Saved in:
Bibliographic Details
Main Authors: Xiaofeng, Zhang, Courville, Aaron, Drozdzal, Michal, Romero-Soriano, Adriana
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.19557
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910028544344064
author Xiaofeng, Zhang
Courville, Aaron
Drozdzal, Michal
Romero-Soriano, Adriana
author_facet Xiaofeng, Zhang
Courville, Aaron
Drozdzal, Michal
Romero-Soriano, Adriana
contents Text-to-image (T2I) models offer great potential for creating virtually limitless synthetic data, a valuable resource compared to fixed and finite real datasets. Previous works evaluate the utility of synthetic data from T2I models on three key desiderata: quality, diversity, and consistency. While prompt engineering is the primary means of interacting with T2I models, the systematic impact of prompt complexity on these critical utility axes remains underexplored. In this paper, we first conduct synthetic experiments to motivate the difficulty of generalization with regard to prompt complexity and explain the observed difficulty with theoretical derivations. Then, we introduce a new evaluation framework that can compare the utility of real data and synthetic data, and present a comprehensive analysis of how prompt complexity influences the utility of synthetic data generated by commonly used T2I models. We conduct our study across diverse datasets, including CC12M, ImageNet-1k, and DCI, and evaluate different inference-time intervention methods. Our synthetic experiments show that generalizing to more general conditions is harder than the other way round, since the former needs an estimated likelihood that is not learned by diffusion models. Our large-scale empirical experiments reveal that increasing prompt complexity results in lower conditional diversity and prompt consistency, while reducing the synthetic-to-real distribution shift, which aligns with the synthetic experiments. Moreover, current inference-time interventions can augment the diversity of the generations at the expense of moving outside the support of real data. Among those interventions, prompt expansion, by deliberately using a pre-trained language model as a likelihood estimator, consistently achieves the highest performance in both image diversity and aesthetics, even higher than that of real data.
format Preprint
id arxiv_https___arxiv_org_abs_2510_19557
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle The Intricate Dance of Prompt Complexity, Quality, Diversity, and Consistency in T2I Models
Xiaofeng, Zhang
Courville, Aaron
Drozdzal, Michal
Romero-Soriano, Adriana
Computer Vision and Pattern Recognition
Text-to-image (T2I) models offer great potential for creating virtually limitless synthetic data, a valuable resource compared to fixed and finite real datasets. Previous works evaluate the utility of synthetic data from T2I models on three key desiderata: quality, diversity, and consistency. While prompt engineering is the primary means of interacting with T2I models, the systematic impact of prompt complexity on these critical utility axes remains underexplored. In this paper, we first conduct synthetic experiments to motivate the difficulty of generalization with regard to prompt complexity and explain the observed difficulty with theoretical derivations. Then, we introduce a new evaluation framework that can compare the utility of real data and synthetic data, and present a comprehensive analysis of how prompt complexity influences the utility of synthetic data generated by commonly used T2I models. We conduct our study across diverse datasets, including CC12M, ImageNet-1k, and DCI, and evaluate different inference-time intervention methods. Our synthetic experiments show that generalizing to more general conditions is harder than the other way round, since the former needs an estimated likelihood that is not learned by diffusion models. Our large-scale empirical experiments reveal that increasing prompt complexity results in lower conditional diversity and prompt consistency, while reducing the synthetic-to-real distribution shift, which aligns with the synthetic experiments. Moreover, current inference-time interventions can augment the diversity of the generations at the expense of moving outside the support of real data. Among those interventions, prompt expansion, by deliberately using a pre-trained language model as a likelihood estimator, consistently achieves the highest performance in both image diversity and aesthetics, even higher than that of real data.
title The Intricate Dance of Prompt Complexity, Quality, Diversity, and Consistency in T2I Models
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2510.19557