Random Matrix Methods for Machine Learning - Romain Couillet,Zhenyu Liao
-20% with code BOOKS
Shipping in 22-28 days
30-day return policy
"Numerous and large dimensional data is now a default setting in modern machine learning (ML). Standard ML algorithms, starting with kernel methods such as support vector machines and graph-based methods like the PageRank algorithm, were however initially designed out of small dimensional intuitions and tend to misbehave, if not completely collapse, when dealing with real-world large datasets. Random matrix ... Full description
Description
"Numerous and large dimensional data is now a default setting in modern machine learning (ML). Standard ML algorithms, starting with kernel methods such as support vector machines and graph-based methods like the PageRank algorithm, were however initially designed out of small dimensional intuitions and tend to misbehave, if not completely collapse, when dealing with real-world large datasets. Random matrix theory has recently developed a broad spectrum of tools to help understand this new curse of dimensionality, to help repair or completely recreate the sub-optimal algorithms, and most importantly to provide new intuitions to deal with modern data mining"--
More Information
| Author | Romain Couillet, Zhenyu Liao |
|---|---|
| Publisher | Cambridge University Press |
| Release year | 2022 |
| Cover type | Hardcover |
| EAN | 9781009123235 |