Co-location pattern discovery is to find classes of objects whose associated spatial locations are frequently in proximity. For example, map search queries, which contain keywords in text as well as target locations on the map, can be mined for co-located query patterns, i.e., sets of keyword queries that often search for target locations near one another. Such co-located query patterns can be used in location sensitive query suggestion, Point of Interest (POI) recommendation, and local advertising. This thesis investigates ways to improve the efficiency of co-location mining for large data sets, e.g., million-entry map search query logs. In particular, we improve the efficiency of the generate-and-test method, which is commonly used in co-...
Most algorithms for mining spatial co-locations adopt an Apriori-like approach to generate size-k pr...
Abstract—Co-location pattern mining aims at finding sub-sets of spatial features frequently located ...
Most algorithms for mining spatial co-locations adopt an Apriori-like approach to generate size-k pr...
A geographic search request contains a query consisting of one or more keywords, and a search-locati...
Co-location pattern discovery is to find classes of spatial objects that are frequently located toge...
Spatial co-location pattern mining discovers the subsets of features whose events are frequently loc...
With the advent of data gathering and analysis, many different domains such as public health, busine...
Spatial co-location pattern mining discovers the subsets of features whose events are frequently loc...
A co-location pattern is a set of spatial features frequently located together in space. A frequent ...
© Springer International Publishing Switzerland 2015. Co-location pattern mining is an important tas...
Co-location patterns in spatial dataset are the interesting collection of dissimilar objects which a...
AbstractSpatial co-location pattern mining is a sub field of data mining which is used to discover i...
With the rapid growth and extensive applications of the spatial dataset, itpsilas getting more impor...
Spatial co-location pattern mining discovers the subsets of spatial features frequently observed tog...
Due to the widespread application of geographic information systems (GIS) and GPS technology and the...
Most algorithms for mining spatial co-locations adopt an Apriori-like approach to generate size-k pr...
Abstract—Co-location pattern mining aims at finding sub-sets of spatial features frequently located ...
Most algorithms for mining spatial co-locations adopt an Apriori-like approach to generate size-k pr...
A geographic search request contains a query consisting of one or more keywords, and a search-locati...
Co-location pattern discovery is to find classes of spatial objects that are frequently located toge...
Spatial co-location pattern mining discovers the subsets of features whose events are frequently loc...
With the advent of data gathering and analysis, many different domains such as public health, busine...
Spatial co-location pattern mining discovers the subsets of features whose events are frequently loc...
A co-location pattern is a set of spatial features frequently located together in space. A frequent ...
© Springer International Publishing Switzerland 2015. Co-location pattern mining is an important tas...
Co-location patterns in spatial dataset are the interesting collection of dissimilar objects which a...
AbstractSpatial co-location pattern mining is a sub field of data mining which is used to discover i...
With the rapid growth and extensive applications of the spatial dataset, itpsilas getting more impor...
Spatial co-location pattern mining discovers the subsets of spatial features frequently observed tog...
Due to the widespread application of geographic information systems (GIS) and GPS technology and the...
Most algorithms for mining spatial co-locations adopt an Apriori-like approach to generate size-k pr...
Abstract—Co-location pattern mining aims at finding sub-sets of spatial features frequently located ...
Most algorithms for mining spatial co-locations adopt an Apriori-like approach to generate size-k pr...