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首页> 外文期刊>Journal of Quantitative Linguistics >Finding Developmental Groups in Acquisition Data: Variability-based Neighbour Clustering
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Finding Developmental Groups in Acquisition Data: Variability-based Neighbour Clustering

机译:在采集数据中寻找发展群体:基于变异的邻居聚类

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摘要

This article introduces a quantitative, data-driven method to identify clusters of groups of data points in longitudinal data. We illustrate this method with examples from first-language acquisition research. First, we discuss a variety of shortcomings of current practices in the identification and handling of stages in studies of language acquisition. Second, we explain and exemplify our method, which we refer to as variability-based neighbour clustering, on the basis of mean length of utterance (MLU) values and lexical growth in two different corpora. Third, we discuss the method's advantages and briefly point to further applications both in language acquisition and in diachronic linguistics.
机译:本文介绍了一种定量的,数据驱动的方法来识别纵向数据中的数据点组的聚类。我们以第一语言习得研究中的示例为例来说明这种方法。首先,我们讨论在语言习得研究的阶段识别和处理中当前实践的各种缺陷。其次,我们基于两种不同语料的平均话语长度(MLU)值和词法增长来解释和举例说明我们的方法,该方法称为基于变异的邻居聚类。第三,我们讨论该方法的优点,并简要指出在语言习得和历时语言学中的进一步应用。

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