首页> 外文会议>International Conference on Image Analysis and Processing(ICIAP 2005); 20050906-08; Cagliari(IT) >Hierarchical Associative Memories: The Neural Network for Prediction in Spatial Maps
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Hierarchical Associative Memories: The Neural Network for Prediction in Spatial Maps

机译:层次联想记忆:用于空间地图预测的神经网络

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Techniques for prediction in spatial maps can be based on associative neural network models. Unfortunately, the performance of standard associative memories depends on the number of training patterns stored in the memory; moreover it is very sensitive to mutual correlations of the stored patterns. In order to overcome limitations imposed by processing of a large number of mutually correlated spatial patterns, we have designed the Hierarchical Associative Memory model which consists of arbitrary number of associative memories hierarchically grouped into several layers. In order to further improve its recall abilities, we have proposed new modification of our model. In this paper, we also present experimental results focused on recall ability of designed model and their analysis by means of mathematical statistics.
机译:空间地图中的预测技术可以基于关联神经网络模型。不幸的是,标准联想存储器的性能取决于存储在存储器中的训练模式的数量。此外,它对存储模式的相互关联非常敏感。为了克服因处理大量相互关联的空间模式而带来的限制,我们设计了分层关联存储器模型,该模型由任意数量的关联存储器组成,该关联存储器按层次结构分为几层。为了进一步提高其召回能力,我们对模型提出了新的修改。在本文中,我们还介绍了侧重于设计模型的召回能力及其通过数理统计进行分析的实验结果。

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