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Interconnected growing self-organizing maps for auditory and semantic acquisition modeling

机译:相互关联的不断增长的自组织地图用于听觉和语义获取建模

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摘要

Based on the incremental nature of knowledge acquisition, in this study we propose a growing self-organizing neural network approach for modeling the acquisition of auditory and semantic categories. We introduce an Interconnected Growing Self-Organizing Maps (I-GSOM) algorithm, which takes associations between auditory information and semantic information into consideration, in this paper. Direct phonetic–semantic association is simulated in order to model the language acquisition in early phases, such as the babbling and imitation stages, in which no phonological representations exist. Based on the I-GSOM algorithm, we conducted experiments using paired acoustic and semantic training data. We use a cyclical reinforcing and reviewing training procedure to model the teaching and learning process between children and their communication partners. A reinforcing-by-link training procedure and a link-forgetting procedure are introduced to model the acquisition of associative relations between auditory and semantic information. Experimental results indicate that (1) I-GSOM has good ability to learn auditory and semantic categories presented within the training data; (2) clear auditory and semantic boundaries can be found in the network representation; (3) cyclical reinforcing and reviewing training leads to a detailed categorization as well as to a detailed clustering, while keeping the clusters that have already been learned and the network structure that has already been developed stable; and (4) reinforcing-by-link training leads to well-perceived auditory–semantic associations. Our I-GSOM model suggests that it is important to associate auditory information with semantic information during language acquisition. Despite its high level of abstraction, our I-GSOM approach can be interpreted as a biologically-inspired neurocomputational model.
机译:基于知识获取的增量性质,在这项研究中,我们提出了一种增长型的自组织神经网络方法,用于对听觉和语义类别的获取进行建模。在本文中,我们引入了一种互联增长的自组织映射(I-GSOM)算法,该算法考虑了听觉信息与语义信息之间的关联。模拟了直接的语音-语义关联,以便对早期阶段的语言习得建模,例如胡言乱语和模仿阶段,其中不存在语音表示。基于I-GSOM算法,我们使用配对的声学和语义训练数据进行了实验。我们使用周期性的强化和复习训练程序来模拟儿童及其沟通伙伴之间的教学过程。引入了“增强链接训练”过程和“遗忘链接”过程,以模拟听觉和语义信息之间的关联关系的获取。实验结果表明:(1)I-GSOM具有良好的学习能力,可以学习训练数据中呈现的听觉和语义类别。 (2)在网络表示中可以找到清晰的听觉和语义边界; (3)周期性的强化和复习训练导致详细的分类以及详细的聚类,同时保持已经学习的聚类和已经发展的网络结构稳定; (4)强化联系训练导致了良好的听觉-语义联想。我们的I-GSOM模型表明在语言获取过程中将听觉信息与语义信息相关联非常重要。尽管它的抽象水平很高,但我们的I-GSOM方法仍可以解释为生物学启发的神经计算模型。

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