探索语言的普遍特征一直是语言学研究的重要内容,当前依存距离最小化已经被证实是人类语言的一种普遍规律。为了发现这一规律背后的动因,对30种语言的依存距离分布情况进行研究,通过多种模型拟合对比,发现广延指数分布和指数截断的幂律分布分别适合拟合"短句"与"长句"的依存距离分布。研究结果还显示,人类语言的依存距离分布介于指数分布和幂律分布之间,可用指数和幂律混合的模型来描述。在此基础上,利用不同模型拟合对比来探讨依存距离分布的方法和路径,结果揭示出人类语言的依存距离可能遵循一种普遍性的分布模式,反映了省力原则和人类认知机制在语言结构运用与演化过程中发挥着重要的支配作用。
Universal properties of languages have always been important in traditional linguistics study.In recent years,studies have increasingly presented a trend which integrates multiple disciplines and methods,e.g.cognitive science,network science,big data analysis and quantitative techniques.So far,results of the survey on large-scale cross-language materials have indicated that human languages have a tendency toward dependency distance minimization.This tendency suggests that,although human languages differ in pronunciation,vocabulary and grammar,etc.,their syntax may be bound by universal mechanisms,and their evolution may also have a universal model.Dependency distance,which is defined as the linear distance between two words which are syntactically related,can reflect the comprehension difficulty of syntactic structure.Therefore,the dependency distance minimization is considered as resulting from cognitive mechanism and theeffect of″the principle of least effort″on syntactic structure.It also proves that humans prefer to avoid the use of long-distance dependencies to reduce cognitive cost.As a result,dependency distance distribution may present a certain pattern.Revealing this pattern will help us understand how human cognitive mechanism works on syntactic structure.But the question is which of the probability distributions can fit the pattern of dependency distance distribution more properly—the power law distribution or the exponential distribution?To find out the answer,this paper uses the following methods and materials to analyze dependency distance distribution:1)Complementary Cumulative Distribution Function(CCDF)is used to smooth data,to avoid statistical fluctuation,and to lower fitting error;2)Maximum likelihood estimation and likelihood ratio test are used to fit and compare five kinds of″heavy tail″distribution,including exponential and power law;3)HamleDT 2.0dependence treebank is adopted,especially for language materials which are annotated with Prague Dependencies Scheme,beca