This paper provides an analysis of two machine learning algorithms, density-based spatial clustering of applications with noise (DBSCAN) and the local outlier factor (LOF), applied in the detection of outliers in the context of a continuous framework for the detection of points of interest (PoI). This framework has as input mobile trajectories of users that are continuously fed to the framework in close to real time. Such frameworks are today still in their infancy and highly required in large-scale sensing deployments, e.g., Smart City planning deployments, where individual anonymous trajectories of mobile users can be useful to better develop urban planning. The paper’s contributions are twofold. Firstly, the paper provides the functional...
Outlier detection is a significant research area in data mining. An Outlier is a point or a set of p...
Local outlier detection is a hot area and great challenge in data mining, especially for large-scale...
Outlier detection is concerned with discovering exceptional behaviors of objects. Its theoretical pr...
© 2017 A major task in spatio-temporal outlier detection is to identify objects that exhibit abnorma...
Several technologies provide datasets consisting of a large number of spatial points, commonly refer...
Clustering machine learning algorithms have existed for a long time and there are a multitude of var...
This article introduces two new problems related to trajectory outlier detection: (1) group trajecto...
Outliers, also called anomalies are data patterns that do not conform to the behavior that is expect...
Nowadays, our mobile devices have become smart computing platforms, incorporating a wide number of e...
Generalized linear models (GLMs) are very popular to solve response modeling problems. But GLM users...
Big trajectory data feature analysis for mobile networks is a popular big data analysis task. Due to...
The accessibility of large-scale Spatio-Temporal GPS data provides us information for analyzing the ...
Mobile communication networks produce massive amounts of data which may be useful in identifying the...
International audienceHuman mobility analysis is a multidisciplinary research subject that has attra...
Outlier Detection is a technique to detect anomalous events or outliers during analysis of the data ...
Outlier detection is a significant research area in data mining. An Outlier is a point or a set of p...
Local outlier detection is a hot area and great challenge in data mining, especially for large-scale...
Outlier detection is concerned with discovering exceptional behaviors of objects. Its theoretical pr...
© 2017 A major task in spatio-temporal outlier detection is to identify objects that exhibit abnorma...
Several technologies provide datasets consisting of a large number of spatial points, commonly refer...
Clustering machine learning algorithms have existed for a long time and there are a multitude of var...
This article introduces two new problems related to trajectory outlier detection: (1) group trajecto...
Outliers, also called anomalies are data patterns that do not conform to the behavior that is expect...
Nowadays, our mobile devices have become smart computing platforms, incorporating a wide number of e...
Generalized linear models (GLMs) are very popular to solve response modeling problems. But GLM users...
Big trajectory data feature analysis for mobile networks is a popular big data analysis task. Due to...
The accessibility of large-scale Spatio-Temporal GPS data provides us information for analyzing the ...
Mobile communication networks produce massive amounts of data which may be useful in identifying the...
International audienceHuman mobility analysis is a multidisciplinary research subject that has attra...
Outlier Detection is a technique to detect anomalous events or outliers during analysis of the data ...
Outlier detection is a significant research area in data mining. An Outlier is a point or a set of p...
Local outlier detection is a hot area and great challenge in data mining, especially for large-scale...
Outlier detection is concerned with discovering exceptional behaviors of objects. Its theoretical pr...