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portada Spectral Learning on Matrices and Tensors (Foundations and Trends (r) in Machine Learning)
Type
Physical Book
Year
2019
Language
English
Pages
156
Format
Paperback
ISBN13
9781680836400

Spectral Learning on Matrices and Tensors (Foundations and Trends (r) in Machine Learning)

Majid Janzamin; Rong Ge; Jean Kossaifi (Author) · Now Publishers Inc · Paperback

Spectral Learning on Matrices and Tensors (Foundations and Trends (r) in Machine Learning) - Majid Janzamin; Rong Ge; Jean Kossaifi

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£ 93.34

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Synopsis "Spectral Learning on Matrices and Tensors (Foundations and Trends (r) in Machine Learning)"

The authors of this monograph survey recent progress in using spectral methods including matrix and tensor decomposition techniques to learn many popular latent variable models. With careful implementation, tensor-based methods can run efficiently in practice, and in many cases they are the only algorithms with provable guarantees on running time and sample complexity. The focus is on a special type of tensor decomposition called CP decomposition, and the authors cover a wide range of algorithms to find the components of such tensor decomposition. They also discuss the usefulness of this decomposition by reviewing several probabilistic models that can be learned using such tensor methods. The second half of the monograph looks at practical applications. This includes using Tensorly, an efficient tensor algebra software package, which has a simple python interface for expressing tensor operations. It also has a flexible back-end system supporting NumPy, PyTorch, TensorFlow, and MXNet. Spectral Learning on Matrices and Tensors provides a theoretical and practical introduction to designing and deploying spectral learning on both matrices and tensors. It is of interest for all students, researchers and practitioners working on modern day machine learning problems.

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