Collaborative Chinese Text Recognition with Personalized Federated Learning
Shangchao Su, Haiyang Yu, Bin Li, Xiangyang Xue

TL;DR
This paper introduces pFedCR, a personalized federated learning framework for Chinese text recognition that enhances local model performance and privacy without data sharing, using attention mechanisms and model fine-tuning.
Contribution
The paper proposes the pFedCR algorithm integrating personalized federated learning with attention mechanisms for Chinese text recognition, improving performance and privacy.
Findings
Improves local model accuracy by about 20%.
Enhances generalization across client domains.
Outperforms other federated learning methods by 6-8%.
Abstract
In Chinese text recognition, to compensate for the insufficient local data and improve the performance of local few-shot character recognition, it is often necessary for one organization to collect a large amount of data from similar organizations. However, due to the natural presence of private information in text data, such as addresses and phone numbers, different organizations are unwilling to share private data. Therefore, it becomes increasingly important to design a privacy-preserving collaborative training framework for the Chinese text recognition task. In this paper, we introduce personalized federated learning (pFL) into the Chinese text recognition task and propose the pFedCR algorithm, which significantly improves the model performance of each client (organization) without sharing private data. Specifically, pFedCR comprises two stages: multiple rounds of global model…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Text and Document Classification Technologies
