skip to content
Information theory, inference, and learning algorithms Preview this item
ClosePreview this item
Checking...

Information theory, inference, and learning algorithms

Author: David J C MacKay
Publisher: Cambridge, UK ; New York : Cambridge University Press, 2003.
Edition/Format:   Print book : EnglishView all editions and formats
Summary:
"This textbook introduces theory in tandem with applications. Information theory is taught alongside practical communication systems, such as arithmetic coding for data compression and sparse-graph codes for error-correction. A toolbox of inference techniques, including message-passing algorithms, Monte Carlo methods, and variational approximations, are developed alongside applications of these tools to clustering,  Read more...
Rating:

(not yet rated) 0 with reviews - Be the first.

Subjects
More like this

Find a copy online

Links to this item

Find a copy in the library

&AllPage.SpinnerRetrieving; Finding libraries that hold this item...

Details

Material Type: Internet resource
Document Type: Book, Internet Resource
All Authors / Contributors: David J C MacKay
ISBN: 0521642981 9780521642989 0521644445 9780521644440
OCLC Number: 52377690
Description: xii, 628 pages : illustrations ; 26 cm
Contents: 1. Introduction to information theory --
2. Probability, entropy, and inference --
3. More about inference --
Part I. Data compression. 4. The source coding theorem --
5. Symbol codes --
6. Stream codes --
7. Codes for integers --
Part II. Noisy-channel coding. 8. Correlated random variables --
9. Communication over a noisy channel --
10. The noisy-channel coding theorem --
11. Error-correcting codes and real channels --
Part III. Further topics in information theory. 12. Hash codes: codes for efficient information retrieval --
13. Binary codes --
14. Very good linear codes exist --
15. Further exercises on information theory --
16. Message passing --
17. Communication over constrained noiseless channels --
18. An aside: crosswords and codebreaking --
19. Why have sex? Information acquisition and evolution --
Part IV. Probabilities and inference. 20. An example inference task: clustering --
21. Exact inference by complete enumeration --
22. Maximum likelihood and clustering --
23. Useful probability distributions --
24. Exact marginalization --
25. Exact marginalization in trellises --
26. Exact marginalization in graphs --
27. Laplace's method --
28. Model comparison and Occam's razor --
29. Monte Carlo methods --
30. Efficient Monte Carlo methods --
31. Ising models --
32. Exact Monte Carlo sampling --
33. Variational methods --
34. Independent component analysis and latent variable modelling --
35. Random inference topics --
36. Decision theory --
37. Bayesian inference and sampling theory --
Part V. Neural networks. 38. Introduction to neural networks --
39. The single neuron as a classifier --
40. Capacity of a single neuron --
41. Learning as inference --
42. Hopfield networks --
43. Boltzmann machines --
44. Supervised learning in multilayer networks --
45. Gaussian processes --
46. Deconvolution --
Part VI. Sparse graph codes. 47. Low-density parity-check codes --
48. Convolutional codes and turbo codes --
49. Repeat-accumulate codes --
50. Digital fountain codes --
Part VII. Appendices. A. Notation --
B. Some physics --
C. Some mathematics.
Responsibility: David J.C. MacKay.
More information:

Abstract:

This exciting and entertaining textbook is ideal for courses in information, communication and coding. It is an unparalleled entry point to these subjects for professionals working in areas as  Read more...

Reviews

Editorial reviews

Publisher Synopsis

'This is an extraordinary and important book, generous with insight and rich with detail in statistics, information theory, and probabilistic modeling across a wide swathe of standard, creatively Read more...

 
User-contributed reviews
Retrieving GoodReads reviews...
Retrieving DOGObooks reviews...

Tags

All user tags (1)

View most popular tags as: tag list | tag cloud

Confirm this request

You may have already requested this item. Please select Ok if you would like to proceed with this request anyway.

Linked Data


Primary Entity

<http://www.worldcat.org/oclc/52377690> # Information theory, inference, and learning algorithms
    a schema:CreativeWork, schema:Book ;
    library:oclcnum "52377690" ;
    library:placeOfPublication <http://experiment.worldcat.org/entity/work/data/9814455#Place/cambridge_uk> ; # Cambridge, UK
    library:placeOfPublication <http://id.loc.gov/vocabulary/countries/enk> ;
    library:placeOfPublication <http://dbpedia.org/resource/New_York_City> ; # New York
    schema:about <http://experiment.worldcat.org/entity/work/data/9814455#Topic/informationstheorie> ; # Informationstheorie
    schema:about <http://experiment.worldcat.org/entity/work/data/9814455#Topic/information_theorie_de_l> ; # Information, Théorie de l'
    schema:about <http://experiment.worldcat.org/entity/work/data/9814455#Topic/algoritmen> ; # Algoritmen
    schema:about <http://experiment.worldcat.org/entity/work/data/9814455#Topic/maschinelles_lernen> ; # Maschinelles Lernen
    schema:about <http://experiment.worldcat.org/entity/work/data/9814455#Topic/statistische_analyse> ; # Statistische analyse
    schema:about <http://experiment.worldcat.org/entity/work/data/9814455#Topic/informatietheorie> ; # Informatietheorie
    schema:about <http://experiment.worldcat.org/entity/work/data/9814455#Topic/aprendizado_computacional> ; # Aprendizado computacional
    schema:about <http://experiment.worldcat.org/entity/work/data/9814455#Topic/toepassingen> ; # Toepassingen
    schema:about <http://experiment.worldcat.org/entity/work/data/9814455#Topic/inferenz> ; # Inferenz
    schema:about <http://dewey.info/class/003.54/e21/> ;
    schema:about <http://experiment.worldcat.org/entity/work/data/9814455#Topic/information_theory> ; # Information theory
    schema:about <http://experiment.worldcat.org/entity/work/data/9814455#Topic/teoria_da_informacao> ; # Teoria da informação
    schema:bookFormat bgn:PrintBook ;
    schema:creator <http://viaf.org/viaf/72445077> ; # David J. C. MacKay
    schema:datePublished "2003" ;
    schema:description "1. Introduction to information theory -- 2. Probability, entropy, and inference -- 3. More about inference -- Part I. Data compression. 4. The source coding theorem -- 5. Symbol codes -- 6. Stream codes -- 7. Codes for integers -- Part II. Noisy-channel coding. 8. Correlated random variables -- 9. Communication over a noisy channel -- 10. The noisy-channel coding theorem -- 11. Error-correcting codes and real channels -- Part III. Further topics in information theory. 12. Hash codes: codes for efficient information retrieval -- 13. Binary codes -- 14. Very good linear codes exist -- 15. Further exercises on information theory -- 16. Message passing -- 17. Communication over constrained noiseless channels -- 18. An aside: crosswords and codebreaking -- 19. Why have sex? Information acquisition and evolution -- Part IV. Probabilities and inference. 20. An example inference task: clustering -- 21. Exact inference by complete enumeration -- 22. Maximum likelihood and clustering -- 23. Useful probability distributions -- 24. Exact marginalization -- 25. Exact marginalization in trellises -- 26. Exact marginalization in graphs -- 27. Laplace's method -- 28. Model comparison and Occam's razor -- 29. Monte Carlo methods -- 30. Efficient Monte Carlo methods -- 31. Ising models -- 32. Exact Monte Carlo sampling -- 33. Variational methods -- 34. Independent component analysis and latent variable modelling -- 35. Random inference topics -- 36. Decision theory -- 37. Bayesian inference and sampling theory -- Part V. Neural networks. 38. Introduction to neural networks -- 39. The single neuron as a classifier -- 40. Capacity of a single neuron -- 41. Learning as inference -- 42. Hopfield networks -- 43. Boltzmann machines -- 44. Supervised learning in multilayer networks -- 45. Gaussian processes -- 46. Deconvolution -- Part VI. Sparse graph codes. 47. Low-density parity-check codes -- 48. Convolutional codes and turbo codes -- 49. Repeat-accumulate codes -- 50. Digital fountain codes -- Part VII. Appendices. A. Notation -- B. Some physics -- C. Some mathematics."@en ;
    schema:exampleOfWork <http://worldcat.org/entity/work/id/9814455> ;
    schema:inLanguage "en" ;
    schema:name "Information theory, inference, and learning algorithms"@en ;
    schema:productID "52377690" ;
    schema:publication <http://www.worldcat.org/title/-/oclc/52377690#PublicationEvent/cambridge_uk_new_york_cambridge_university_press_2003> ;
    schema:publisher <http://experiment.worldcat.org/entity/work/data/9814455#Agent/cambridge_university_press> ; # Cambridge University Press
    schema:reviews <http://www.worldcat.org/title/-/oclc/52377690#Review/-2012009595> ;
    schema:url <http://www.inference.phy.cam.ac.uk/mackay/itila/book.html> ;
    schema:url <http://catdir.loc.gov/catdir/toc/cam031/2003055133.html> ;
    schema:workExample <http://worldcat.org/isbn/9780521642989> ;
    schema:workExample <http://worldcat.org/isbn/9780521644440> ;
    umbel:isLike <http://bnb.data.bl.uk/id/resource/GBA371762> ;
    umbel:isLike <http://bnb.data.bl.uk/id/resource/GBA3V4513> ;
    wdrs:describedby <http://www.worldcat.org/title/-/oclc/52377690> ;
    .


Related Entities

<http://dbpedia.org/resource/New_York_City> # New York
    a schema:Place ;
    schema:name "New York" ;
    .

<http://experiment.worldcat.org/entity/work/data/9814455#Agent/cambridge_university_press> # Cambridge University Press
    a bgn:Agent ;
    schema:name "Cambridge University Press" ;
    .

<http://experiment.worldcat.org/entity/work/data/9814455#Place/cambridge_uk> # Cambridge, UK
    a schema:Place ;
    schema:name "Cambridge, UK" ;
    .

<http://experiment.worldcat.org/entity/work/data/9814455#Topic/aprendizado_computacional> # Aprendizado computacional
    a schema:Intangible ;
    schema:name "Aprendizado computacional"@en ;
    .

<http://experiment.worldcat.org/entity/work/data/9814455#Topic/informatietheorie> # Informatietheorie
    a schema:Intangible ;
    schema:name "Informatietheorie"@en ;
    .

<http://experiment.worldcat.org/entity/work/data/9814455#Topic/information_theorie_de_l> # Information, Théorie de l'
    a schema:Intangible ;
    schema:name "Information, Théorie de l'"@fr ;
    .

<http://experiment.worldcat.org/entity/work/data/9814455#Topic/information_theory> # Information theory
    a schema:Intangible ;
    schema:name "Information theory"@en ;
    schema:name "Information Theory"@en ;
    .

<http://experiment.worldcat.org/entity/work/data/9814455#Topic/informationstheorie> # Informationstheorie
    a schema:Intangible ;
    schema:name "Informationstheorie"@en ;
    .

<http://experiment.worldcat.org/entity/work/data/9814455#Topic/maschinelles_lernen> # Maschinelles Lernen
    a schema:Intangible ;
    schema:name "Maschinelles Lernen"@en ;
    .

<http://experiment.worldcat.org/entity/work/data/9814455#Topic/statistische_analyse> # Statistische analyse
    a schema:Intangible ;
    schema:name "Statistische analyse"@en ;
    .

<http://experiment.worldcat.org/entity/work/data/9814455#Topic/teoria_da_informacao> # Teoria da informação
    a schema:Intangible ;
    schema:name "Teoria da informação"@en ;
    .

<http://viaf.org/viaf/72445077> # David J. C. MacKay
    a schema:Person ;
    schema:familyName "MacKay" ;
    schema:givenName "David J. C." ;
    schema:name "David J. C. MacKay" ;
    .

<http://worldcat.org/isbn/9780521642989>
    a schema:ProductModel ;
    schema:isbn "0521642981" ;
    schema:isbn "9780521642989" ;
    .

<http://worldcat.org/isbn/9780521644440>
    a schema:ProductModel ;
    schema:isbn "0521644445" ;
    schema:isbn "9780521644440" ;
    .

<http://www.worldcat.org/title/-/oclc/52377690#Review/-2012009595>
    a schema:Review ;
    schema:itemReviewed <http://www.worldcat.org/oclc/52377690> ; # Information theory, inference, and learning algorithms
    schema:reviewBody ""This textbook introduces theory in tandem with applications. Information theory is taught alongside practical communication systems, such as arithmetic coding for data compression and sparse-graph codes for error-correction. A toolbox of inference techniques, including message-passing algorithms, Monte Carlo methods, and variational approximations, are developed alongside applications of these tools to clustering, convolutional codes, independent component analysis, and neural networks."--Jacket." ;
    .


Content-negotiable representations

Close Window

Please sign in to WorldCat 

Don't have an account? You can easily create a free account.