Local based approach is a major category of methods for spatial outlier detection (SOD). Currently, there is a lack of systematic analysis on the statistical properties of this framework. For example, most methods assume identical and independent normal distributions (i.i.d. normal) for the calculated local differences, but no justifications for this critical assumption have been presented. The methods ’ detection performance on geostatistic data with linear or nonlinear trend is also not well studied. In addition, there is a lack of theoretical connections and empirical comparisons between local and global based SOD approaches. This paper discusses all these fundamental issues under the proposed generalized local statistical (GLS) framewor...
Identification of outliers can lead to the discovery of unexpected, interesting, and implicit knowle...
Generalized linear models (GLMs) are very popular to solve response modeling problems. But GLM users...
© 2017 A major task in spatio-temporal outlier detection is to identify objects that exhibit abnorma...
Local based approach is a major category of methods for spatial outlier detection (SOD). Currently, ...
Spatial data are characterized by statistical units, with known geographical positions, on which non...
Spatial data are characterized by statistical units, with known geographical positions, on which non...
Abstract: Outlier detection concerns discovering some unusual data whose behavior is exceptional com...
Outlier detection techniques in spatial data should allow to identify two types of outliers: global...
Multivariate spatial data are geographical locations on which non spatial variables are measured. S...
Outlier detection is often a key task in a statistical analysis and helps guard against poor decisio...
Several technologies provide datasets consisting of a large number of spatial points, commonly refer...
Outlier detection, as a data mining task, is to identify a small set of data that is considerably di...
Outlier detection focuses on identifying abnormal patterns from large data sets. In this thesis, we ...
"In this paper we focus on the analysis of functional data spatially correlated.. Especially we intr...
A spatial outlier is a spatially referenced object whose non spatial attribute value is significantl...
Identification of outliers can lead to the discovery of unexpected, interesting, and implicit knowle...
Generalized linear models (GLMs) are very popular to solve response modeling problems. But GLM users...
© 2017 A major task in spatio-temporal outlier detection is to identify objects that exhibit abnorma...
Local based approach is a major category of methods for spatial outlier detection (SOD). Currently, ...
Spatial data are characterized by statistical units, with known geographical positions, on which non...
Spatial data are characterized by statistical units, with known geographical positions, on which non...
Abstract: Outlier detection concerns discovering some unusual data whose behavior is exceptional com...
Outlier detection techniques in spatial data should allow to identify two types of outliers: global...
Multivariate spatial data are geographical locations on which non spatial variables are measured. S...
Outlier detection is often a key task in a statistical analysis and helps guard against poor decisio...
Several technologies provide datasets consisting of a large number of spatial points, commonly refer...
Outlier detection, as a data mining task, is to identify a small set of data that is considerably di...
Outlier detection focuses on identifying abnormal patterns from large data sets. In this thesis, we ...
"In this paper we focus on the analysis of functional data spatially correlated.. Especially we intr...
A spatial outlier is a spatially referenced object whose non spatial attribute value is significantl...
Identification of outliers can lead to the discovery of unexpected, interesting, and implicit knowle...
Generalized linear models (GLMs) are very popular to solve response modeling problems. But GLM users...
© 2017 A major task in spatio-temporal outlier detection is to identify objects that exhibit abnorma...