Language:
English
繁體中文
Help
回圖書館首頁
手機版館藏查詢
Login
Back
Switch To:
Labeled
|
MARC Mode
|
ISBD
Alternating direction method of mult...
~
Lin, Zhouchen.
Linked to FindBook
Google Book
Amazon
博客來
Alternating direction method of multipliers for machine learning
Record Type:
Electronic resources : Monograph/item
Title/Author:
Alternating direction method of multipliers for machine learning/ by Zhouchen Lin, Huan Li, Cong Fang.
Author:
Lin, Zhouchen.
other author:
Li, Huan.
Published:
Singapore :Springer Nature Singapore : : 2022.,
Description:
xxiii, 263 p. :ill., digital ;24 cm.
[NT 15003449]:
Chapter 1. Introduction -- Chapter 2. Derivations of ADMM -- Chapter 3. ADMM for Deterministic and Convex Optimization -- Chapter 4. ADMM for Nonconvex Optimization -- Chapter 5. ADMM for Stochastic Optimization -- Chapter 6. ADMM for Distributed Optimization -- Chapter 7. Practical Issues and Conclusions.
Contained By:
Springer Nature eBook
Subject:
Machine learning - Mathematics. -
Online resource:
https://doi.org/10.1007/978-981-16-9840-8
ISBN:
9789811698408
Alternating direction method of multipliers for machine learning
Lin, Zhouchen.
Alternating direction method of multipliers for machine learning
[electronic resource] /by Zhouchen Lin, Huan Li, Cong Fang. - Singapore :Springer Nature Singapore :2022. - xxiii, 263 p. :ill., digital ;24 cm.
Chapter 1. Introduction -- Chapter 2. Derivations of ADMM -- Chapter 3. ADMM for Deterministic and Convex Optimization -- Chapter 4. ADMM for Nonconvex Optimization -- Chapter 5. ADMM for Stochastic Optimization -- Chapter 6. ADMM for Distributed Optimization -- Chapter 7. Practical Issues and Conclusions.
Machine learning heavily relies on optimization algorithms to solve its learning models. Constrained problems constitute a major type of optimization problem, and the alternating direction method of multipliers (ADMM) is a commonly used algorithm to solve constrained problems, especially linearly constrained ones. Written by experts in machine learning and optimization, this is the first book providing a state-of-the-art review on ADMM under various scenarios, including deterministic and convex optimization, nonconvex optimization, stochastic optimization, and distributed optimization. Offering a rich blend of ideas, theories and proofs, the book is up-to-date and self-contained. It is an excellent reference book for users who are seeking a relatively universal algorithm for constrained problems. Graduate students or researchers can read it to grasp the frontiers of ADMM in machine learning in a short period of time.
ISBN: 9789811698408
Standard No.: 10.1007/978-981-16-9840-8doiSubjects--Topical Terms:
3442737
Machine learning
--Mathematics.
LC Class. No.: Q325.5 / .L55 2022
Dewey Class. No.: 006.310151
Alternating direction method of multipliers for machine learning
LDR
:02297nmm a2200337 a 4500
001
2301803
003
DE-He213
005
20220615063526.0
006
m d
007
cr nn 008maaau
008
230409s2022 si s 0 eng d
020
$a
9789811698408
$q
(electronic bk.)
020
$a
9789811698392
$q
(paper)
024
7
$a
10.1007/978-981-16-9840-8
$2
doi
035
$a
978-981-16-9840-8
040
$a
GP
$c
GP
041
0
$a
eng
050
4
$a
Q325.5
$b
.L55 2022
072
7
$a
UYQM
$2
bicssc
072
7
$a
COM004000
$2
bisacsh
072
7
$a
UYQM
$2
thema
082
0 4
$a
006.310151
$2
23
090
$a
Q325.5
$b
.L735 2022
100
1
$a
Lin, Zhouchen.
$3
3453538
245
1 0
$a
Alternating direction method of multipliers for machine learning
$h
[electronic resource] /
$c
by Zhouchen Lin, Huan Li, Cong Fang.
260
$a
Singapore :
$b
Springer Nature Singapore :
$b
Imprint: Springer,
$c
2022.
300
$a
xxiii, 263 p. :
$b
ill., digital ;
$c
24 cm.
338
$a
online resource
$b
cr
$2
rdacarrier
505
0
$a
Chapter 1. Introduction -- Chapter 2. Derivations of ADMM -- Chapter 3. ADMM for Deterministic and Convex Optimization -- Chapter 4. ADMM for Nonconvex Optimization -- Chapter 5. ADMM for Stochastic Optimization -- Chapter 6. ADMM for Distributed Optimization -- Chapter 7. Practical Issues and Conclusions.
520
$a
Machine learning heavily relies on optimization algorithms to solve its learning models. Constrained problems constitute a major type of optimization problem, and the alternating direction method of multipliers (ADMM) is a commonly used algorithm to solve constrained problems, especially linearly constrained ones. Written by experts in machine learning and optimization, this is the first book providing a state-of-the-art review on ADMM under various scenarios, including deterministic and convex optimization, nonconvex optimization, stochastic optimization, and distributed optimization. Offering a rich blend of ideas, theories and proofs, the book is up-to-date and self-contained. It is an excellent reference book for users who are seeking a relatively universal algorithm for constrained problems. Graduate students or researchers can read it to grasp the frontiers of ADMM in machine learning in a short period of time.
650
0
$a
Machine learning
$x
Mathematics.
$3
3442737
650
0
$a
Computer algorithms.
$3
523872
650
1 4
$a
Machine Learning.
$3
3382522
650
2 4
$a
Optimization.
$3
891104
650
2 4
$a
Mathematical Applications in Computer Science.
$3
1567978
650
2 4
$a
Computational Mathematics and Numerical Analysis.
$3
891040
700
1
$a
Li, Huan.
$3
3172172
700
1
$a
Fang, Cong.
$3
3524307
710
2
$a
SpringerLink (Online service)
$3
836513
773
0
$t
Springer Nature eBook
856
4 0
$u
https://doi.org/10.1007/978-981-16-9840-8
950
$a
Computer Science (SpringerNature-11645)
based on 0 review(s)
Location:
ALL
電子資源
Year:
Volume Number:
Items
1 records • Pages 1 •
1
Inventory Number
Location Name
Item Class
Material type
Call number
Usage Class
Loan Status
No. of reservations
Opac note
Attachments
W9443352
電子資源
11.線上閱覽_V
電子書
EB Q325.5 .L55 2022
一般使用(Normal)
On shelf
0
1 records • Pages 1 •
1
Multimedia
Reviews
Add a review
and share your thoughts with other readers
Export
pickup library
Processing
...
Change password
Login