2006 First International Multi-Symposiums on Computer and Computational Sciences Self-Organizing Data Clustering Based on Quantum Entanglement Model Hangzhou, Zhejiang, China June 20-June 24 ISBN: 0-7695-2581-4
Most of currently used approaches to data clustering are not qualified to quickly cluster a high-dimensional largescale database This paper is devoted to a novel generalized quantum particle model (GQPM) to data self-organizing clustering. The GQPM approach transforms the data clustering process into a stochastic process of particle motion, collision and quantum entanglement on a particle array. In comparison with the GPM clustering method we have proposed before, the GQPM has much faster speed and higher quality for clustering. GQPM is also characterized by the self-organizing clustering and has advantages in terms of the insensitivity to noise, the quality robustness to clustered data, the learning ability, the suitability for highdimensional multi-shape large-scale data sets. The simulations and comparisons have shown the effectiveness and good performance of the proposed GQPM approach to data clustering.
Citation:
Dianxun Shuai, Yuzhe Liu, Qing Shuai, Liangjun Huang, Yuming Dong, "Self-Organizing Data Clustering Based on Quantum Entanglement Model," imsccs, vol. 2, pp.716-723, 2006 First International Multi-Symposiums on Computer and Computational Sciences, 2006 Usage of this product signifies your acceptance of the Terms of Use. | |||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||