NCARD: Improving Neighborhood Construction by Apollonius Region Algorithm based on Density
Shahin Pourbahrami, Leyli Mohammad Khanli, Sohrab Azimpour

TL;DR
This paper introduces NCARD, a neighborhood construction algorithm utilizing Apollonius regions and density to improve accuracy in high-dimensional data clustering and outlier detection.
Contribution
The paper proposes a novel neighborhood construction method combining Apollonius circles with density information, enhancing accuracy in high-dimensional data analysis.
Findings
Achieves 8-13% higher accuracy than existing algorithms
Effective in high-dimensional data clustering and outlier detection
Utilizes geometric and density-based approaches for improved neighborhood accuracy
Abstract
Due to the increased rate of information in the present era, local identification of similar and related data points by using neighborhood construction algorithms is highly significant for processing information in various sciences. Geometric methods are especially useful for their accuracy in locating highly similar neighborhood points using efficient geometric structures. Geometric methods should be examined for each individual point in neighborhood data set so that similar groups would be formed. Those algorithms are not highly accurate for high dimension of data. Due to the important challenges in data point analysis, we have used geometric method in which the Apollonius circle is used to achieve high local accuracy with high dimension data. In this paper, we propose a neighborhood construction algorithm, namely Neighborhood Construction by Apollonius Region Density (NCARD). In this…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Image Retrieval and Classification Techniques · Digital Image Processing Techniques
