Abstract
Problem statement: A database that is optimized to store and query data that is related to objects in space, including points, lines and polygons is called spatial database. Identifying nearest neighbor object search is a vital part of spatial database. Many nearest neighbor search techniques such as Authenticated Multi-step NN (AMNN), Superseding Nearest Neighbor (SNN) search, Bayesian Nearest Neighbor (BNN) and so on are available. But they had some difficulties while performing NN in uncertain spatial database. AMNN does not process the queries from distributed server and it accesses the queries only from single server. In SNN, the high dimensional data structure could not be used in NN search and it accesses only low dimensional data for NN search. Approach: The previous works described the process of NN using SNN with marginal object weight ranking. The downside over the previous work is that the performance is poor when compared to another work which performed NN using BNN. To improve the NN search in spatial databases using BNN, we are going to present a new technique as BNN search using marginal object weight ranking. Based on events occurring in the nearest object, BNN starts its search using MOW. The MOW is done by computing the weight of each NN objects and rank each object based on its frequency and distance of NN object for an efficient NN search in spatial databases. Results: Marginal Object Weight (MOW) is introduced to all nearest neighbor object identified using BNN for any relevant query point. It processes the queries from distributed server using MOW. Conclusion: The proposed BNN using MOW framework is experimented with real data sets to show the performance improvement with the previous MOW using SNN in terms of execution time, memory consumption and query result accuracy.
Highlights
It is vital to choose the preeminent few Nearest Neighbor (NN)-An emergent trend in spatial databases is, most of the data are uncertain
The proposed Bayesian Nearest Neighbor (BNN) search using Marginal Object Weight (MOW) ranking in Literature review: In a spatial database, uncertain similarity query processing is an important aspect in data mining
The performance of the proposed BNN search using MOW ranking scheme for identifying the best NN object based on is measured in terms of Execution time, Memory consumption and Query result accuracy
Summary
An emergent trend in spatial databases is, most of the data are uncertain. In spatial databases, an object is computed by probability density function (pdf). The proposed BNN search using MOW ranking in Literature review: In a spatial database, uncertain similarity query processing is an important aspect in data mining. The first process is to identify the objects in the spatial database to perform NN and similarity search based on its respective query points. The performance of the proposed BNN search using MOW ranking scheme for identifying the best NN object based on is measured in terms of Execution time, Memory consumption and Query result accuracy. In the proposed BNN search using MOW ranking scheme, the process of identifying the NN object from spatial database consumed less time compared to an existing SNN using MOW.
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