Prediction of free word associations based on Hebbian learning

R. Rapp, M. Wettler
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引用次数: 14

Abstract

An associative lexical net whose weights are computed on the basis of the co-occurrences of words using Hebb's rule has been built. The co-occurrences of word pairs are determined by shifting a window over a large body of text. To estimate the associative response to a given stimulus word, the corresponding node is activated and its activity is propagated in the net. The proposed model assumes that words with high activities after propagation correspond to the associative responses of human subjects. These predictions have been tested and confirmed using the association norms collected by Russel and Jenkins.<>
基于Hebbian学习的自由词联想预测
利用Hebb规则,建立了一个基于词的共现计算权值的联想词汇网。单词对的共现是通过在大量文本上移动一个窗口来确定的。为了估计对给定刺激词的联想反应,相应的节点被激活,其活动在网络中传播。该模型假设传播后活动高的词与人类受试者的联想反应相对应。这些预测已经通过罗素和詹金斯收集的关联规范进行了测试和证实。
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