Ramon Ferrer-i-Cancho

Also published as: Ramon Ferrer i Cancho


2022

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Linear-Time Calculation of the Expected Sum of Edge Lengths in Random Projective Linearizations of Trees
Lluís Alemany-Puig | Ramon Ferrer-i-Cancho
Computational Linguistics, Volume 48, Issue 3 - September 2022

The syntactic structure of a sentence is often represented using syntactic dependency trees. The sum of the distances between syntactically related words has been in the limelight for the past decades. Research on dependency distances led to the formulation of the principle of dependency distance minimization whereby words in sentences are ordered so as to minimize that sum. Numerous random baselines have been defined to carry out related quantitative studies on lan- guages. The simplest random baseline is the expected value of the sum in unconstrained random permutations of the words in the sentence, namely, when all the shufflings of the words of a sentence are allowed and equally likely. Here we focus on a popular baseline: random projective per- mutations of the words of the sentence, that is, permutations where the syntactic dependency structure is projective, a formal constraint that sentences satisfy often in languages. Thus far, the expectation of the sum of dependency distances in random projective shufflings of a sentence has been estimated approximately with a Monte Carlo procedure whose cost is of the order of Rn, where n is the number of words of the sentence and R is the number of samples; it is well known that the larger R is, the lower the error of the estimation but the larger the time cost. Here we pre- sent formulae to compute that expectation without error in time of the order of n. Furthermore, we show that star trees maximize it, and provide an algorithm to retrieve the trees that minimize it.

2021

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The Linear Arrangement Library. A new tool for research on syntactic dependency structures.
Lluís Alemany-Puig | Juan Luis Esteban | Ramon Ferrer-i-Cancho
Proceedings of the Second Workshop on Quantitative Syntax (Quasy, SyntaxFest 2021)

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Dependency distance minimization predicts compression
Ramon Ferrer-i-Cancho | Carlos Gómez-Rodríguez
Proceedings of the Second Workshop on Quantitative Syntax (Quasy, SyntaxFest 2021)

2019

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Proceedings of the First Workshop on Quantitative Syntax (Quasy, SyntaxFest 2019)
Xinying Chen | Ramon Ferrer-i-Cancho
Proceedings of the First Workshop on Quantitative Syntax (Quasy, SyntaxFest 2019)

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SyntaxFest 2019 Invited talk - Dependency distance minimization: facts, theory and predictions
Ramon Ferrer-i-Cancho
Proceedings of the First Workshop on Quantitative Syntax (Quasy, SyntaxFest 2019)

2007

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Correlations in the Organization of Large-Scale Syntactic Dependency Networks
Ramon Ferrer i Cancho | Alexander Mehler | Olga Pustylnikov | Albert Díaz-Guilera
Proceedings of the Second Workshop on TextGraphs: Graph-Based Algorithms for Natural Language Processing