2018
DOI: 10.1145/3162076
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A Visual Analytics Framework for Exploring Theme Park Dynamics

Abstract: In 2015, the top 10 largest amusement park corporations saw a combined annual attendance of over 400 million visitors. Daily average attendance in some of the most popular theme parks in the world can average 44,000 visitors per day. These visitors ride attractions, shop for souvenirs, and dine at local establishments; however, a critical component of their visit is the overall park experience. This experience depends on the wait time for rides, the crowd flow in the park, and various other factors linked to t… Show more

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Cited by 12 publications
(10 citation statements)
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“…Hotspot and causality analyses and emergency discovery were supported in their system. Steptoe et al [23] visually analyzed tourists' trajectories, and their visiting and communication behaviors in parks, to provide insight into improving park services. Chen et al [29] connected multi-source heterogeneous urban spatiotemporal data through a novel spatiotemporal visual query, and applied it to finding lost objects.…”
Section: Public Servicesmentioning
confidence: 99%
See 1 more Smart Citation
“…Hotspot and causality analyses and emergency discovery were supported in their system. Steptoe et al [23] visually analyzed tourists' trajectories, and their visiting and communication behaviors in parks, to provide insight into improving park services. Chen et al [29] connected multi-source heterogeneous urban spatiotemporal data through a novel spatiotemporal visual query, and applied it to finding lost objects.…”
Section: Public Servicesmentioning
confidence: 99%
“…To perform the comparison, many methods can be used, such as local outlier factor (LOF) [103], cumulative summation (CUSUM) [95,106], the minDistort algorithm [53], and extreme value theory [38]. From the sampling perspective, anomaly detection can also be accomplished by measuring the deviation of a data point within the samples [23,104,105].…”
Section: Deviation-based Anomaly Detectionmentioning
confidence: 99%
“…The most natural way to represent the location aware data is to use geographical maps and plans. The routes in this case are shown as lines, and their attributes or object characteristics are encoded either by color or specially designed glyphs [22][23][24][25][26]. For example, an interesting approach to display the high dimensional spatial attributes and statistics associated with different routes is presented in [25].…”
Section: Approaches To Anomaly Detection In Objects Movement (Relatedmentioning
confidence: 99%
“…The cost function considers both the total pattern lengths and the edit distance between the sequences and generated patterns. Steptoe et al [21] converted user trajectories in theme parks into event sequences. Each event encodes the time spent on a certain location.…”
Section: Related Workmentioning
confidence: 99%