Saved in:
Bibliographic Details
Main Authors: Wang, Huaxiaoyue, Choudhary, Sunav, Dernoncourt, Franck, Shen, Yu, Petrangeli, Stefano
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.11747
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866915736792858624
author Wang, Huaxiaoyue
Choudhary, Sunav
Dernoncourt, Franck
Shen, Yu
Petrangeli, Stefano
author_facet Wang, Huaxiaoyue
Choudhary, Sunav
Dernoncourt, Franck
Shen, Yu
Petrangeli, Stefano
contents Graphic design often involves exploring different stylistic directions, which can be time-consuming for non-experts. We address this problem of stylistically improving designs based on natural language instructions. While VLMs have shown initial success in graphic design, their pretrained knowledge on styles is often too general and misaligned with specific domain data. For example, VLMs may associate minimalism with abstract designs, whereas designers emphasize shape and color choices. Our key insight is to leverage design data -- a collection of real-world designs that implicitly capture designer's principles -- to learn design knowledge and guide stylistic improvement. We propose PRISM (PRior-Informed Stylistic Modification) that constructs and applies a design knowledge base through three stages: (1) clustering high-variance designs to capture diversity within a style, (2) summarizing each cluster into actionable design knowledge, and (3) retrieving relevant knowledge during inference to enable style-aware improvement. Experiments on the Crello dataset show that PRISM achieves the highest average rank of 1.49 (closer to 1 is better) over baselines in style alignment. User studies further validate these results, showing that PRISM is consistently preferred by designers.
format Preprint
id arxiv_https___arxiv_org_abs_2601_11747
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle PRISM: Learning Design Knowledge from Data for Stylistic Design Improvement
Wang, Huaxiaoyue
Choudhary, Sunav
Dernoncourt, Franck
Shen, Yu
Petrangeli, Stefano
Artificial Intelligence
Graphic design often involves exploring different stylistic directions, which can be time-consuming for non-experts. We address this problem of stylistically improving designs based on natural language instructions. While VLMs have shown initial success in graphic design, their pretrained knowledge on styles is often too general and misaligned with specific domain data. For example, VLMs may associate minimalism with abstract designs, whereas designers emphasize shape and color choices. Our key insight is to leverage design data -- a collection of real-world designs that implicitly capture designer's principles -- to learn design knowledge and guide stylistic improvement. We propose PRISM (PRior-Informed Stylistic Modification) that constructs and applies a design knowledge base through three stages: (1) clustering high-variance designs to capture diversity within a style, (2) summarizing each cluster into actionable design knowledge, and (3) retrieving relevant knowledge during inference to enable style-aware improvement. Experiments on the Crello dataset show that PRISM achieves the highest average rank of 1.49 (closer to 1 is better) over baselines in style alignment. User studies further validate these results, showing that PRISM is consistently preferred by designers.
title PRISM: Learning Design Knowledge from Data for Stylistic Design Improvement
topic Artificial Intelligence
url https://arxiv.org/abs/2601.11747