BLM-AgrF (Blackbird Language Matrices Subject-Verb agreement in French)

A dataset in French for learning the underlying rules of subject-verb agreement in sentences

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Description

BLM-AgrF is a dataset in French for learning the underlying rules of subject-verb agreement in sentences, developed in the Blackbird Language Matrices (BLM) framework. In this task, an instance consists of sequences of sentences with specific attributes. To predict the correct answer as the next element of the sequence, a model must correctly detect the generative rules used to produce the dataset.

Blackbird Language Matrices (BLMs) are multiple-choice problems, where the input is a sequence of sentences built using specific generating rules, and the answer set consists of a correct answer that continues the input sequence, and several incorrect contrastive options, built by violating the underlying generating rules of the sentences. In a BLM matrix, all sentences share the targeted linguistic phenomenon (in this case subject-verb agreement), but differ in other aspects relevant for the phenomenon in question.

BLM datasets also have a lexical variation dimension, to explore the impact of lexical variation on detecting relevant structures: type I – minimal lexical variation for sentences within an instance, type II – one word difference across the sentences within an instance, type III – maximal lexical variation within an instance.

type I 2052:252 
type II  5000:4927
type III  5000:4810

This dataset is built based on a previous version of the dataset (with a different answer set and different type II and type III), described in

Aixiu An, Chunyang Jiang, Maria A Rodriguez, Vivi Nastase, Paola Merlo
BLM-AgrF: A new French benchmark to investigate generalization of agreement in neural networks, Proceedings of the 17th Conference of the European Chapter of the Association for Computational Linguistics, (EACL 2023), pages 1363-1374, 2023
https://aclanthology.org/2023.eacl-main.99.pdf

 

Reference

If you use this dataset,please cite the following publication:

Nastase, Vivi & Merlo, Paola. (2024). Are there identifiable structural parts in the sentence embedding whole? DOI: 10.48550/arXiv.2409.16563.