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A Modification of the Lernmatrix for Real Valued Data Processing

机译:Lernmatrix的修改,用于实值数据处理

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摘要

An associative memory is a binary relationship between inputs and outputs, which is stored in an M matrix. In this paper, we propose a modification of the Steinbuch Lernmatrix model in order to process real-valued patterns, avoiding binarization processes and reducing computational burden. The proposed model is used in experiments with noisy environments, where the performance and efficiency of the memory is proven. A comparison between the proposed and the original model shows a good response and efficiency in the classification process of the new Lernmatrix.
机译:关联存储器是输入和输出之间的二进制关系,存储在M矩阵中。在本文中,我们提出对Steinbuch Lernmatrix模型进行修改,以处理实值模式,避免二值化过程并减轻计算负担。所提出的模型用于在嘈杂的环境中进行的实验,其中已证明了存储器的性能和效率。提议的模型与原始模型之间的比较显示了在新的Lernmatrix分类过程中的良好响应和效率。

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