To improve the accuracy and efficiency of space-time analysis, spatio-temporal neighbourhoods (STNs) should be investigated and analysed in the classification, prediction and outlier detection of space-time data. So far most researches in space-time analysis use either spatial or temporal neighbourhoods, without considering both time and space at the same time. Moreover, the neighbourhoods are mostly defined intuitively without quantitative measurement. Furthermore, STNs of network data are less investigated compared with other types of data due to the complexity of network structure. This paper investigates the existing approaches of defining STNs and proposes a quantitative method to define STNs of network data in which the topology of th...
Spatiotemporal data mining (STDM) discovers useful patterns from the dynamic interplay between space...
Traffic prediction has drawn increasing attention in AI research field due to the increasing availab...
International audienceTemporal networks are graphs in which edges have temporal labels, specifying t...
Spatio-temporal neighbourhood (STN) selection is an important part of the model building procedure i...
Nowadays, the deployment of sensing technology permits to collect massive 1 spatio-temporal data in ...
Events recorded in urban areas are often confined by the micro-scale geography of street networks, y...
ABSTRACT A spatiotemporal challenge can be portrayed as an inquiry that has no short of what one sp...
Autoregressive and moving average models for temporally dynamic networks treat time as a series of d...
Abstract Spatio-temporal clustering is a process of grouping objects based on their spatial and temp...
Spatio-temporal clustering is a process of grouping objects based on their spatial and temporal simi...
The number of spatiotemporal data sets has increased rapidly in the last years, which demands robust...
© 2018 IEEE. Considering spatio-temporal correlation between traffic in different roads has benefit ...
The data gathered from smart cities can help citizens and city manager planners know where and when ...
The fast evolution of mobile internet and remote sensing technologies has facilitated the generation...
Spatio-temporal clustering is a subfield of data mining that is increasingly gaining more scientific...
Spatiotemporal data mining (STDM) discovers useful patterns from the dynamic interplay between space...
Traffic prediction has drawn increasing attention in AI research field due to the increasing availab...
International audienceTemporal networks are graphs in which edges have temporal labels, specifying t...
Spatio-temporal neighbourhood (STN) selection is an important part of the model building procedure i...
Nowadays, the deployment of sensing technology permits to collect massive 1 spatio-temporal data in ...
Events recorded in urban areas are often confined by the micro-scale geography of street networks, y...
ABSTRACT A spatiotemporal challenge can be portrayed as an inquiry that has no short of what one sp...
Autoregressive and moving average models for temporally dynamic networks treat time as a series of d...
Abstract Spatio-temporal clustering is a process of grouping objects based on their spatial and temp...
Spatio-temporal clustering is a process of grouping objects based on their spatial and temporal simi...
The number of spatiotemporal data sets has increased rapidly in the last years, which demands robust...
© 2018 IEEE. Considering spatio-temporal correlation between traffic in different roads has benefit ...
The data gathered from smart cities can help citizens and city manager planners know where and when ...
The fast evolution of mobile internet and remote sensing technologies has facilitated the generation...
Spatio-temporal clustering is a subfield of data mining that is increasingly gaining more scientific...
Spatiotemporal data mining (STDM) discovers useful patterns from the dynamic interplay between space...
Traffic prediction has drawn increasing attention in AI research field due to the increasing availab...
International audienceTemporal networks are graphs in which edges have temporal labels, specifying t...