TransactionGPT
Abstract
We present TransactionGPT (TGPT), a foundation model for consumer transaction data within one of the world's largest payment networks. TGPT is designed to understand and generate transaction trajectories while simultaneously supporting a variety of downstream prediction and classification tasks. We introduce a novel 3D-Transformer architecture specifically tailored for capturing the complex dynamics in payment transaction data. This architecture incorporates design innovations that enhance modality fusion and computational efficiency, while seamlessly enabling joint optimization with downstream objectives. Trained on billion-scale real-world transactions, TGPT significantly improves downstream anomaly transaction detection performance against a competitive production model and exhibits advantages over baselines in generating future transactions. We conduct extensive empirical evaluations utilizing a diverse collection of company transaction datasets spanning multiple downstream tasks, thereby enabling a thorough assessment of TGPT's effectiveness and efficiency in comparison to established methodologies. Furthermore, we examine the incorporation of LLM-derived embeddings within TGPT and benchmark its performance against fine-tuned LLMs, demonstrating that TGPT achieves superior predictive accuracy as well as faster training and inference. We anticipate that the architectural innovations and practical guidelines from this work will advance foundation models for transaction-like data and catalyze future research in this emerging field.
Cite
@article{arxiv.2511.08939,
title = {TransactionGPT},
author = {Yingtong Dou and Zhimeng Jiang and Tianyi Zhang and Mingzhi Hu and Zhichao Xu and Shubham Jain and Uday Singh Saini and Xiran Fan and Jiarui Sun and Menghai Pan and Junpeng Wang and Xin Dai and Liang Wang and Chin-Chia Michael Yeh and Yujie Fan and Yan Zheng and Vineeth Rakesh and Huiyuan Chen and Guanchu Wang and Mangesh Bendre and Zhongfang Zhuang and Xiaoting Li and Prince Aboagye and Vivian Lai and Minghua Xu and Hao Yang and Yiwei Cai and Mahashweta Das and Yuzhong Chen},
journal= {arXiv preprint arXiv:2511.08939},
year = {2026}
}
Comments
Technical Report