Text2Data: Low-Resource Data Generation with Textual Control

Authors

  • Shiyu Wang Salesforce AI Research
  • Yihao Feng Salesforce AI Research
  • Tian Lan Salesforce AI Research
  • Ning Yu Salesforce AI Research
  • Yu Bai Salesforce AI Research
  • Ran Xu Salesforce AI Research
  • Huan Wang Salesforce AI Research
  • Caiming Xiong Salesforce AI Research
  • Silvio Savarese Salesforce AI Research

DOI:

https://doi.org/10.1609/aaai.v39i20.35424

Abstract

Natural language serves as a common and straightforward control signal for humans to interact seamlessly with machines. Recognizing the importance of this interface, the machine learning community is investing considerable effort in generating data that is semantically coherent with textual instructions. While strides have been made in text-to-data generation spanning image editing, audio synthesis, video creation, and beyond, low-resource areas characterized by expensive annotations or complex data structures, such as molecules, motion dynamics, and time series, often lack textual labels. This deficiency impedes supervised learning, thereby constraining the application of advanced generative models for text-to-data tasks. In response to these challenges in the low-resource scenario, we propose Text2Data, a novel approach that utilizes unlabeled data to understand the underlying data distribution through an unsupervised diffusion model. Subsequently, it undergoes controllable finetuning via a novel constraint optimization-based learning objective that ensures controllability and effectively counteracts catastrophic forgetting. Comprehensive experiments demonstrate that Text2Data is able to achieve enhanced performance regarding controllability across various modalities, including molecules, motions and time series, when compared to existing baselines.

Downloads

Published

2025-04-11

How to Cite

Wang, S., Feng, Y., Lan, T., Yu, N., Bai, Y., Xu, R., … Savarese, S. (2025). Text2Data: Low-Resource Data Generation with Textual Control. Proceedings of the AAAI Conference on Artificial Intelligence, 39(20), 21252–21260. https://doi.org/10.1609/aaai.v39i20.35424

Issue

Section

AAAI Technical Track on Machine Learning VI