Combination of generative artificial intelligence and deep reinforcement learning: performance comparison

In this study, we explore the integration of Generative Adversarial Networks (GANs) and Deep Reinforcement Learning (DRL) methods, focusing on the performance comparison between different architectures of Sequence Generative Adversarial Networks (SeqGAN) and policy gradient algorithms. We address ke...

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Main Author: Lim, Fang Nie
Format: Final Year Project / Dissertation / Thesis
Published: 2024
Subjects:
Online Access:http://eprints.utar.edu.my/6814/
http://eprints.utar.edu.my/6814/1/2200481_LIM_FANG_NIE.pdf
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author Lim, Fang Nie
author_facet Lim, Fang Nie
author_sort Lim, Fang Nie
building UTAR Institutional Repository
collection Online Access
description In this study, we explore the integration of Generative Adversarial Networks (GANs) and Deep Reinforcement Learning (DRL) methods, focusing on the performance comparison between different architectures of Sequence Generative Adversarial Networks (SeqGAN) and policy gradient algorithms. We address key challenges in text generation, such as maintaining narrative coherence over long sequences, reducing text repetition, and optimizing SeqGAN for diverse textual outputs. The study incorporates architectural innovations like Long Short-Term Memory (LSTM) and Gated Recurrent Units (GRU) that enhance the ability of SeqGAN to capture long-range dependencies in sequences, while attention mechanisms improve contextual awareness by selectively focusing on relevant parts of the sequence. Through extensive experiments, we analyze the influence of various neural network configurations and regulatory mechanisms, including gradient penalties and regularization on the quality of the generated text. Our findings show a 15% increase in BLEU scores, highlighting significant improvements in text coherence and diversity across various datasets, demonstrating the effectiveness of integrating SeqGAN with policy gradient methods for automated content generation.
first_indexed 2025-11-15T19:43:50Z
format Final Year Project / Dissertation / Thesis
id utar-6814
institution Universiti Tunku Abdul Rahman
institution_category Local University
last_indexed 2025-11-15T19:43:50Z
publishDate 2024
recordtype eprints
repository_type Digital Repository
spelling utar-68142024-11-21T02:39:33Z Combination of generative artificial intelligence and deep reinforcement learning: performance comparison Lim, Fang Nie QA75 Electronic computers. Computer science QA76 Computer software T Technology (General) In this study, we explore the integration of Generative Adversarial Networks (GANs) and Deep Reinforcement Learning (DRL) methods, focusing on the performance comparison between different architectures of Sequence Generative Adversarial Networks (SeqGAN) and policy gradient algorithms. We address key challenges in text generation, such as maintaining narrative coherence over long sequences, reducing text repetition, and optimizing SeqGAN for diverse textual outputs. The study incorporates architectural innovations like Long Short-Term Memory (LSTM) and Gated Recurrent Units (GRU) that enhance the ability of SeqGAN to capture long-range dependencies in sequences, while attention mechanisms improve contextual awareness by selectively focusing on relevant parts of the sequence. Through extensive experiments, we analyze the influence of various neural network configurations and regulatory mechanisms, including gradient penalties and regularization on the quality of the generated text. Our findings show a 15% increase in BLEU scores, highlighting significant improvements in text coherence and diversity across various datasets, demonstrating the effectiveness of integrating SeqGAN with policy gradient methods for automated content generation. 2024 Final Year Project / Dissertation / Thesis NonPeerReviewed application/pdf http://eprints.utar.edu.my/6814/1/2200481_LIM_FANG_NIE.pdf Lim, Fang Nie (2024) Combination of generative artificial intelligence and deep reinforcement learning: performance comparison. Final Year Project, UTAR. http://eprints.utar.edu.my/6814/
spellingShingle QA75 Electronic computers. Computer science
QA76 Computer software
T Technology (General)
Lim, Fang Nie
Combination of generative artificial intelligence and deep reinforcement learning: performance comparison
title Combination of generative artificial intelligence and deep reinforcement learning: performance comparison
title_full Combination of generative artificial intelligence and deep reinforcement learning: performance comparison
title_fullStr Combination of generative artificial intelligence and deep reinforcement learning: performance comparison
title_full_unstemmed Combination of generative artificial intelligence and deep reinforcement learning: performance comparison
title_short Combination of generative artificial intelligence and deep reinforcement learning: performance comparison
title_sort combination of generative artificial intelligence and deep reinforcement learning: performance comparison
topic QA75 Electronic computers. Computer science
QA76 Computer software
T Technology (General)
url http://eprints.utar.edu.my/6814/
http://eprints.utar.edu.my/6814/1/2200481_LIM_FANG_NIE.pdf