ArXiv TLDR

Ease of dependency distance minimization in star-like structures

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2604.28034

Emília Garcia-Casademont, Ramon Ferrer-i-Cancho

cs.CLphysics.soc-ph

TLDR

This paper shows dependency distance minimization in star-like syntactic structures is simpler due to convexity, and anti-minimization effects come from competing principles.

Key contributions

  • Demonstrates that the optimization landscape for dependency distance in star and quasistar trees is convex, simplifying the problem.
  • Argues that anti-dependency distance minimization in star structures is caused by competing linguistic principles.
  • Suggests that dependency distance minimization offers less benefit in star-like structures compared to other syntactic configurations.

Why it matters

This paper refines our understanding of syntactic dependency distance minimization in star-like structures. It challenges assumptions about optimization difficulty and explains why observed word order patterns deviate from predictions, highlighting competing linguistic forces.

Original Abstract

The syntactic structure of a sentence can be represented as a tree where edges indicate syntactic dependencies between words. When that structure is a star, it has been demonstrated that the head should be placed in the middle of the linear arrangement according to the principle of syntactic dependency distance minimization. However, hubs of stars tend to be put at one of the ends, against that principle. Here we address two questions: (1) How difficult is it to minimize dependency distance? (2) Why anti dependency distance minimization effects have been found in star structures but not in path structures? The ease of optimization is determined by the shape of the optimization landscape. It was demonstrated that the landscape of star structures is quasiconvex (Ferrer-i-Cancho 2015, Language Dynamics and Change). As for (1), here we show that it is indeed convex (a particular case of quasiconvexity) both for star trees and quasistar trees and thus the distance-based optimization problem is simpler than previously believed. As for (2), we argue that (a) competing principles, rather than the difficulty of optimization, must be the actual reason for anti-dependency distance minimization effects and that (b) dependency distance minimization on star-like structures is less rewarding compared to other structures.

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