Subgraph Mining for Anomalous Pattern Discovery in Event Logs
نویسندگان
چکیده
Pattern discovery has been the center of attention of data mining research for a long time, with patterns languages varying from simple to complex, according to the needs of the applications and the format of data. In this talk, I will take a view on pattern mining that combines elements from neighboring areas. More specifically, I will describe our previous research work in the intersection of the three areas: probabilistic modeling, pattern mining and predictive modeling. Clustering in the context of pattern mining will be explored, as well as linguistic summarization of patterns. Also, multiresolution pattern mining as well as semantic pattern discovery and pattern visualization will be visited. Time allowing, I will speak about patterns of missing data and it simplications on predictive modeling.
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