7,658 research outputs found
Discovery of Spatiotemporal Event Sequences
Finding frequent patterns plays a vital role in many analytics tasks such as finding itemsets, associations, correlations, and sequences. In recent decades, spatiotemporal frequent pattern mining has emerged with the main goal focused on developing data-driven analysis frameworks for understanding underlying spatial and temporal characteristics in massive datasets. In this thesis, we will focus on discovering spatiotemporal event sequences from large-scale region trajectory datasetes with event annotations. Spatiotemporal event sequences are the series of event types whose trajectory-based instances follow each other in spatiotemporal context. We introduce new data models for storing and processing evolving region trajectories, provide a novel framework for modeling spatiotemporal follow relationships, and present novel spatiotemporal event sequence mining algorithms
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COPE: Interactive Exploration of Co-occurrence Patterns in Spatial Time Series.
Spatial time series is a common type of data dealt with in many domains, such as economic statistics and environmental science. There have been many studies focusing on finding and analyzing various kinds of events in time series; the term 'event' refers to significant changes or occurrences of particular patterns formed by consecutive attribute values. We focus on a further step in event analysis: finding and exploring events that frequently co-occurred with a target class of similar events having occurred repeatedly over a period of time. This type of analysis can provide important clues for understanding the formation and spreading mechanisms of events and interdependencies among spatial locations. We propose a visual exploration framework COPE (Co-Occurrence Pattern Exploration), which allows users to extract events of interest from data and detect various co-occurrence patterns among them. Case studies and expert reviews were conducted to verify the effectiveness and scalability of COPE using two real-world datasets
A Spatial-based KDD Process to Better Understand the Spatiotemporal Phenomena
International audienceIn this paper, we present a knowledge discovery process ap- plied to hydrological data. To achieve this objective, we combine succes- sive methods to extract knowledge on data collected at stations located along several rivers. Firstly, data is pre processed in order to obtain different spatial proximities. Later, we apply two algorithms to extract spatiotemporal patterns and compare them. Such elements can be used to assess spatialized indicators to assist the interpretation of ecological and rivers monitoring pressure data
Spatio-temporal stochastic resonance induces patterns in wetland vegetation dynamics
Water availability is a major environmental driver affecting riparian and
wetland vegetation. The interaction between water table fluctuations and
vegetation in a stochastic environment contributes to the complexity of the
dynamics of these ecosystems. We investigate the possible emergence of spatial
patterns induced by spatio-temporal stochastic resonance in a simple model of
groundwater-dependent ecosystems. These spatio-temporal dynamics are driven by
the combined effect of three components: (i) an additive white Gaussian noise,
accounting for external random disturbances such as fires or fluctuations in
rain water availability, (ii) a weak periodic modulation in time, describing
hydrological drivers such as seasonal fluctuations of water table depth, and
(iii) a spatial coupling term, which takes into account the ability of
vegetation to spread and colonize other parts of the landscape. A suitable
cooperation between these three terms is able to give rise to ordered
structures which show spatial and temporal coherence, and are statistically
steady in time.Comment: 9 pages, 7 figure
Enhancing Exploratory Analysis across Multiple Levels of Detail of Spatiotemporal Events
Crimes, forest fires, accidents, infectious diseases, human interactions with mobile devices (e.g., tweets) are being logged as spatiotemporal events. For each event, its spatial location, time and related attributes are known with high levels of detail (LoDs). The LoD of analysis plays a crucial role in the user’s perception of phenomena. From one LoD to another, some patterns can be easily perceived or different patterns may be detected, thus requiring modeling phenomena at different LoDs as there is no exclusive LoD to study them.
Granular computing emerged as a paradigm of knowledge representation and processing, where granules are basic ingredients of information. These can be arranged in a hierarchical alike structure, allowing the same phenomenon to be perceived at different LoDs. This PhD Thesis introduces a formal Theory of Granularities (ToG) in order to have granules defined over any domain and reason over them. This approach is more general than the related literature because these appear as particular cases of the proposed ToG. Based on this theory we propose a granular computing approach to model spatiotemporal phenomena at multiple LoDs, and called it a granularities-based model.
This approach stands out from the related literature because it models a phenomenon
through statements rather than just using granules to model abstract real-world entities.
Furthermore, it formalizes the concept of LoD and follows an automated approach to
generalize a phenomenon from one LoD to a coarser one.
Present-day practices work on a single LoD driven by the users despite the fact that
the identification of the suitable LoDs is a key issue for them. This PhD Thesis presents a framework for SUmmarizIng spatioTemporal Events (SUITE) across multiple LoDs. The SUITE framework makes no assumptions about the phenomenon and the analytical task.
A Visual Analytics approach implementing the SUITE framework is presented, which
allow users to inspect a phenomenon across multiple LoDs, simultaneously, thus helping to understand in what LoDs the phenomenon perception is different or in what LoDs patterns emerge
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