Challenge: Existing evaluation methods for natural language generation are inadequate . distinguishing machine-generated text is challenging even for human evaluators .
Approach: They compare human-based evaluators with automated evaluation procedures . they find human evaluers do not correlate well with discriminative evalators .
Outcome: The proposed evaluation methods are compared with a dozen state-of-the-art generators for online product reviews.

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LLMs instead of Human Judges? A Large Scale Empirical Study across 20 NLP Evaluation Tasks (2025.acl-short)

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Challenge: Existing evaluations of NLP models with LLMs are based on human judgments . however, there are concerns about their validity and reproducibility in proprietary models .
Approach: They evaluate 11 current LLMs for their ability to replicate annotations. they show substantial variance across models and datasets.
Outcome: The proposed model can replicate human annotations on 20 NLP datasets and show substantial variance across models and datasets.
From Generation to Judgment: Opportunities and Challenges of LLM-as-a-judge (2025.emnlp-main)

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Challenge: Recent advances in Large Language Models (LLMs) inspire the "LLM-as-a-judge" paradigm . traditional methods of assessment and evaluation fail in dynamic and open-ended scenarios .
Approach: They propose a paradigm where LLMs are leveraged to perform scoring, ranking, or selection for machine learning evaluation scenarios.
Outcome: The proposed model-based judgment and evaluation paradigms are based on large language models and are compared to the current model-driven evaluation paradigm.
All That’s ‘Human’ Is Not Gold: Evaluating Human Evaluation of Generated Text (2021.acl-long)

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Challenge: evaluators distinguish between human- and machine-authored text in three domains without training . evals' accuracy improved up to 55%, but it did not significantly improve across the three domain.
Approach: They examine the role untrained human evaluations play in NLG evaluation and propose ways to improve their evaluations.
Outcome: The evaluators distinguished between human- and machine-authored text at random chance level without training, but their accuracy did not improve across the three domains.
Are Large Language Model-based Evaluators the Solution to Scaling Up Multilingual Evaluation? (2024.findings-eacl)

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Challenge: Large Language Models (LLMs) excel in various tasks, but their evaluation, especially in languages beyond the top 20, remains inadequate due to existing benchmarks and metrics limitations.
Approach: They propose to use Large Language Models as evaluators to rank or score other models’ outputs by calibrating them against 20K human judgments across three text-generation tasks, five metrics, and eight languages.
Outcome: The proposed evaluation methods can be used to improve multilingual evaluation by calibrating them against 20K human judgments across three text-generation tasks, five metrics, and eight languages.
A Tutorial on Evaluation Metrics used in Natural Language Generation (2021.naacl-tutorials)

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Challenge: This tutorial presents the evolution of automatic evaluation metrics to their current state along with emerging trends in this field.
Approach: This tutorial presents the evolution of automatic evaluation metrics to their current state . it aims to assess the extent of scientific progress made and identify areas/components that need improvement .
Outcome: This tutorial presents the evolution of automatic evaluation metrics to their current state along with emerging trends in this field.
Unveiling the Achilles’ Heel of NLG Evaluators: A Unified Adversarial Framework Driven by Large Language Models (2024.findings-acl)

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Challenge: Recent studies have highlighted various neural metrics that align well with human evaluations.
Approach: They propose a black-box adversarial framework that generates strong disagreements between human and victim evaluators.
Outcome: The proposed framework can significantly improve the performance of human and victim evaluators.
Leveraging Large Language Models for NLG Evaluation: Advances and Challenges (2024.emnlp-main)

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Challenge: introducing Large Language Models (LLMs) has opened new avenues for assessing generated content quality, e.g., coherence, creativity, and context relevance.
Approach: They propose a taxonomy for organizing existing LLM-based evaluation metrics and a structured framework to understand and compare them.
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Large Language Models for Automated Literature Review: An Evaluation of Reference Generation, Abstract Writing, and Review Composition (2025.emnlp-main)

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Challenge: Large language models (LLMs) are a promising solution to automate literature review writing tasks.
Approach: They propose a framework to automatically evaluate the performance of large language models in three key tasks of literature review writing: reference generation, abstract writing, and literature review composition.
Outcome: The proposed framework assesses the hallucination rates in generated references and measures the semantic coverage and factual consistency of the literature summaries and compositions against human-written counterparts.
Style Over Substance: Evaluation Biases for Large Language Models (2025.coling-main)

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Challenge: Ranking the relative performance of large language models based on Elo ratings is gaining popularity . however, the extent to which humans and LLMs are capable evaluators remains uncertain .
Approach: They propose to evaluate machine-generated text across multiple dimensions using the Elo rating system . they propose to use crowd-sourced and expert annotators to rank models based on Elo ratings .
Outcome: The proposed method improves the quality of LLM-based evaluations, but there is no improvement in crowd-sourced evaluations.
DHP Benchmark: Are LLMs Good NLG Evaluators? (2025.findings-naacl)

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Challenge: Large Language Models (LLMs) are increasingly serving as evaluators in Natural Language Generation (NLG) tasks.
Approach: They propose a framework that measures the discernment of Large Language Models (LLMs) across diverse NLG tasks.
Outcome: The proposed framework provides quantitative discernment scores for LLMs across four NLG tasks.

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