Tagged potential field extension to self-organizing feature maps

N. Baykal, A. Erkmen
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引用次数: 1

Abstract

Proposes an escape methodology to the local minima problem of self-organizing feature maps generated in the overlapping regions which are equidistant to the corresponding winners. Two new versions of the self-organizing feature map are derived equipped with such a methodology. The first approach introduces an excitation term, which increases the convergence speed and efficiency of the algorithm while increasing the probability of escaping from local minima. In the second approach we associate a learning set which specifies attractive and repulsive fields of output neurons. Results indicate that accuracy percentile of the new methods are higher than the original algorithm while they have the ability to escape from local minima.
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标记势场扩展到自组织特征映射
针对自组织特征映射的局部极小问题,提出了一种逃避方法。采用这种方法导出了两个新的自组织特征映射版本。第一种方法引入激励项,提高了算法的收敛速度和效率,同时增加了逃离局部极小值的概率。在第二种方法中,我们将一个指定输出神经元的吸引和排斥场的学习集关联起来。结果表明,新方法的准确率比原算法有所提高,同时具有摆脱局部极小值的能力。
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