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Learning mixture models using a genetic version of the EM algorithm

机译:使用EM算法的遗传版本学习混合模型

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摘要

The need to find new pattern recognition techniques that correctly classify complex structures has risen as an im- portant field of research. A well-known solution to this problem, which has proven to be very powerful, is the use of mixture models. Mixture models are typically fitted using the expectation-maximization (EM) algorithm. Unfortu- nately, optimal results are not always achieved because the EM algorithm, iterative in nature, is only guaranteed to produce a local maximum. In this paper, a solution to this problem is proposed and tested in a complex structure where the classical EM algorithm normally fails. This, we will do by means of a genetic algorithm (GA) which will allow the system to combine different solutions in a stochastic search so as to produce better results. The reported results show the usefulness of this approach, and suggest how it can be successfully implemented. Two new algorithms are proposed. The first one is useful when a priori information of the observed data is not available. The second solution is useful for those cases where some knowledge of the structure of the data-set is known. This second solution has proven to converge faster than the first one, although the final results reached are very similar to each other.
机译:寻找正确识别复杂结构的新模式识别技术的需求已成为重要的研究领域。已证明非常强大的解决此问题的著名方法是使用混合模型。通常使用期望最大化(EM)算法拟合混合物模型。不幸的是,由于总是保证EM算法本质上是迭代的,因此不能始终获得最佳结果。在本文中,提出了解决此问题的方法,并在经典EM算法通常会失败的复杂结构中进行了测试。为此,我们将通过遗传算法(GA)进行操作,该算法将允许系统在随机搜索中组合不同的解决方案,以产生更好的结果。报告的结果显示了这种方法的有用性,并建议了如何成功实施它。提出了两种新算法。当观察数据的先验信息不可用时,第一个有用。对于已知数据集结构的某些情况,第二种解决方案很有用。尽管达到的最终结果彼此非常相似,但已证明第二种解决方案的收敛速度比第一种解决方案快。

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