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Network analyses: the case of first and second person pronouns

机译:网络分析:第一人称代词和第二人称代词的情况

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Feedforward neural network models may be viewed as approximating nonlinear functions connecting inputs to outputs. We analyzed the mechanism of function approximations underlying learning of first and second person pronouns by the cascade correlation (CC) network. The CC network dynamically grows nets to approximate increasingly more complicated functions. It starts as a net without hidden units, but as soon as it "perceives" that it can no longer improve its performance within the limit of current net topology, it automatically recruits a new hidden unit. This process is repeated until a satisfactory degree of function approximation is achieved. Learning of the shifting reference of pronouns can be regarded as a special kind of nonlinear function learning, where the function to be learned stipulates me if the speaker and the referent agree, and you if the addressee and the referent agree. We investigated how this function is approximated by the CC network using graphic techniques.
机译:前馈神经网络模型可以看作是将输入连接到输出的近似非线性函数。我们通过级联相关(CC)网络分析了第一人称和第二人称代词学习背后的函数逼近机制。 CC网络动态增长网络以逼近越来越复杂的功能。它以没有隐藏单元的网络开始,但是一旦“意识到”它无法在当前网络拓扑的限制内提高性能,它就会自动招募新的隐藏单元。重复该过程,直到达到满意的函数逼近度为止。代词的转移指称的学习可以看作是一种特殊的非线性函数学习,其中说话者和被指是否同意,而被叫人和被指同意,则要学习的函数规定了我。我们研究了CC网络如何使用图形技术来逼近此功能。

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