Analysing real world data streams with spatio-temporal correlations: Entropy vs. Pearson correlation
Data Analysis
Data type
DOI:
10.1016/j.autcon.2017.12.036
Publication Date:
2018-01-11T12:24:28Z
AUTHORS (3)
ABSTRACT
Smart Cities use different Internet of Things (IoT) data sources and rely on big data analytics to obtain information or extract actionable knowledge crucial for urban planners for efficiently use and plan the construction infrastructures. Big data analytics algorithms often consider the correlation of different patterns and various data types. However, the use of different techniques to measure the correlation with smart cities data and the exploitation of correlations to infer new knowledge are still open questions. This paper proposes a methodology to analyse data streams, based on spatio-temporal correlations using different correlation algorithms and provides a discussion on co-occurrence vs. causation. The proposed method is evaluated using traffic data collected from the road sensors in the city of Aarhus in Denmark.
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