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Architecture Optimization Model for the Probabilistic Self-Organizing Maps and Speech Compression

机译:概率自组织映射和语音压缩的体系结构优化模型

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摘要

The probabilistic self-organizing map (PRSOM) is an improved version of the Kohonen classical model (SOM) that appeared in the late 1990's. In the last years, the interest of probabilistic methods, especially in the fields of clustering and classification has increased, and the PRSOM has been successfully employed in many technological uses, such as: pattern recognition, speech recognition, data compression, medical diagnosis, etc. Mathematically, the PRSOM gives an estimation of the density probability function of a set of samples. And this estimation depends on the parameters given by the architecture of the model. Therefore, the main problem of this model, that we try to approach in this paper, is the architecture choice (the number of neurons and the initialization parameters). In summary, in the present paper, we describe a recent approach of PRSOM trying to find a solution to the problem below. For that, we propose an architecture optimization model that is a mixed integer nonlinear optimization model under linear constraints, resolved by the genetic algorithm. Then to prove the efficiency of the proposed model, we chose to apply it on a speech compression technique based on the determination of the optimal codebook, and finally, we give an implementation and an evaluation of the proposed method that we compare with the results of the classical model.
机译:概率自组织图(PRSOM)是1990年代末出现的Kohonen古典模型(SOM)的改进版本。近年来,概率方法尤其是在聚类和分类领域的兴趣不断增强,并且PRSOM已成功应用于许多技术用途,例如模式识别,语音识别,数据压缩,医学诊断等。在数学上,PRSOM给出了一组样本的密度概率函数的估计。并且此估计取决于模型的体系结构给出的参数。因此,我们在本文中尝试解决的该模型的主要问题是架构选择(神经元数量和初始化参数)。总而言之,在本文中,我们描述了一种PRSOM的最新方法,试图找到以下问题的解决方案。为此,我们提出了一种架构优化模型,该模型是在线性约束下的混合整数非线性优化模型,由遗传算法解决。然后,为了证明所提模型的有效性,我们选择了基于最优码本确定的语音压缩技术,最后,对所提方法进行了实现和评估,并与之进行了比较。经典模型。

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