INCREMENTAL PRINCIPAL COMPONENT ANALYSIS BASED OUTLIER DETECTION METHODS FOR SPATIOTEMPORAL DATA STREAMS

INCREMENTAL PRINCIPAL COMPONENT ANALYSIS BASED OUTLIER DETECTION METHODS FOR SPATIOTEMPORAL DATA STREAMS

INCREMENTAL PRINCIPAL COMPONENT ANALYSIS BASED OUTLIER DETECTION METHODS FOR SPATIOTEMPORAL DATA STREAMS

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In this paper, we address outliers in spatiotemporal data streams obtained from sensors placed across geographically distributed locations.Outliers may appear in elbeco adu ripstop pants such sensor data due to various reasons such as instrumental error and environmental change.Real-time detection of these outliers is essential to prevent propagation of errors in subsequent analyses and results.Incremental Principal Component Analysis (IPCA) is one possible approach for detecting outliers in such type of spatiotemporal data streams.IPCA has been widely used in many real-time applications such as credit card fraud detection, pattern recognition, and image analysis.

However, the suitability of applying IPCA for outlier crystal beaded candle holder detection in spatiotemporal data streams is unknown and needs to be investigated.To fill this research gap, this paper contributes by presenting two new IPCA-based outlier detection methods and performing a comparative analysis with the existing IPCA-based outlier detection methods to assess their suitability for spatiotemporal sensor data streams.

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