DefinePK

DefinePK hosts the largest index of Pakistani journals, research articles, news headlines, and videos. It also offers chapter-level book search.

PFed-TG: A Personalized Federated Learning Framework for Text Generation


Article Information

Title: PFed-TG: A Personalized Federated Learning Framework for Text Generation

Authors: Shameen Noor, Muhammad Azam, Fahad Sabah, Fawad Nasim, Kahkisha Ayub, Kinza Parvaiz

Journal: Journal of Computing & Biomedical Informatics

HEC Recognition History
Category From To
Y 2023-07-01 2024-09-30
Y 2022-07-01 2023-06-30

Publisher: Research Center of Computing & Biomedical Informatics

Country: Pakistan

Year: 2024

Volume: 7

Issue: 2

Language: English

Keywords: PythonFederated LearningNatural Language ProcessingPersonalized Federated LearningText GenerationPrivacy Preservation

Categories

Abstract

In recent years, advancements in deep learning and machine learning have spurred the development of various text generation models, particularly through Python programming. This paper introduces PFed-TG, a novel personalized federated learning (PFL) framework for text generation (PFed-TG) tasks that integrates personalized model training with federated learning principles, leveraging Python's Natural Language Processing (NLP) tools, including the Hugging Face Transformers library. The framework's efficacy is evaluated using the Shakespeare dataset, demonstrating consistent production of contextually relevant text. Performance is assessed using metrics such as ASL, ROUGE-L, BLEU, METEOR, and Perplexity, focusing on readability, coherence, and alignment. Results indicate that PFed-TG enhances efficiency and offers insights into optimizing personalized FL models for practical applications across diverse domains like healthcare, finance, and education. This research comprehensively evaluates PFed-TG's methodology, highlighting its potential to advance the field of NLP through innovative FL approaches.


Paper summary is not available for this article yet.

Loading PDF...

Loading Statistics...