Javascript must be enabled to continue!
FP-tree Based Spatial Co-location Pattern Mining
View through CrossRef
A co-location pattern is a set of spatial features frequently located together in space. A frequent pattern is a set of items that frequently appears in a transaction database. Since its introduction, the paradigm of frequent pattern mining has undergone a shift from candidate generation-and-test based approaches to projection based approaches. Co-location patterns resemble frequent patterns in many aspects. However, the lack of transaction concept, which is crucial in frequent pattern mining, makes the similar shift of paradigm in co-location pattern mining very difficult. This thesis investigates a projection based co-location pattern mining paradigm. In particular, a FP-tree based co-location mining framework and an algorithm called FP-CM, for FP-tree based co-location miner, are proposed. It is proved that FP-CM is complete, correct, and only requires a small constant number of database scans. The experimental results show that FP-CM outperforms candidate generation-and-test based co-location miner by an order of magnitude.
Title: FP-tree Based Spatial Co-location Pattern Mining
Description:
A co-location pattern is a set of spatial features frequently located together in space.
A frequent pattern is a set of items that frequently appears in a transaction database.
Since its introduction, the paradigm of frequent pattern mining has undergone a shift from candidate generation-and-test based approaches to projection based approaches.
Co-location patterns resemble frequent patterns in many aspects.
However, the lack of transaction concept, which is crucial in frequent pattern mining, makes the similar shift of paradigm in co-location pattern mining very difficult.
This thesis investigates a projection based co-location pattern mining paradigm.
In particular, a FP-tree based co-location mining framework and an algorithm called FP-CM, for FP-tree based co-location miner, are proposed.
It is proved that FP-CM is complete, correct, and only requires a small constant number of database scans.
The experimental results show that FP-CM outperforms candidate generation-and-test based co-location miner by an order of magnitude.
Related Results
Optimisation of potash mining technology for cell and pillar mining method
Optimisation of potash mining technology for cell and pillar mining method
The diverse demand for inorganic fertilizers has predetermined the intensification of potash mining, which is a raw material for their production. In this regard, it has become nec...
Mining spatial dynamic co-location patterns
Mining spatial dynamic co-location patterns
Spatial co-location pattern mining is an important part of spatial data
mining, and its purpose is to discover the coexistence spatial feature sets
whose instances are freque...
Distributed frequent hierarchical pattern mining for robust and efficient large-scale association discovery
Distributed frequent hierarchical pattern mining for robust and efficient large-scale association discovery
Frequent pattern mining is a classic data mining technique, generally applicable to a wide range of application domains, and a mature area of research. The fundamental challenge ar...
Inter-specific variations in tree stem methane and nitrous oxide exchanges in a tropical rainforest
Inter-specific variations in tree stem methane and nitrous oxide exchanges in a tropical rainforest
<p>Tropical forests are the most productive terrestrial ecosystems, global centres of biodiversity and important participants in the global carbon and water cycles. T...
Spatial patterns of argan-tree influence on soil quality of intertree areas in open woodlands of South Morocco
Spatial patterns of argan-tree influence on soil quality of intertree areas in open woodlands of South Morocco
Abstract. The endemic argan tree (Argania spinosa) populations in South Morocco are highly degraded due to overbrowsing, illegal firewood extraction and the expansion of intensive ...
Depth-aware salient object segmentation
Depth-aware salient object segmentation
Object segmentation is an important task which is widely employed in many computer vision applications such as object detection, tracking, recognition, and ret...
The Sensitivity Feature Analysis for Tree Species Based on Image Statistical Properties
The Sensitivity Feature Analysis for Tree Species Based on Image Statistical Properties
While the statistical properties of images are vital in forestry engineering, the usefulness of these properties in various forestry tasks may vary, and certain image properties mi...
Implementing Spatial Planning Based on Environmental Sustainability in the Mining Area
Implementing Spatial Planning Based on Environmental Sustainability in the Mining Area
The problem of finite mineral and coal natural resources has been reopened by the growing demand for development and mining resources, which impacts the global arena. Environmental...

