This monograph is about neural network models that induce discrete latent structure, combining the strengths of both end-to-end and pipeline systems. In doing so, not one specific downstream application in natural language processing nor computer vision is assumed, however the presentation follows an abstract framework that allows to focus on technical aspects related to end-to-end learning with deep neural networks.
The text explores three broad strategies for learning with discrete latent structure: continuous relaxation, surrogate gradients, and probabilistic estimation. The presentation relies on consistent notations for a wide range of models. As such, many new connections between latent structure learning strategies are revealed, showing how most consist of the same small set of fundamental building blocks, but use them differently, leading to substantially different applicability and properties.
This monograph is about neural network models that induce discrete latent structure, combining the strengths of both end-to-end and pipeline systems. In doing so, not one specific downstream application in natural language processing nor computer vision is assumed, however the presentation follows an abstract framework that allows to focus on technical aspects related to end-to-end learning with deep neural networks.
The text explores three broad strategies for learning with discrete latent structure: continuous relaxation, surrogate gradients, and probabilistic estimation. The presentation relies on consistent notations for a wide range of models. As such, many new connections between latent structure learning strategies are revealed, showing how most consist of the same small set of fundamental building blocks, but use them differently, leading to substantially different applicability and properties.

Discrete Latent Structure in Neural Networks
126
Discrete Latent Structure in Neural Networks
126Paperback
Product Details
ISBN-13: | 9781638285700 |
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Publisher: | Now Publishers |
Publication date: | 06/02/2025 |
Series: | Foundations and Trends(r) in Engineering , #14 |
Pages: | 126 |
Product dimensions: | 6.14(w) x 9.21(h) x 0.27(d) |