基于简单层次聚类算法的混合神经-马尔可夫在线手写识别系统状态共享

Haifeng Li, T. Artières, P. Gallinari
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引用次数: 1

摘要

HMM在许多领域得到了广泛的应用,并取得了巨大的成功。为了获得更好的性能,一个简单的方法是使用更多的状态或更多的自由参数来实现更好的信号建模。为此,提出了状态共享和状态裁剪方法,以减少参数冗余,限制系统资源的爆发式消耗。研究了一种简单的神经-马尔可夫混合在线手写识别系统的状态共享方法。首先,提出了一种基于似然的距离来度量两个HMM状态模型之间的相似性。然后,提出了一种针对最小量化误差的分层聚类算法,以选择最具代表性的模型。在这里,模型在系统性能损失最小的约束下得到最大程度的共享。结果,我们保持了大约98%的系统性能,同时减少了大约60%的参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
State sharing in a hybrid neuro-Markovian on-line handwriting recognition system through a simple hierarchical clustering algorithm
HMM has been largely applied in many fields with great success. To achieve a better performance, an easy way is using more states or more free parameters for a better signal modelling. Thus, state sharing and state clipping methods have been proposed to reduce parameter redundancy and to limit the explosive consummation of system resources. We focus on a simple state sharing method for a hybrid neuro-Markovian on-line handwriting recognition system. At first, a likelihood-based distance is proposed for measuring the similarity between two HMM state models. Afterwards, a minimum quantification error aimed hierarchical clustering algorithm is also proposed to select the most representative models. Here, models are shared to the most under the constraint of the minimum system performance loss. As the result, we maintain about 98% of the system performance while about 60% of the parameters are reduced.
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