Measure words and classifiers
نویسندگان
چکیده
منابع مشابه
Structure of Classifiers and Measure Words: A Lexical Functional Account
Previous accounts of the distribution of classifiers (C) and measure words (M) in Chinese [Num C/M N] include a uniform left-branching, right-branching, or split structure. This paper demonstrates that the left-branching structure best captures C/M’s common properties─among others, they are unified mathematically as the multiplicand (1 and ¬1 respectively) ─ and also offers the simplest account...
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A numeral classifier is required between a numeral and a noun in Chinese, which comes in two varieties, sortal classifer (C) and measural classifier (M), also known as 'classifier' and 'measure word', respectively. Cs categorize objects based on semantic attributes and Cs and Ms both denote quantity in terms of mathematical values. The aim of this study was to conduct a psycholinguistic experim...
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Bootstrapped classifiers iteratively generalize from a few seed examples or prototypes to other examples of target labels. However, sparseness of language and limited supervision make the task difficult. We address this problem by using distributed vector representations of words to aid the generalization. We use the word vectors to expand entity sets used for training classifiers in a bootstra...
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ژورنال
عنوان ژورنال: Revista Letras
سال: 2017
ISSN: 2236-0999,0100-0888
DOI: 10.5380/rel.v96i0.54558