Literature DB >> 33600442

Dynamic graph embedding for outlier detection on multiple meteorological time series.

Gen Li1, Jason J Jung1.   

Abstract

Existing dynamic graph embedding-based outlier detection methods mainly focus on the evolution of graphs and ignore the similarities among them. To overcome this limitation for the effective detection of abnormal climatic events from meteorological time series, we proposed a dynamic graph embedding model based on graph proximity, called DynGPE. Climatic events are represented as a graph where each vertex indicates meteorological data and each edge indicates a spurious relationship between two meteorological time series that are not causally related. The graph proximity is described as the distance between two graphs. DynGPE can cluster similar climatic events in the embedding space. Abnormal climatic events are distant from most of the other events and can be detected using outlier detection methods. We conducted experiments by applying three outlier detection methods (i.e., isolation forest, local outlier factor, and box plot) to real meteorological data. The results showed that DynGPE achieves better results than the baseline by 44.3% on average in terms of the F-measure. Isolation forest provides the best performance and stability. It achieved higher results than the local outlier factor and box plot methods, namely, by 15.4% and 78.9% on average, respectively.

Entities:  

Year:  2021        PMID: 33600442      PMCID: PMC7891775          DOI: 10.1371/journal.pone.0247119

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


  4 in total

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Authors:  Franco Scarselli; Marco Gori; Ah Chung Tsoi; Markus Hagenbuchner; Gabriele Monfardini
Journal:  IEEE Trans Neural Netw       Date:  2008-12-09

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Authors:  Weining Lu; Yu Cheng; Cao Xiao; Shiyu Chang; Shuai Huang; Bin Liang; Thomas Huang
Journal:  IEEE Trans Image Process       Date:  2017-06-07       Impact factor: 10.856

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Authors:  Regina Nuzzo
Journal:  Nature       Date:  2014-02-13       Impact factor: 49.962

4.  Change Detection in Graph Streams by Learning Graph Embeddings on Constant-Curvature Manifolds.

Authors:  Daniele Grattarola; Daniele Zambon; Lorenzo Livi; Cesare Alippi
Journal:  IEEE Trans Neural Netw Learn Syst       Date:  2019-07-30       Impact factor: 10.451

  4 in total

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