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Persian handwritten digits recognition: A divide and conquer approach based on mixture of MLP experts

机译:波斯手写数字识别:基于混合MLP专家的分而治之方法

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In pursuit of Persian handwritten digit recognition, many machine learning techniques have been utilized. Mixture of experts (MOE) is one of the most popular and interesting combining methods which has great potential to improve performance in machine learning. In MOE, during a competitive learning process, the gating networks supervise dividing input space between experts and experts obtain specialization on those subspaces. In this model, simple linear networks are used to form the building blocks of the MOE architecture. But in this study, due to complexity of Persian handwritten digit classification, the multi layer perceptrons, MLP, is used as gating and expert networks. We call this architecture the mixture of multilayer perceptrons experts (MOME). Comparative evaluation is accomplished with two real-world datasets: SRU Persian numerals and a very large dataset of Persian handwritten digit (HODA). In this paper, experiments are conducted to evaluate the performance of MOME with various appraisal criteria and also, classification capabilities of various neural network ensembles are compared with MOME. Our experimental results indicate significant improvement in recognition rate of our investigated method, MOME, in all practical tests.
机译:为了追求波斯手写数字识别,已经利用了许多机器学习技术。专家混合(MOE)是最流行和有趣的组合方法之一,具有极大的潜力来提高机器学习的性能。在MOE中,在竞争性学习过程中,门控网络监督专家之间的输入空间划分,而专家则获得这些子空间的专门化。在此模型中,简单的线性网络用于形成MOE体系结构的构建块。但是在这项研究中,由于波斯手写数字分类的复杂性,多层感知器MLP被用作门控和专家网络。我们称这种架构为多层感知器专家(MOME)的混合物。比较评估是通过两个真实世界的数据集完成的:SRU波斯数字和非常大的波斯手写数字(HODA)数据集。在本文中,进行了各种评估标准来评估MOME的性能的实验,并且将各种神经网络集成体的分类能力与MOME进行了比较。我们的实验结果表明,在所有实际测试中,我们研究的方法MOME的识别率都有了显着提高。

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