique in spatial statistics, spatiotemporally varyin...
Metro systems in megacities such as Beijing, Shenzhen and Guangzhou are ...
This paper studies the traffic state estimation (TSE) problem using spar...
The bus system is a critical component of sustainable urban transportati...
Spatiotemporal traffic time series (e.g., traffic volume/speed) collecte...
Forecasting the short-term ridership among origin-destination pairs (OD
...
Categorization is an essential component for us to understand the world ...
Merging at highway on-ramps while interacting with other human-driven
ve...
Missing value problem in spatiotemporal traffic data has long been a
cha...
Connected and automated vehicles (CAVs) have attracted more and more
att...
Time series prediction has been a long-standing research topic and an
es...
Time series forecasting and spatiotemporal kriging are the two most impo...
Discovering patterns and detecting anomalies in individual travel behavi...
Accurate forecasting of passenger flow (i.e., ridership) is critical to ...
Sparsity and missing data problems are very common in spatiotemporal tra...
Large-scale and multidimensional spatiotemporal data sets are becoming
u...
The pursuit domain, or predator-prey problem is a standard testbed for t...