A Poisson Process Model for Monte Carlo
A description of perturbation-based methods developed in machine learning to augment novel optimization methods with strong statistical guarantees. In nearly all machine learning, decisions must be made given current knowledge. Surprisingly, making what is believed to be the best decision is not alw...
Saved in:
Published in | Perturbations, Optimization, and Statistics |
---|---|
Format | Book Chapter |
Language | English |
Published |
United States
The MIT Press
23.12.2016
MIT Press |
Subjects | |
Online Access | Get full text |
ISBN | 9780262035644 0262035642 |
DOI | 10.7551/mitpress/10761.003.0008 |
Cover
Abstract | A description of perturbation-based methods developed in machine learning to augment novel optimization methods with strong statistical guarantees.
In nearly all machine learning, decisions must be made given current knowledge. Surprisingly, making what is believed to be the best decision is not always the best strategy, even when learning in a supervised learning setting. An emerging body of work on learning under different rules applies perturbations to decision and learning procedures. These methods provide simple and highly efficient learning rules with improved theoretical guarantees. This book describes perturbation-based methods developed in machine learning to augment novel optimization methods with strong statistical guarantees, offering readers a state-of-the-art overview.
Chapters address recent modeling ideas that have arisen within the perturbations framework, including Perturb & MAP, herding, and the use of neural networks to map generic noise to distribution over highly structured data. They describe new learning procedures for perturbation models, including an improved EM algorithm and a learning algorithm that aims to match moments of model samples to moments of data. They discuss understanding the relation of perturbation models to their traditional counterparts, with one chapter showing that the perturbations viewpoint can lead to new algorithms in the traditional setting. And they consider perturbation-based regularization in neural networks, offering a more complete understanding of dropout and studying perturbations in the context of deep neural networks. |
---|---|
AbstractList | A description of perturbation-based methods developed in machine learning to augment novel optimization methods with strong statistical guarantees.
In nearly all machine learning, decisions must be made given current knowledge. Surprisingly, making what is believed to be the best decision is not always the best strategy, even when learning in a supervised learning setting. An emerging body of work on learning under different rules applies perturbations to decision and learning procedures. These methods provide simple and highly efficient learning rules with improved theoretical guarantees. This book describes perturbation-based methods developed in machine learning to augment novel optimization methods with strong statistical guarantees, offering readers a state-of-the-art overview.
Chapters address recent modeling ideas that have arisen within the perturbations framework, including Perturb & MAP, herding, and the use of neural networks to map generic noise to distribution over highly structured data. They describe new learning procedures for perturbation models, including an improved EM algorithm and a learning algorithm that aims to match moments of model samples to moments of data. They discuss understanding the relation of perturbation models to their traditional counterparts, with one chapter showing that the perturbations viewpoint can lead to new algorithms in the traditional setting. And they consider perturbation-based regularization in neural networks, offering a more complete understanding of dropout and studying perturbations in the context of deep neural networks. |
BookMark | eNo1kMtOwzAQRY14CFr6DWTHqu3Y41eWVUUBqYguYG05tiMKIS52-H8cCovRzJXm3MWZkLM-9oGQGwoLJQRdfu6HQwo5LykoSRcAWAb0CZkAkwxR1chOyaxWesyAQnJ-QSYUKHLFtdKXZJbze2EYA6CSXpHbVbWL-5xjX-1SdKW8eoo-dFUbU7n6IVRrm7p4Tc5b2-Uw-9tT8rq5e1k_zLfP94_r1Xa-p1oPcylqj8yrBlAzy5rGOu-09zw4ba2wrQxWthwRQGrGVYNSMGzbwJ2TniucEjz2HlL8-g55MKGJ8cOFfki2c2_2MISUjailBC6NkIYBLxQcqWLIjP_ZUDCjM_PvzPw6M8WZGZ3hD8tFX3E |
ContentType | Book Chapter |
Copyright_xml | |
DBID | FFUUA |
DEWEY | 515/.392 |
DOI | 10.7551/mitpress/10761.003.0008 |
DatabaseName | ProQuest Ebook Central - Book Chapters - Demo use only |
DatabaseTitleList | |
DeliveryMethod | fulltext_linktorsrc |
Discipline | Computer Science Mathematics |
EISBN | 0262337932 9780262337939 |
Editor | Papandreou, George Tarlow, Daniel Hazan, Tamir |
Editor_xml | – sequence: 1 givenname: Tamir surname: Hazan fullname: Hazan, Tamir – sequence: 2 givenname: George surname: Papandreou fullname: Papandreou, George – sequence: 3 givenname: Daniel surname: Tarlow fullname: Tarlow, Daniel |
ExternalDocumentID | EBC5966046_56_204 10_7551_mitpress_10761_003_0008 |
GroupedDBID | -D2 38. 6IK AABBV AAOBU ABFEK ADMOD ADRHR AEGYG AGSFV ALMA_UNASSIGNED_HOLDINGS BBABE BEFXN BFFAM BGNUA BKEBE BPEOZ ECNEQ MICIX MIJRL OCL ABAZT AHWGJ FFUUA |
ID | FETCH-LOGICAL-i188t-659d32d7b0382a2bbacdc8dd4ec8aa5af6ea6f4330068247b36523ffe4cc6d473 |
ISBN | 9780262035644 0262035642 |
IngestDate | Mon Jun 16 02:47:26 EDT 2025 Tue Jun 18 19:44:54 EDT 2024 |
IsPeerReviewed | false |
IsScholarly | false |
LCCallNum | Q325.5$b.H393 2016 |
Language | English |
LinkModel | OpenURL |
MergedId | FETCHMERGED-LOGICAL-i188t-659d32d7b0382a2bbacdc8dd4ec8aa5af6ea6f4330068247b36523ffe4cc6d473 |
OCLC | 1013474878 |
PQID | EBC5966046_56_204 |
ParticipantIDs | proquest_ebookcentralchapters_5966046_56_204 mit_books_10_7551_mitpress_10761_003_0008 |
ProviderPackageCode | MIJRL |
PublicationCentury | 2000 |
PublicationDate | 20161223 2016 |
PublicationDateYYYYMMDD | 2016-12-23 2016-01-01 |
PublicationDate_xml | – month: 12 year: 2016 text: 20161223 day: 23 |
PublicationDecade | 2010 |
PublicationPlace | United States |
PublicationPlace_xml | – name: United States |
PublicationTitle | Perturbations, Optimization, and Statistics |
PublicationYear | 2016 |
Publisher | The MIT Press MIT Press |
Publisher_xml | – name: The MIT Press – name: MIT Press |
SSID | ssj0002200161 |
Score | 1.5336959 |
Snippet | A description of perturbation-based methods developed in machine learning to augment novel optimization methods with strong statistical guarantees.
In nearly... |
SourceID | proquest mit |
SourceType | Publisher |
SubjectTerms | Computer Science Machine learning Machine Learning & Neural Networks |
Title | A Poisson Process Model for Monte Carlo |
URI | http://dx.doi.org/10.7551/mitpress/10761.003.0008 http://ebookcentral.proquest.com/lib/SITE_ID/reader.action?docID=5966046&ppg=204&c=UERG |
hasFullText | 1 |
inHoldings | 1 |
isFullTextHit | |
isPrint | |
link | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwnV1La9tAEF5a51J6SJu01OmDPRRKSGRL-9LqaPrAFPo42OCb0D4EgcYGR7nk13dmJPnRmoJ7EUJi9Phmd2dndr4dxt7n0VZKizrRxoZERasTl0mfCI8pr6mEMRMD-t--m-lcfV3oxbb4KrFLGjfyDwd5Jf-jVbgGekWW7BGa3TwULsA56BeOoGE4_jH53Q-zdkU21mAuXBtxQ6R-QO-_7WiVm6RMXGmnrZh328bk6ucKAAfFdzwBKolGTEbs5E3EPJBfq92IQEZ1dFrS7qjnlMG4t5fD0bqL4G8JKaFHFocGzxwmT_DHtzcNpeCSS5-bbJTSJrCp3VqMTR4feBAoVfYyJUngfqO4qG0fsxOhjMSKGsknsQl9CUETzTbbDuXHvfx4_41g7-HOX1aSTP_sGXuKdBCOPA34pufsUVyesdO-GAbvxsZz9mHCO1B5ByonUDmAyglUTqC-YPMvn2cfp0lXhSK5yaxtEqOLIEXIXSqtqIRzlQ_ehqCit1Wlq9rEytRKSmTbCJU7acC5r-uovDdB5fIlGyxXy_iKcVkQc12FQglwFIuq1kWhoglSuiyNxZBdwv-W2KQQyn9iO2TXPSolrat3yby-heOu1LjvqjKlNqVI1cURj37Nnmyb1Rs2aNb38S1MvRr3jhT5G6lSKbM |
linkProvider | IEEE |
openUrl | ctx_ver=Z39.88-2004&ctx_enc=info%3Aofi%2Fenc%3AUTF-8&rfr_id=info%3Asid%2Fsummon.serialssolutions.com&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Abook&rft.genre=bookitem&rft.title=Perturbations%2C+Optimization%2C+and+Statistics&rft.atitle=A+Poisson+Process+Model+for+Monte+Carlo&rft.date=2016-12-23&rft.pub=The+MIT+Press&rft.isbn=9780262337939&rft_id=info:doi/10.7551%2Fmitpress%2F10761.003.0008&rft.externalDocID=10_7551_mitpress_10761_003_0008 |
thumbnail_s | http://utb.summon.serialssolutions.com/2.0.0/image/custom?url=https%3A%2F%2Febookcentral.proquest.com%2Fcovers%2F5966046-l.jpg |