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A Corpus-Based Computational Model ofMetaphor Understanding Incorporating Dynamic Interaction

机译:基于语料库的隐喻理解模型结合动态交互的计算模型

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The purpose of this study is to construct a computational model of metaphor understanding based on statistical corpora analysis. The constructed model consists of two processes: a categorization process and a dynamic interaction process. The model expresses features based not only on adjectives but also on verbs using adjective-noun and three types of verb-noun modification data. The dynamic interaction is realized based on a recurrent neural network employing differential equations. Generally, in recurrent neural networks, differential equations are converged using a sigmoid function. However, it is difficult to compare the estimated meaning of the metaphor to the estimated meaning of the target which is represented with conditional probabilities computed through statistical language analysis. In the present model, the differential equations converge over time, which makes it possible to compare the estimated meaning. Accordingly, the constructed model is able to highlight the emphasized features of a metaphorical expression. Finally, a psychological experiment is conducted in order to verify the psychological validity of the constructed model of metaphor understanding. The results from the psychological experiment support the constructed model.
机译:这项研究的目的是建立基于统计语料库分析的隐喻理解的计算模型。构建的模型包括两个过程:分类过程和动态交互过程。该模型不仅基于形容词而且还基于使用形容词名词和三种类型的动词名词修饰数据的动词来表达特征。动态交互是基于使用微分方程的递归神经网络实现的。通常,在递归神经网络中,使用S型函数对微分方程进行收敛。但是,很难将隐喻的估计含义与目标的估计含义进行比较,而目标的估计含义是通过统计语言分析计算出的条件概率来表示的。在本模型中,微分方程随时间收敛,这使得可以比较估计的含义。因此,所构建的模型能够突出隐喻表达的强调特征。最后,为了验证所构建的隐喻理解模型的心理有效性,进行了心理实验。心理实验的结果支持所构建的模型。

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