The theme of the workshop is "Urban Reasoning" which focuses on reasoning from complex challenges in cities. Urban reasoning is a process that empowers and extends the urban computing’s vision as well as its applications. Urban computing aims to help us understand the nature of urban phenomena and predict the future of cities. Urban reasoning aims in extending this vision with a main focus on providing insights about the reasons of the major challenges that our cities face (e.g., crowd congestions,increased network demand, air pollution, water floods, etc.). Urban reasoning relies on a multi-stage analytics process employing advanced machine learning and data mining techniques to provide deeper insights and new type of applications to various stakeholders where the initial data analytics stage(s) is applied on a city-wide scale for deriving context information while the followingstage(s) focuses on the analytics related to a certain domain challenge. The context information derived from the first stage(s) analytics is further fusedinto the following stage(s) with the aim of providing insights and reasoning behind certain domain challenges that cities face. Urban reasoning relies on other traditional fields like environmental engineering, civil engineering, network engineering, transportation, and sociology in the context of urban spaces.

Particular areas of interest include, but are not limited to:

  • Anomaly detection and event discovery in urban areas
  • Reasoning behind patterns in urban settings
  • Making sense of multiple & diverse spatio-temporal data
  • Data fusion from data across different domains
  • Spatio-temporal applications
  • Deep Learning applied to spatio-temporal data
  • Leveraging social media data & other open source data sources for UrbanReasoning
  • City management problems
  • Mining Data from Location-based Social Networks
  • Recommender systems for urban planning
  • Mining Data from Location-based Social Networks
  • Mining urban environmental and pollution data
  • Image and Video Analytics for urban analytics
  • Large-scale visualization of urban data
  • Smart buildings, grids, transportation, and utilities
  • Streaming/real-time processing of spatio-temporal data
Contact

For questions, please email to: haythama@ie.ibm.com

The page limit for full papers is 12 pages (including references and supplemental material), and must conform to standard ECML/PKDD conference submission guidelines.

Short papers, describing ongoing work and vision statements relevant to theworkshop (max 4 pages)

Demonstration papers, describing working solutions relevant to the workshop(max 4 pages)

At least one of the authors of each paper accepted for presentation in UrbReas 2018 must register for the workshop.

Important Dates:

Submission Deadline: (Extended!) July 09, 2018 (AoE)

Notification of Acceptance: July 23, 2018

Camera Ready: August 06, 2018