000 02793cam a2200349 i 4500
001 21052111
003 OSt
005 20240702060711.0
008 190703s2020 maua b 001 0 eng
010 _a 2019028373
020 _a9780262043793
_q(hardcover)
020 _z9780262358064
_q(ebook)
040 _aDLC
_beng
_cDLC
_erda
_dDLC
042 _apcc
050 0 0 _aQ325.5
_b.A46 2020
082 0 0 _a006.31 A46 2020
_223
100 1 _aAlpaydin, Ethem,
_eauthor.
245 1 0 _aIntroduction to machine learning /
_cEthem Alpaydin.
250 _aFourth edition.
264 1 _aCambridge, Massachusetts :
_bThe MIT Press,
_c[2020]
300 _axxiv, 682 pages :
_billustrations ;
_c24 cm.
336 _atext
_btxt
_2rdacontent
337 _aunmediated
_bn
_2rdamedia
338 _avolume
_bnc
_2rdacarrier
490 0 _aAdaptive computation and machine learning series
504 _aIncludes bibliographical references and index.
520 _a"Since the third edition of this text appeared in 2014, most recent advances in machine learning, both in theory and application, are related to neural networks and deep learning. In this new edition, the author has extended the discussion of multilayer perceptrons. He has also added a new chapter on deep learning including training deep neural networks, regularizing them so they learn better, structuring them to improve learning, e.g., through convolutional layers, and their recurrent extensions with short-term memory necessary for learning sequences. There is a new section on generative adversarial networks that have found an impressive array of applications in recent years. Alpaydin has also extended the chapter on reinforcement learning to discuss the use of deep networks in reinforcement learning. There is a new section on the policy gradient method that has been used frequently in recent years with neural networks, and two additional sections on two examples of deep reinforcement learning, which both made headlines when they were announced in 2015 and 2016 respectively. One is a network that learns to play arcade video games, and the other one learns to play Go. There are also revisions in other chapters reflecting new approaches, such as embedding methods for dimensionality reduction, and multi-label classification. In response to requests from instructors, this new edition contains two new appendices on linear algebra and optimization, to remind the reader of the basics of those topics that find use in machine learning"--
_cProvided by publisher.
650 0 _aMachine learning.
906 _a7
_bcbc
_corignew
_d1
_eecip
_f20
_gy-gencatlg
942 _2ddc
_cBK-EN
_n0
999 _c7034
_d7034