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Efficiently computing weighted proximity relationships in spatial databases

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conference contribution
posted on 2024-07-13, 06:32 authored by Xuemin Lin, Xiaomei Zhou, Chengfei LiuChengfei Liu, Xiaofang Zhou
Spatial data mining recently emerges from a number of real applications, such as real-estate marketing, urban planning, weather forecasting, medical image analysis, road traffic accident analysis, etc. It demands for efficient solutions for many new, expensive, and complicated problems. In this paper, we investigate the problem of evaluating the top k distinguished 'features' for a 'cluster' based on weighted proximity relationships between the cluster and features. We measure proximity in an average fashion to address possible nonuniform data distribution in a cluster. Combining a standard multi-step paradigm with new lower and upper proximity bounds, we presented an efficient algorithm to solve the problem. The algorithm is implemented in several different modes. Our experiment results not only give a comparison among them but also illustrate the efficiency of the algorithm.

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Available versions

PDF (Accepted manuscript)

ISBN

9783540422983

Journal title

2nd International Conference on Advances in Web-Age Information Management (WAIM), Xian, China, 09-11 July 2001 / X. Sean Wang, Ge Yu and Hongjun Lu (eds.)

Conference name

2nd International Conference on Advances in Web-Age Information Management WAIM, Xian, China, 09-11 July 2001 / X. Sean Wang, Ge Yu and Hongjun Lu eds.

Volume

2118

Issue

1

Pagination

11 pp

Publisher

Springer

Copyright statement

Copyright © 2001 Springer-Verlag Berlin Heidelberg. The accepted manuscript is reproduced in accordance with the copyright policy of the publisher. The definitive version is available at www.springer.com.

Language

eng

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