Title
Unsupervised Event Detection with Infinite Poisson Mixture Model
Abstract
Large amount of time series data generated by sensors and Web users is great source of contextual information. Detecting outliers with unusually high values in time series data is crucial for inferring about any events in the real world. In this work, we describe an infinite Poisson mixture model to detect events by identifying outliers in time series of count data. This unsupervised technique estimates the probability densities of count data which have an unknown Poisson mixture while it simultaneously detects outliers in the data. The advantage of our model is that outliers are mapped to mixture components discovered by infinite mixture model and thus inference can be drawn on the different 'types' of outliers and their proportions in the data. This lets us identify and categorize events based on magnitude of outlier data. We have analysed the performance of our model against a well known event detection technique based on Markov Modulated Poisson Process (MMPP) using synthetic and real world data. Results show that our approach to detecting events is more appropriate in analysing periodic count data as compared to the MMPP baseline. The experiments demonstrate that the presented model provides robust, detailed, and interpretable results for the analysis of outliers to detect events.
Year
DOI
Venue
2015
10.1109/BigDataCongress.2015.88
BigData Congress
Keywords
Field
DocType
outlier detection, unsupervised learning, infinite mixture models, event detection, time series
Data mining,Data modeling,Time series,Anomaly detection,Pattern recognition,Computer science,Markov chain,Outlier,Artificial intelligence,Count data,Poisson distribution,Mixture model
Conference
ISSN
Citations 
PageRank 
2379-7703
0
0.34
References 
Authors
9
3
Name
Order
Citations
PageRank
Vinod Hegde181.20
Milovan Krnjajić230.88
Alexei Pozdnoukhov321618.87