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Jing Yuan

Researcher at University of Science and Technology of China

Publications -  13
Citations -  3313

Jing Yuan is an academic researcher from University of Science and Technology of China. The author has contributed to research in topics: Taxis & Global Positioning System. The author has an hindex of 8, co-authored 13 publications receiving 2890 citations. Previous affiliations of Jing Yuan include Microsoft.

Papers
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Proceedings ArticleDOI

T-drive: driving directions based on taxi trajectories

TL;DR: This paper mine smart driving directions from the historical GPS trajectories of a large number of taxis, and provides a user with the practically fastest route to a given destination at a given departure time.
Proceedings ArticleDOI

Driving with knowledge from the physical world

TL;DR: A Cloud-based system computing customized and practically fast driving routes for an end user using (historical and real-time) traffic conditions and driver behavior, which accurately estimates the travel time of a route for a user; hence finding the fastest route customized for the user.
Journal ArticleDOI

T-Drive: Enhancing Driving Directions with Taxi Drivers' Intelligence

TL;DR: A time-dependent landmark graph is proposed to model the dynamic traffic pattern as well as the intelligence of experienced drivers so as to provide a user with the practically fastest route to a given destination at a given departure time.
Proceedings ArticleDOI

Where to find my next passenger

TL;DR: A recommender for taxi drivers and people expecting to take a taxi, using the knowledge of passengers' mobility patterns and taxi drivers' pick-up behaviors learned from the GPS trajectories of taxicabs to recommend some locations towards which they are more likely to pick up passengers quickly and maximize the profit.
Proceedings ArticleDOI

Discovering spatio-temporal causal interactions in traffic data streams

TL;DR: Algorithms which construct outlier causality trees based on temporal and spatial properties of detected outliers reveal not only recurring interactions among spatio-temporal outliers, but potential flaws in the design of existing traffic networks.