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首页> 外文期刊>Frontiers in Communication >Modeling Morphological Priming in German With Naive Discriminative Learning
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Modeling Morphological Priming in German With Naive Discriminative Learning

机译:用天真鉴别学习模拟德语形态学灌注

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Both localist and connectionist models, based on experimental results obtained for English and French, assume that the degree of semantic compositionality of a morphologically complex word is reflected in how it is processed. Since priming experiments using English and French morphologically related prime-target pairs reveal stronger priming when complex words are semantically transparent (e.g., {em refill--fill/}) compared to semantically more opaque pairs (e.g., {em restrain--strain}), localist models set up connections between complex words and their stems only for semantically transparent pairs. Connectionist models have argued that the effect of transparency should arise as an epiphenomenon in PDP networks. However, for German, a series of studies has revealed equivalent priming for both transparent and opaque prime-target pairs, which suggests mediation of lexical access by the stem, independent of degrees of semantic compositionality. This study reports a priming experiment that replicates equivalent priming for transparent and opaque pairs. We show that these behavioral results can be straightforwardly modeled by a computational implementation of Word and Paradigm Morphology ({sc wpm}), Naive Discriminative Learning ({sc ndl}). Just as {sc wpm}, {sc ndl} eschews the theoretical construct of the morpheme. {sc Ndl} succeeds in modeling the German priming data by inspecting the extent to which a discrimination network pre-activates the target lexome from the orthographic properties of the prime. Measures derived from an {sc ndl} network, complemented with a semantic similarity measure derived from distributional semantics, predict lexical decision latencies with somewhat improved precision compared to classical measures such as word frequency, prime type, and human association ratings. We discuss both the methodological implications of our results, as well as their implications for models of the mental lexicon.
机译:基于用于英语和法语的实验结果,本地主义和连接主义模型都假设形态学复杂的单词的语义构成程度反映在其处理方式中。由于使用英语和法国形态学相关的Prime-target对的引发实验显示了当复杂的单词是语义透明的(例如,{ Em Refill - 填充 /})相比,以便与语义上更多的不透明对(例如,{ em restain- -Strain}),本地主义模型仅在复杂单词和茎之间设置连接,仅针对语义透明对。连接人员模型认为,透明度的效果应该是PDP网络中的EPIphenomenon。然而,对于德语来说,一系列研究揭示了透明和不透明的主要目标成对的等效启动,这表明茎的词汇进入的调解,与语义构成程度无关。本研究报告了一种引发实验,可复制透明和不透明对的等效灌注。我们表明,这些行为结果可以通过单词和范例形态({ SC WPM}),天真鉴别的学习({ SC NDL})来直接建模。就像{ sc wpm}一样,{ sc ndl}避开了语素的理论构造。 { sc ndl}通过检查歧视网络从素数的正射性质检查目标lexome的程度,成功地建立德语启动数据。与来自分布语义导出的语义相似度测量的{ SC NDL}网络衍生的措施预测了与诸如词频,PRIME类型和人类关联额定值的经典措施相比的精确度有所改善的词汇决策延迟。我们讨论了我们的结果的方法论影响,以及他们对精神词典模型的影响。

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