IJCEET

Variational Autoencoders: A Deep Generative Model for Unsupervised Learning

© 2024 by IJCEET

Volume 2 Issue 1

Year of Publication : 2024

Author : AnNing, Mazida Ahmad, Huda lbrahim

DOI : 10.56472/25839217/IJCEET-V2I1P109

Citation :

AnNing, Mazida Ahmad, Huda lbrahim, 2024. "Variational Autoencoders: A Deep Generative Model for Unsupervised Learning" ESP International Journal of Communication Engineering & Electronics Technology (ESP- IJCEET)  Volume 2, Issue 1 : 55-60

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Abstract :

Variational Autoencoders (VAEs) have become a popular deep generative model for unsupervised learning. This paper aims to investigate the effectiveness of VAEs in learning latent representations and generating meaningful samples. By leveraging the recognition and generative models in VAEs, a variational lower bound on the data log-likelihood can be optimized through backpropagation. Through experiments on a variety of datasets, including MNIST and CIFAR-10, it is demonstrated that VAEs can capture complex latent structures and generate high-quality samples with diverse variations. Furthermore, the learned latent representations exhibit desirable properties such as disentangling factors of variation. In conclusion, VAEs have shown great promise as a deep generative model for unsupervised learning, offering a powerful tool for various applications in computer vision and natural language processing.

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Keywords :

Variational Autoencoders, Deep Generative Model, Unsupervised Learning.