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A biologically inspired connectionist system for natural language processing

机译:用于自然语言处理的生物学启发的连接主义体系

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Nowadays artificial neural network models often lack many physiological properties of the nervous cell. Feedforward multilayer perceptron architectures, and even simple recurrent networks, still in vogue, are far from those encountered in cerebral cortex. Current learning algorithms are more oriented to computational performance than to biological credibility. The aim of this paper is to propose an artificial neural network system, called Bio-θR, including architecture and algorithm, to take care of a natural language processing problem, the thematic relationship, in a biologically inspired connectionist approach. Instead of feedforward or simple recurrent network, it is presented a bi-directional architecture. Instead of the well-known biologically implausible backpropagation algorithm, a neurophysiologically motivated one is employed to account for linguistic thematic role assignment in natural language sentences. In addition, several features concerning biological plausibility are also included.
机译:如今人工神经网络模型往往缺乏神经细胞的许多生理特性。 Feedforward Multilayer Perceptron架构,甚至简单的经常性网络仍然在脑皮质中仍然存在。目前的学习算法更为导向到计算性能而不是生物可信度。本文的目的是提出一种人工神经网络系统,称为Bio-θR,包括架构和算法,以照顾自然语言处理问题,主题关系,在生物学启发的连接主义方法中。它呈现了双向架构而不是前馈或简单的复发网络。代替众所周知的生物学难以识别的反向验证算法,是一种神经生理学动机的算法,用于考虑自然语言句子中的语言专题角色作业。此外,还包括有关生物合理性的若干特征。

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