基于最近邻算法的粒子群中文文本分类

Shi Cheng, Yuhui Shi, Quande Qin, T. Ting
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引用次数: 3

摘要

本文将中文文本分类的最近邻方法表述为一个优化问题。利用粒子群算法优化最近邻分类器来解决中文文本分类问题。首先对参数k进行优化以获得最小误差,然后将分类问题表述为一个离散、约束、单目标的优化问题。解向量的每个维在解空间中是相互依赖的。对每个类的参数k和标记样例的数量进行共同优化,以达到最小的分类误差。在实验中,利用粒子群优化可以提高最近邻算法的性能,使算法获得最小的分类错误率。
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Particle swarm optimization based nearest neighbor algorithm on Chinese text categorization
In this paper, the nearest neighbor method on Chinese text categorization is formulated as an optimization problem. The particle swarm optimization is utilized to optimize a nearest neighbor classifier to solve the Chinese text categorization problem. The parameter k was first optimized to obtain the minimum error, then the categorization problem is formulated as a discrete, constrained, and single objective optimization problem. Each dimension of solution vector is dependent on each other in the solution space. The parameter k and the number of labeled examples for each class are optimized together to reach the minimum categorization error. In the experiment, with the utilization of particle swarm optimization, the performance of a nearest neighbor algorithm can be improved, and the algorithm can obtain the minimum categorization error rate.
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