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Grammatical Structure Detection with Intrinsic Plasticity based Echo State Networks for Cognitive Robot

机译:基于内在可塑性的回声状态网络的语法结构检测

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A novel model called Intrinsic plasticity Echo State Network with new weight initialization (IP-ESN) is proposed in this study. The new input weight, which is selected by proposed method called new weight initialization, replaces the input weight of Echo State Network (ESN). Intrinsic plasticity rules is applied to find the gain and bias before training model. These two elements can be used to extend the neurons connection of ESN, which directly impacts on the model performance. According to the results of experiments, comparing with ESN, new weight initialization and intrinsic plasticity rules play a vital roles in decreasing the error rate. Moreover, IP-ESN has the super understanding ability of meaning words and sentence in the different construction numbers of corpus than other compared models. This algorithm also can be applied in human robot applications, because the proposed algorithm can understand the meaning of sentence and predict the grammatical structure in the real time.
机译:本研究提出了一种具有新重量初始化(IP-ESN)的内部塑性回声状态网络的新型模型。通过提出的方法选择的新输入重量,称为新权重初始化,取代了回声状态网络(ESN)的输入权重。在培训模型之前,应用了内在塑性规则来找到增益和偏见。这两个元素可用于扩展ESN的神经元连接,这直接影响了模型性能。根据实验结果,与ESN相比,新的重量初始化和内在塑性规则在降低误差率时起着重要作用。此外,IP-ESN具有比其他比较模型的不同施工数量的超级理解词语和句子的表现词和句子。该算法也可以应用于人体机器人应用中,因为所提出的算法可以了解句子的含义并在实时预测语法结构。

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