Open Access Open Access  Restricted Access Subscription Access
Open Access Open Access Open Access  Restricted Access Restricted Access Subscription Access

A Novel Approach for Effectively Mining of Spatially Co-Located Moving Objects from the Spatial Databases


Affiliations
1 Sathyabama University, Chennai, India
2 CSE Department, Anna University of Technology, Madurai, India
     

   Subscribe/Renew Journal


In this paper, we have presented a novel approaches for effectively mining of spatially co-located moving objects from the spatial databases. We propose a novel technique for co-location pattern mining which materializes spatial neighbor relationships with no loss of co-location instances and reduces the computational cost with the aid of the Prim's Algorithm. The spatially co-location mining technique is efficient since it generates and filters the candidate instances. Subsequently, the neighborhood relationships are carried out by the designed neighborhood and the node membership functions which satisfy the minimum conditional threshold. This paper has been inspired by the Join-less approach for mining spatial co-location patterns. We use a spatial database that contains the moving objects and its corresponding spatial location for spatial co-location pattern mining to mine spatially co-located moving objects.

Keywords

Spatial Data Mining, Co-Location, Prim's Algorithm, Moving Objects.
User
Subscription Login to verify subscription
Notifications
Font Size

Abstract Views: 204

PDF Views: 3




  • A Novel Approach for Effectively Mining of Spatially Co-Located Moving Objects from the Spatial Databases

Abstract Views: 204  |  PDF Views: 3

Authors

G. Manikandan
Sathyabama University, Chennai, India
S. Srinivasan
CSE Department, Anna University of Technology, Madurai, India

Abstract


In this paper, we have presented a novel approaches for effectively mining of spatially co-located moving objects from the spatial databases. We propose a novel technique for co-location pattern mining which materializes spatial neighbor relationships with no loss of co-location instances and reduces the computational cost with the aid of the Prim's Algorithm. The spatially co-location mining technique is efficient since it generates and filters the candidate instances. Subsequently, the neighborhood relationships are carried out by the designed neighborhood and the node membership functions which satisfy the minimum conditional threshold. This paper has been inspired by the Join-less approach for mining spatial co-location patterns. We use a spatial database that contains the moving objects and its corresponding spatial location for spatial co-location pattern mining to mine spatially co-located moving objects.

Keywords


Spatial Data Mining, Co-Location, Prim's Algorithm, Moving Objects.