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Spatial Data Mining Through Cluster Analysis
-
A. Santhi Latha; J. Swapna priya; Sk. Abdul Kareem; M. Pavani Devi
- Spatial data mining is the discovery of
interesting relationships and characteristics that may exist
implicitly in spatial databases. The main objective of the
spatial data mining is to discover hidden complex knowledge
from spatial and not spatial data despite of their huge amount
and the complexity of spatial relationships computing.
However, the spatial data mining methods are still an
extension of those used in conventional data mining. Spatial
data is a highly demanding field because huge amounts of
spatial data have been collected in various applications,
ranging from remote sensing, to geographical information
systems (GIS), computer cartography, environmental
assessment and planning, etc. The collected data far exceeded
human's ability to analyze. Recent studies on data mining have
extended the scope of data mining from relational and
transactional databases to spatial databases. In this paper we
discuss how cluster analysis can be helpful for mining spatial
data. Cluster analysis divides data into meaningful or useful
groups (clusters). If meaningful clusters are the goal, then the
resulting clusters should capture the “natural” structure of
the data. For example, cluster analysis has been used to group
related documents for browsing, to find genes and proteins
that have similar functionality, and to provide a grouping of
spatial locations prone to earthquakes. However, in other
cases, cluster analysis is only a useful starting point for other
purposes, e.g., data compression or efficiently finding the
nearest neighbors of points.
- Select Volume / Issues:
- Year:
- 2012
- Type of Publication:
- Article
- Keywords:
- Cluster Analysis; Data Mining; Spatial data; Spatial data mining
- Journal:
- IJECCE
- Volume:
- 3
- Number:
- 2
- Pages:
- 372-375
- Month:
- March
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