Challenge: Existing evaluation resources lack domain and language diversity, limiting the ability for cross-domain and cross-lingual analyses.
Approach: They propose to use a multilingual multi-domain dataset to benchmark multilingual and monolingual models for multilingual readability assessment.
Outcome: The proposed model trains better in supervised, unsupervised, and few-shot prompting settings and identifies shortcomings in state-of-the-art unsupervised methods.

Similar Papers

BenchMAX: A Comprehensive Multilingual Evaluation Suite for Large Language Models (2025.findings-emnlp)

Copied to clipboard

Challenge: Existing multilingual benchmarks focus primarily on language understanding tasks.
Approach: They develop a multi-way multilingual benchmark that measures critical capabilities of large language models across languages.
Outcome: Extensive experiments on BenchMAX reveal uneven utilization of core capabilities across languages, emphasizing the performance gaps that scaling model size alone does not resolve.
MuBench: Assessment of Multilingual Capabilities of Large Language Models Across 61 Languages (2026.findings-acl)

Copied to clipboard

Challenge: Existing evaluation datasets lack cross-lingual alignment, leaving assessments of multilingual capabilities fragmented in both language and skill coverage.
Approach: They propose to use multilingual consistency as a complementary metric to assess performance bottlenecks and guide model improvement.
Outcome: The proposed model lacks cross-lingual alignment and language coverage gaps between state-of-the-art models.
Revisiting non-English Text Simplification: A Unified Multilingual Benchmark (2023.acl-long)

Copied to clipboard

Challenge: Recent advances in English automatic text simplification have pushed the frontier of multilingual text simulating.
Approach: They propose to use multilingual evaluation benchmarks to evaluate multilingual text simplification models in English and other languages.
Outcome: The proposed benchmark outperforms pre-trained models in Russian in zero-shot cross-lingual transfer to low-resource languages.
MMLU-ProX: A Multilingual Benchmark for Advanced Large Language Model Evaluation (2025.emnlp-main)

Copied to clipboard

Challenge: Existing large language model evaluation benchmarks focus on English, while current multilingual tasks lack parallel questions that specifically assess cross-lingual reasoning abilities.
Approach: They propose a comprehensive benchmark covering 29 languages, built on an English benchmark.
Outcome: The MMLU-ProX is a comprehensive benchmark covering 29 languages, built on an English benchmark.
MEGA: Multilingual Evaluation of Generative AI (2023.emnlp-main)

Copied to clipboard

Challenge: Large Large Models (LLMs) have shown impressive performance on many natural language processing tasks such as language understanding, reasoning, and language generation.
Approach: They present a framework for evaluating generative LLMs in the multilingual setting and provide directions for future progress in the field.
Outcome: The proposed framework evaluates generative models on 16 NLP datasets across 70 typologically diverse languages and compares them to state-of-the-art non-autoregressive models.
Analyzing the Evaluation of Cross-Lingual Knowledge Transfer in Multilingual Language Models (2024.eacl-long)

Copied to clipboard

Challenge: Recent advances in training multilingual models on large datasets have shown promising results in knowledge transfer across languages.
Approach: They challenge the assumption that high zero-shot performance reflects high cross-lingual ability by introducing more challenging setups involving instances with multiple languages.
Outcome: The proposed model can achieve high performance on multilingual benchmarks and on low-resource languages.
GlotEval: A Test Suite for Massively Multilingual Evaluation of Large Language Models (2025.emnlp-demos)

Copied to clipboard

Challenge: Existing evaluation frameworks focus on English and a handful of high-resource languages, thereby overlooking the realistic performance of large language models in multilingual and lower-resourced scenarios.
Approach: They propose a unified and lightweight framework that integrates 27 benchmarks under a standard ISO 639-3 language identifier system to enable seamless incorporation of new benchmarks.
Outcome: The proposed framework integrates 27 benchmarks under a standard ISO 639-3 language identifier system, allowing for seamless incorporation of new benchmarks.
Multilingual Generation in Abstractive Summarization: A Comparative Study (2024.lrec-main)

Copied to clipboard

Challenge: Existing models for multilingual generation lack thorough analysis due to extensive linguistic diversity.
Approach: They propose to classify multilingual generation methodologies into three categories based on their underlying modeling principles . they introduce an automatic metric to mitigate spurious correlations associated with language mixing .
Outcome: The proposed model improves in high-resource, low-resourced, and zero-shot scenarios.
MELA: Multilingual Evaluation of Linguistic Acceptability (2024.acl-long)

Copied to clipboard

Challenge: Existing benchmarks on linguistic acceptability have been used to evaluate language models' ability to distinguish between acceptable and unacceptable sentences.
Approach: They present the largest benchmark to date on linguistic acceptability: MELA . they establish LLM baselines on this benchmark and investigate cross-lingual transfer in acceptability judgements with XLM-R.
Outcome: The proposed model outperforms open-source models on cross-lingual transfer in acceptability judgements.
MultiBLiMP 1.0: A Massively Multilingual Benchmark of Linguistic Minimal Pairs (2026.tacl-1)

Copied to clipboard

Challenge: MultiBLiMP 1.0 is a massively multilingual benchmark of linguistic minimal pairs covering 101 languages and 2 types of subject-verb agreement.
Approach: They propose to use multilingual benchmarks to evaluate linguistic minimal pairs in 101 languages and 2 types of subject-verb agreement to create the minimal pairs.
Outcome: The proposed benchmark covers 101 languages and 2 types of subject-verb agreement, and contains more than 128,000 minimal pairs.

What is GenGO?

GenGO is an NLP powered publication search system. It currenctly indexes 30k+ papers from ACL Anthology, and implements multi-aspect summarization, semantic search, and more!

Information

About
Limitations