MLLGJun 20, 2021

Outlier Detection and Spatial Analysis Algorithms

arXiv:2106.10669v13 citations
Originality Synthesis-oriented
AI Analysis

It provides a review of techniques for detecting outliers in spatial data, which is incremental as it synthesizes existing methods rather than introducing new ones.

This study surveys outlier detection methods for spatial analysis, addressing the problem of identifying data points that deviate significantly in datasets with geographic properties, such as weather data, without necessarily eliminating them.

Outlier detection is a significant area in data mining. It can be either used to pre-process the data prior to an analysis or post the processing phase (before visualization) depending on the effectiveness of the outlier and its importance. Outlier detection extends to several fields such as detection of credit card fraud, network intrusions, machine failure prediction, potential terrorist attacks, and so on. Outliers are those data points with characteristics considerably different. They deviate from the data set causing inconsistencies, noise and anomalies during analysis and result in modification of the original points However, a common misconception is that outliers have to be immediately eliminated or replaced from the data set. Such points could be considered useful if analyzed separately as they could be obtained from a separate mechanism entirely making it important to the research question. This study surveys the different methods of outlier detection for spatial analysis. Spatial data or geospatial data are those that exhibit geographic properties or attributes such as position or areas. An example would be weather data such as precipitation, temperature, wind velocity, and so on collected for a defined region.

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