Variational Deep Semantic Hashing for Text Documents
Suthee Chaidaroon, Yi Fang

TL;DR
This paper introduces novel deep generative models for text hashing that leverage variational inference and deep neural networks to produce compact, effective binary representations for large-scale text retrieval tasks.
Contribution
It presents a series of deep document generative models, including unsupervised and supervised variants, that improve text hashing by modeling complex data distributions with deep neural networks.
Findings
Supervised models outperform existing hashing methods.
Models effectively capture complex nonlinear representations.
Experimental results validate the proposed models' effectiveness.
Abstract
As the amount of textual data has been rapidly increasing over the past decade, efficient similarity search methods have become a crucial component of large-scale information retrieval systems. A popular strategy is to represent original data samples by compact binary codes through hashing. A spectrum of machine learning methods have been utilized, but they often lack expressiveness and flexibility in modeling to learn effective representations. The recent advances of deep learning in a wide range of applications has demonstrated its capability to learn robust and powerful feature representations for complex data. Especially, deep generative models naturally combine the expressiveness of probabilistic generative models with the high capacity of deep neural networks, which is very suitable for text modeling. However, little work has leveraged the recent progress in deep learning for text…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Generative Adversarial Networks and Image Synthesis · Multimodal Machine Learning Applications
