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DTSTAMP:20170726T101745
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SUMMARY:Vortrag | Ross Maciejewski, Arizona State University in the School of Computing, Informatics & Decision Systems Engineering
DESCRIPTION:\n\n\nSprecher\n\n\nRoss Maciejewski, Arizona State University in the School of Computing, Informatics &amp;\nDecision Systems Engineering\n\n\n\n\n\nTitel\n\n\n\nVisual Analytics Methods for Spatiotemporal Analysis\n\n\n\n\n&nbsp;\n\nFrom smart phones to fitness trackers to sensor enabled buildings, data is currently being\ncollected at an unprecedented rate. Now, more than ever, data exists that can be used to gain\ninsight into how policy decisions can impact our daily lives. For example, one can imagine using\ndata to help predict where crime may occur next or inform decisions on police resource allocations\nor diet and activity patterns could be used to provide recommendations for improving an\nindividual's overall health and well-being. For spatial data, the translation of such data into a\nvisual form allows users to quickly&nbsp;\nsee patterns, explore summaries and relate domain knowledge about underlying geographical\nphenomena that would not be apparent in tabular form. However, several critical challenges arise\nwhen visualizing and exploring these large spatiotemporal datasets. While, the underlying\ngeographical component of the data lends itself well to&nbsp;\nunivariate visualization in the form of traditional cartographic representations (e.g.,\nchoropleth, isopleth, dasymetric maps), as the data becomes multivariate, cartographic\nrepresentations become more complex. In this talk, I will discuss ongoing research in\nspatiotemporal visualization and analytics, describing examples from criminology, genealogy and\ndemographics.\n\nSpeaker’s Bio\nRoss Maciejewski is an Associate Professor at Arizona State University in the School of\nComputing, Informatics &amp; Decision Systems Engineering. His primary research interests are in\nthe areas of geographical visualization and visual analytics focusing on public&nbsp;\nhealth, dietary analysis, social media, criminal incident reports, and the food-energy-water\nnexus. He has served on the organizing committee for the IEEE Conference on Visual Analytics\nScience and Technology and the IEEE/VGTC EuroVis Conference. He is a recipient of an NSF CAREER\nAward (2014) and was recently named a Fulton Faculty Exemplar and Global Security Fellow at Arizona\nState.\n\nhttp://rmaciejewski.faculty.asu.edu/\n\n\n\n&nbsp; \nSee&nbsp; \nhttp://www.sfbtrr161.de/events/events.html&nbsp;for\nall events of the Collaborative Research Center/Transregio 161&nbsp;
DTSTART;VALUE=DATE:20170619
LOCATION:University of Stuttgart, Campus Vaihingen, VISUS-Building, Powerwall Room -01.116, Allmandring 19, 70569 Stuttgart 
URL;VALUE=URI:https://www.vis.uni-stuttgart.de/aktuelles/veranstaltungen/Vortrag-Ross-Maciejewski-Arizona-State-University-in-the-School-of-Computing-Informatics-Decision-Systems-Engineering/
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