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Spatio-Temporal Analysis for Smart City Data

Published:23 April 2018Publication History

ABSTRACT

The data gathered from smart cities can help citizens and city manager planners know where and when they should be aware of the repercussions regarding events happening in different parts of the city. Most of the smart city data analysis solutions are focused on the events and occurrences of the city as a whole, making it difficult to discern the exact place and time of the consequences of a particular event. We propose a novel method to model the events in a city in space and time. We apply our methodology for vehicular traffic data basing our models in (convolutional) neuronal networks.

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  1. Spatio-Temporal Analysis for Smart City Data

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        cover image ACM Other conferences
        WWW '18: Companion Proceedings of the The Web Conference 2018
        April 2018
        2023 pages
        ISBN:9781450356404

        Copyright © 2018 ACM

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        International World Wide Web Conferences Steering Committee

        Republic and Canton of Geneva, Switzerland

        Publication History

        • Published: 23 April 2018

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        Overall Acceptance Rate1,899of8,196submissions,23%

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