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Investigation and Development of Methods to Solve Multi-Class Classification Problems

机译:解决多级分类问题方法的调查与发展

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Most of the classification problems frequently encounter a mulri class predicament and offers a good scope for research. This paper has a comprehensive approach to the available multi-class technique using Artificial Neural Networks and then introduces a new algorithm to overcome the demerits of the former. In addition, a new algorithm combining ANN and chameleon clustering is suggested and validated. An SVM model for the above is also proposed and sufficiently tested with a typical example i.e. Image Segmentation. Also, the permutation effects prevailing in Half -against-Half multi class algorithm of SVM is efficiently tackled by developing an algorithm using "circular shift strategy" and employing the same. The use of clustering methods with SVM to improve its efficiency is also discussed. All the above mentioned models are extensively analyzed and the results are presented. It is found that the proposed method is an effective alternative for existing methods and offers consistent performance.
机译:大多数分类问题经常遇到Mulri类困境,并提供了良好的研究范围。本文对使用人工神经网络的可用多级技术具有全面的方法,然后介绍了一种新的算法来克服前者的缺点。此外,建议并验证了一种结合ANN和Chameleon集群的新算法。还提出了上述的SVM模型,并用典型的例子I. ..图像分割。此外,通过使用“圆形移位策略”开发算法并采用相同的算法,有效地解决了SVM的半成品半类多等级算法的置换效果。还讨论了使用具有SVM来提高其效率的聚类方法。所有上述模型都被广泛分析,并提出了结果。结果发现,该方法是现有方法的有效替代方案,并提供一致的性能。

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