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On the double nature of productivity in inflectional morphology

机译:屈折形态中生产力的双重性质

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摘要

Inflection is generally considered to be more productive than derivation. To justify such an assumption, the syntactic function of inflectional morphology is contrasted with the mainly lexical function of derivational morphology. In this paper, the whole question will be carefully discussed with the help of recently developed quantitative approaches to productivity. On the basis of data taken from Italian, it will be shown that a quantitative approach to productivity can shed light on this intricate question by revealing the double nature of inflectional morphology, which on the one hand sides with derivational morphology because of its lexically conditioned inflectional classes. On the other, it scores very high productivity rates for the single inflectional categories in accordance with its syntactic function. Furthermore, the productivity rates of the inflectional categories considered are shown to be not uniform: several factors may influence their productivity, as for instance the substitutive usage of periphrases with modals, even in a language like Italian in which the latter are far less grammaticalized than in others.
机译:通常认为,拐点比推导更有生产力。为了证明这一假设的合理性,将屈折形态的句法功能与衍生形态的主要词汇功能进行了对比。在本文中,将在最近开发的生产率定量方法的帮助下仔细讨论整个问题。根据从意大利获得的数据,将显示出一种定量的生产率生产率方法,可以通过揭示拐折形态的双重性质来阐明这个复杂的问题,一方面,由于其词法条件上的拐折,其一方面具有导数形态。类。另一方面,根据其句法功能,它在单个拐点类别上的生产率很高。此外,所显示的拐点类别的生产率显示不统一:几个因素可能会影响其生产率,例如,使用情态词代替过分句,即使是像意大利语这样的语言,后者的语法化程度也远低于语法在其他人。

著录项

  • 来源
    《Morphology》 |2007年第2期|181-205|共25页
  • 作者

    Livio Gaeta;

  • 作者单位

    Dipartimento di Filologia Moderna “S. Battaglia” Università di Napoli “Federico II” via Porta di Massa 1 Napoli 80133 Italy;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Inflection; Derivation; Productivity; Corpora; Italian;

    机译:拐点;派生;生产率;公司;意大利语;
  • 入库时间 2022-08-18 00:02:08

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