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Main Authors: Purpura, Alberto, Wang, Li, Badyal, Sahil, Beaufrand, Eugenio, Faulkner, Adam
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.18554
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author Purpura, Alberto
Wang, Li
Badyal, Sahil
Beaufrand, Eugenio
Faulkner, Adam
author_facet Purpura, Alberto
Wang, Li
Badyal, Sahil
Beaufrand, Eugenio
Faulkner, Adam
contents Reliably ensuring Large Language Models (LLMs) follow complex instructions is a critical challenge, as existing benchmarks often fail to reflect real-world use or isolate compliance from task success. We introduce MOSAIC (MOdular Synthetic Assessment of Instruction Compliance), a modular framework that uses a dynamically generated dataset with up to 20 application-oriented generation constraints to enable a granular and independent analysis of this capability. Our evaluation of five LLMs from different families based on this new benchmark demonstrates that compliance is not a monolithic capability but varies significantly with constraint type, quantity, and position. The analysis reveals model-specific weaknesses, uncovers synergistic and conflicting interactions between instructions, and identifies distinct positional biases such as primacy and recency effects. These granular insights are critical for diagnosing model failures and developing more reliable LLMs for systems that demand strict adherence to complex instructions.
format Preprint
id arxiv_https___arxiv_org_abs_2601_18554
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Deconstructing Instruction-Following: A New Benchmark for Granular Evaluation of Large Language Model Instruction Compliance Abilities
Purpura, Alberto
Wang, Li
Badyal, Sahil
Beaufrand, Eugenio
Faulkner, Adam
Artificial Intelligence
Reliably ensuring Large Language Models (LLMs) follow complex instructions is a critical challenge, as existing benchmarks often fail to reflect real-world use or isolate compliance from task success. We introduce MOSAIC (MOdular Synthetic Assessment of Instruction Compliance), a modular framework that uses a dynamically generated dataset with up to 20 application-oriented generation constraints to enable a granular and independent analysis of this capability. Our evaluation of five LLMs from different families based on this new benchmark demonstrates that compliance is not a monolithic capability but varies significantly with constraint type, quantity, and position. The analysis reveals model-specific weaknesses, uncovers synergistic and conflicting interactions between instructions, and identifies distinct positional biases such as primacy and recency effects. These granular insights are critical for diagnosing model failures and developing more reliable LLMs for systems that demand strict adherence to complex instructions.
title Deconstructing Instruction-Following: A New Benchmark for Granular Evaluation of Large Language Model Instruction Compliance Abilities
topic Artificial Intelligence
url https://arxiv.org/abs/2601.18554