Extracting causal rules from spatio-temporal data
conference contribution
posted on 2024-10-31, 20:13 authored by Antony Galton, Matt DuckhamMatt Duckham, Alan BothAlan BothThis paper is concerned with the problem of detecting causality in spatiotemporal data. In contrast to most previous work on causality, we adopt a logical rather than a probabilistic approach. By defining the logical form of the desired causal rules, the algorithm developed in this paper searches for instances of rules of that form that explain as fully as possible the observations found in a data set. Experiments with synthetic data, where the underlying causal rules are known, show that in many cases the algorithm is able to retrieve close approximations to the rules that generated the data. However, experiments with real data concerning the movement of fish in a large Australian river system reveal significant practical limitations, primarily as a consequence of the coarse granularity of such movement data. In response, instead of focusing on strict causation (where an environmental event initiates a movement event), further experiments focused on perpetuation (where environmental conditions are the drivers of ongoing processes of movement). After retasking to search for a different logical form of rules compatible with perpetuation, our algorithm was able to identify perpetuation rules that explain a significant proportion of the fish movements. For example, approximately one fifth of the detected long-range movements of fish over a period of six years were accounted for by 26 rules taking account of variations in water-level alone. © Springer International Publishing Switzerland 2015.
Funding
From environmental monitoring to management: extracting knowledge about environmental events from sensor data
Australian Research Council
Find out more...Artificial intelligence meets wireless sensor networks: filling the gaps between sensors using spatial reasoning
Australian Research Council
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- 2. ISBN - Is published in 9783319233734 (urn:isbn:9783319233734)
Start page
23End page
43Total pages
21Outlet
Proceedings of the12th International Conference on Spatial Information Theory (COSIT 2015) Lecture Notes in Computer Science Volume: 9368Editors
Sara Irina Fabrikant, Martin Raubal, Michela Bertolotto, Clare Davies, Scott Freundschuh, Scott BellName of conference
COSIT 2015: Lecture Notes in Computer Science Volume: 9368Publisher
SpringerPlace published
SwitzerlandStart date
2015-10-12End date
2015-10-16Language
EnglishCopyright
© Springer International Publishing Switzerland 2015Former Identifier
2006064382Esploro creation date
2020-06-22Fedora creation date
2016-08-25Usage metrics
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