Articoli correlati a Advances in Independent Component Analysis

Advances in Independent Component Analysis - Brossura

 
9781852332631: Advances in Independent Component Analysis

Sinossi

Independent Component Analysis (ICA) is a fast developing area of intense research interest. Following on from Self-Organising Neural Networks: Independent Component Analysis and Blind Signal Separation, this book reviews the significant developments of the past year.
It covers topics such as the use of hidden Markov methods, the independence assumption, and topographic ICA, and includes tutorial chapters on Bayesian and variational approaches. It also provides the latest approaches to ICA problems, including an investigation into certain "hard problems" for the very first time.
Comprising contributions from the most respected and innovative researchers in the field, this volume will be of interest to students and researchers in computer science and electrical engineering; research and development personnel in disciplines such as statistical modelling and data analysis; bio-informatic workers; and physicists and chemists requiring novel data analysis methods.

Le informazioni nella sezione "Riassunto" possono far riferimento a edizioni diverse di questo titolo.

Contenuti

I Temporal ICA Models.- 1 Hidden Markov Independent Component Analysis.- 1.1 Introduction.- 1.2 Hidden Markov Models.- 1.3 Independent Component Analysis.- 1.3.1 Generalised Exponential Sources.- 1.3.2 Generalised Autoregressive Sources.- 1.4 Hidden Markov ICA.- 1.4.1 Generalised Exponential Sources.- 1.4.2 Generalised Autoregressive Sources.- 1.5 Practical Issues.- 1.5.1 Initialisation.- 1.5.2 Learning.- 1.5.3 Model Order Selection.- 1.6 Results.- 1.6.1 Multiple Sinewave Sources.- 1.6.2 Same Sources, Different Mixing.- 1.6.3 Same Mixing, Different Sources.- 1.6.4 EEG Data.- 1.7 Conclusion.- 1.8 Acknowledgements.- 1.9 Appendix.- 2 Particle Filters for Non-Stationary ICA.- 2.1 Introduction.- 2.2 Stationary ICA.- 2.3 Non-Stationary Independent Component Analysis.- 2.3.1 Source Model.- 2.4 Particle Filters.- 2.4.1 Source Recovery.- 2.5 Illustration of Non-Stationary ICA.- 2.6 Smoothing.- 2.7 Temporal Correlations.- 2.8 Conclusion.- 2.8.1 Acknowledgement.- 2.9 Appendix: Laplace’s Approximation for the Likelihood.- II The Validity of the Independence Assumption.- 3 The Independence Assumption: Analyzing the Independence of the Components by Topography.- 3.1 Introduction.- 3.2 Background: Independent Subspace Analysis.- 3.3 Topographic ICA Model.- 3.3.1 Dependence and Topography.- 3.3.2 Defining Topographic ICA.- 3.3.3 The Generative Model.- 3.3.4 Basic Properties of the Topographic ICA Model.- 3.4 Learning Rule.- 3.5 Comparison with Other Topographic Mappings.- 3.6 Experiments.- 3.6.1 Experiments in Feature Extraction of Image Data.- 3.6.2 Experiments in Feature Extraction of Audio Data.- 3.6.3 Experiments with Magnetoencephalographic Recordings.- 3.7 Conclusion.- 4 The Independence Assumption: Dependent Component Analysis.- 4.1 Introduction.- 4.2 Blind Source Separation by DCA.- 4.3 The “Cyclone” Algorithm.- 4.4 Experimental Results.- 4.5 Higher-Order Cyclostationary Signal Separation.- 4.6 Conclusion.- 4.7 Appendix: Proof of ACF Property 3.- III Ensemble Learning and Applications.- 5 Ensemble Learning.- 5.1 Introduction.- 5.2 Posterior Averages in Action.- 5.3 Approximations of Posterior PDF.- 5.4 Ensemble Learning.- 5.4.1 Model Selection in Ensemble Learning.- 5.4.2 Connection to Coding.- 5.4.3 EM and MAP.- 5.5 Construction of Probabilistic Models.- 5.5.1 Priors and Hyperpriors.- 5.6 Examples.- 5.6.1 Fixed Form Q.- 5.6.2 Free Form Q.- 5.7 Conclusion.- References.- 6 Bayesian Non-Linear Independent Component Analysis by Multi-Layer Perceptrons.- 6.1 Introduction.- 6.2 Choosing Among Competing Explanations.- 6.3 Non-Linear Factor Analysis.- 6.3.1 Definition of the Model.- 6.3.2 Cost Function.- 6.3.3 Update Rules.- 6.4 Non-Linear Independent Factor Analysis.- 6.5 Experiments.- 6.5.1 Learning Scheme.- 6.5.2 Helix.- 6.5.3 Non-Linear Artificial Data.- 6.5.4 Process Data.- 6.6 Comparison with Existing Methods.- 6.6.1 SOM and GTM.- 6.6.2 Auto-Associative MLPs.- 6.6.3 Generative Learning with MLPs.- 6.7 Conclusion.- 6.7.1 Validity of the Approximations.- 6.7.2 Initial Inversion by Auxiliary MLP.- 6.7.3 Future Directions.- 6.8 Acknowledgements.- 7 Ensemble Learning for Blind Image Separation and Deconvolution.- 7.1 Introduction.- 7.2 Separation of Images.- 7.2.1 Learning the Ensemble.- 7.2.2 Learning the Model.- 7.2.3 Example.- 7.2.4 Parts-Based Image Decomposition.- 7.3 Deconvolution of Images.- 7.4 Conclusion.- 7.5 Acknowledgements.- References.- IV Data Analysis and Applications.- 8 Multi-Class Independent Component Analysis (MUCICA) for Rank-Deficient Distributions.- 8.1 Introduction.- 8.2 The Rank-Deficient One Class Problem.- 8.2.1 Method I: Three Blocks.- 8.2.2 Method II: Two Blocks.- 8.2.3 Method III: One Block.- 8.3 The Rank-Deficient Multi-Class Problem.- 8.4 Simulations.- 8.5 Conclusion.- References.- 9 Blind Separation of Noisy Image Mixtures.- 9.1 Introduction.- 9.2 The Likelihood.- 9.3 Estimation of Sources for the Case of Known Parameters.- 9.4 Joint Estimation of Sources, Mixing Matrix, and Noise Level.- 9.5 Simulation Example.- 9.6 Generalization and the Bias-Variance Dilemma.- 9.7 Application to Neuroimaging.- 9.8 Conclusion.- 9.9 Acknowledgments.- 9.10 Appendix: The Generalized Boltzmann Learning Rule.- 10 Searching for Independence in Electromagnetic Brain Waves.- 10.1 Introduction.- 10.2 Independent Component Analysis.- 10.2.1 The Model.- 10.2.2 The FastICA Algorithm.- 10.3 Electro- and Magnetoencephalography.- 10.4 On the Validity of the Linear ICA Model.- 10.5 The Analysis of EEG and MEG Data.- 10.5.1 Artifact Identification and Removal from EEG/MEG.- 10.5.2 Analysis of Multimodal Evoked Fields.- 10.5.3 Segmenting Auditory Evoked Fields.- 10.6 Conclusion.- 11 ICA on Noisy Data: A Factor Analysis Approach.- 11.1 Introduction.- 11.2 Factor Analysis and ICA.- 11.2.1 Factor Analysis.- 11.2.2 Factor Analysis in Preprocessing.- 11.2.3 ICA as Determining the Rotation Matrix.- 11.3 Experiment with Synthesized Data.- 11.4 MEG Data Analysis.- 11.4.1 Experiment with Phantom Data.- 11.4.2 Experiment with Real Brain Data.- 11.5 Conclusion.- 11.6 Acknowledgements.- 12 Analysis of Optical Imaging Data Using Weak Models and ICA.- 12.1 Introduction.- 12.2 Linear Component Analysis.- 12.3 Singular Value Decomposition.- 12.3.1 SVD Applied to OI Data Set.- 12.4 Independent Component Analysis.- 12.4.1 Minimisation Routines.- 12.4.2 Application of sICA to OI Data.- 12.5 The Weak Causal Model.- 12.5.1 Weak Causal Model Applied to the OI Data Set.- 12.5.2 Some Remarks on Significance Testing.- 12.6 The Weak Periodic Model.- 12.7 Regularised Weak Models.- 12.8 Regularised Weak Causal Model Applied to OI Data.- 12.9 Image Goodness and Multiple Models.- 12.10 A Last Look at the OI Data Set.- 12.11 Conclusion.- References.- 13 Independent Components in Text.- 13.1 Introduction.- 13.1.1 Vector Space Representations.- 13.1.2 Latent Semantic Indexing.- 13.2 Independent Component Analysis.- 13.2.1 Noisy Separation of Linear Mixtures.- 13.2.2 Learning ICA Text Representations on the LSI Space.- 13.2.3 Document Classification Based on Independent Components.- 13.2.4 Keywords from Context Vectors.- 13.2.5 Generalisation and the Bias-Variance Dilemma.- 13.3 Examples.- 13.3.1 MED Data Set.- 13.3.2 CRAN Data Set.- 13.4 Conclusion.- 14 Seeking Independence Using Biologically-Inspired ANN’s.- 14.1 Introduction.- 14.2 The Negative Feedback Network.- 14.3 Independence in Unions of Sources.- 14.3.1 Factor Analysis.- 14.3.2 Minimal Overcomplete Bases.- 14.4 Canonical Correlation Analysis.- 14.4.1 Extracting Multiple Correlations.- 14.4.2 Using Minimum Correlations to Extract Independent Sources.- 14.4.3 Experiments.- 14.5 ?-Insensitive Hebbian Learning.- 14.5.1 Is this a Hebbian Rule?.- 14.5.2 Extraction of Sinusoids.- 14.5.3 Noise Reduction.- 14.6 Conclusion.- References.

Product Description

Book by Sutherland Stuart Davidmann Simon Flake Peter

Le informazioni nella sezione "Su questo libro" possono far riferimento a edizioni diverse di questo titolo.

Compra usato

Condizioni: come nuovo
Like New
Visualizza questo articolo

EUR 28,80 per la spedizione da Regno Unito a U.S.A.

Destinazione, tempi e costi

EUR 48,99 per la spedizione da Germania a U.S.A.

Destinazione, tempi e costi

Altre edizioni note dello stesso titolo

9781447104445: Advances in Independent Component Analysis

Edizione in evidenza

ISBN 10:  1447104447 ISBN 13:  9781447104445
Casa editrice: Springer, 2011
Brossura

Risultati della ricerca per Advances in Independent Component Analysis

Immagini fornite dal venditore

Girolami, M.
Editore: Springer London, 2000
ISBN 10: 1852332638 ISBN 13: 9781852332631
Nuovo Brossura

Da: moluna, Greven, Germania

Valutazione del venditore 5 su 5 stelle 5 stelle, Maggiori informazioni sulle valutazioni dei venditori

Condizione: New. A state-of-the-art overview with contributions from the most respected and innovative researchers in the fieldContains significantly more advanced, novel and up-to-date theory than any other volume availableIndependent Component Analysis (ICA) is a . Codice articolo 4289449

Contatta il venditore

Compra nuovo

EUR 18,13
Convertire valuta
Spese di spedizione: EUR 48,99
Da: Germania a: U.S.A.
Destinazione, tempi e costi

Quantità: 1 disponibili

Aggiungi al carrello

Foto dell'editore

Girolami, Mark
Editore: Springer, 2000
ISBN 10: 1852332638 ISBN 13: 9781852332631
Nuovo Brossura

Da: Best Price, Torrance, CA, U.S.A.

Valutazione del venditore 5 su 5 stelle 5 stelle, Maggiori informazioni sulle valutazioni dei venditori

Condizione: New. SUPER FAST SHIPPING. Codice articolo 9781852332631

Contatta il venditore

Compra nuovo

EUR 174,59
Convertire valuta
Spese di spedizione: EUR 6,81
In U.S.A.
Destinazione, tempi e costi

Quantità: 1 disponibili

Aggiungi al carrello

Immagini fornite dal venditore

Mark Girolami
ISBN 10: 1852332638 ISBN 13: 9781852332631
Nuovo Taschenbuch

Da: AHA-BUCH GmbH, Einbeck, Germania

Valutazione del venditore 5 su 5 stelle 5 stelle, Maggiori informazioni sulle valutazioni dei venditori

Taschenbuch. Condizione: Neu. Neuware - Independent Component Analysis (ICA) is a fast developing area of intense research interest. Following on from Self-Organising Neural Networks: Independent Component Analysis and Blind Signal Separation, this book reviews the significant developments of the past year.It covers topics such as the use of hidden Markov methods, the independence assumption, and topographic ICA, and includes tutorial chapters on Bayesian and variational approaches. It also provides the latest approaches to ICA problems, including an investigation into certain 'hard problems' for the very first time.Comprising contributions from the most respected and innovative researchers in the field, this volume will be of interest to students and researchers in computer science and electrical engineering; research and development personnel in disciplines such as statistical modelling and data analysis; bio-informatic workers; and physicists and chemists requiring novel data analysis methods. Codice articolo 9781852332631

Contatta il venditore

Compra nuovo

EUR 119,93
Convertire valuta
Spese di spedizione: EUR 62,29
Da: Germania a: U.S.A.
Destinazione, tempi e costi

Quantità: 1 disponibili

Aggiungi al carrello

Foto dell'editore

Girolami, Mark
Editore: Springer, 2000
ISBN 10: 1852332638 ISBN 13: 9781852332631
Nuovo Brossura

Da: Lucky's Textbooks, Dallas, TX, U.S.A.

Valutazione del venditore 5 su 5 stelle 5 stelle, Maggiori informazioni sulle valutazioni dei venditori

Condizione: New. Codice articolo ABLIING23Mar2912160256544

Contatta il venditore

Compra nuovo

EUR 184,26
Convertire valuta
Spese di spedizione: EUR 3,41
In U.S.A.
Destinazione, tempi e costi

Quantità: Più di 20 disponibili

Aggiungi al carrello

Foto dell'editore

Girolami, Mark
Editore: Springer, 2000
ISBN 10: 1852332638 ISBN 13: 9781852332631
Nuovo Brossura

Da: Ria Christie Collections, Uxbridge, Regno Unito

Valutazione del venditore 5 su 5 stelle 5 stelle, Maggiori informazioni sulle valutazioni dei venditori

Condizione: New. In. Codice articolo ria9781852332631_new

Contatta il venditore

Compra nuovo

EUR 202,20
Convertire valuta
Spese di spedizione: EUR 13,80
Da: Regno Unito a: U.S.A.
Destinazione, tempi e costi

Quantità: Più di 20 disponibili

Aggiungi al carrello

Immagini fornite dal venditore

Mark Girolami
Editore: Springer London Jul 2000, 2000
ISBN 10: 1852332638 ISBN 13: 9781852332631
Nuovo Taschenbuch
Print on Demand

Da: BuchWeltWeit Ludwig Meier e.K., Bergisch Gladbach, Germania

Valutazione del venditore 5 su 5 stelle 5 stelle, Maggiori informazioni sulle valutazioni dei venditori

Taschenbuch. Condizione: Neu. This item is printed on demand - it takes 3-4 days longer - Neuware -Independent Component Analysis (ICA) is a fast developing area of intense research interest. Following on from Self-Organising Neural Networks: Independent Component Analysis and Blind Signal Separation, this book reviews the significant developments of the past year.It covers topics such as the use of hidden Markov methods, the independence assumption, and topographic ICA, and includes tutorial chapters on Bayesian and variational approaches. It also provides the latest approaches to ICA problems, including an investigation into certain 'hard problems' for the very first time.Comprising contributions from the most respected and innovative researchers in the field, this volume will be of interest to students and researchers in computer science and electrical engineering; research and development personnel in disciplines such as statistical modelling and data analysis; bio-informatic workers; and physicists and chemists requiring novel data analysis methods. 300 pp. Englisch. Codice articolo 9781852332631

Contatta il venditore

Compra nuovo

EUR 203,25
Convertire valuta
Spese di spedizione: EUR 23,00
Da: Germania a: U.S.A.
Destinazione, tempi e costi

Quantità: 2 disponibili

Aggiungi al carrello

Immagini fornite dal venditore

Mark Girolami
ISBN 10: 1852332638 ISBN 13: 9781852332631
Nuovo Taschenbuch
Print on Demand

Da: buchversandmimpf2000, Emtmannsberg, BAYE, Germania

Valutazione del venditore 5 su 5 stelle 5 stelle, Maggiori informazioni sulle valutazioni dei venditori

Taschenbuch. Condizione: Neu. This item is printed on demand - Print on Demand Titel. Neuware -Independent Component Analysis (ICA) is a fast developing area of intense research interest. Following on from Self-Organising Neural Networks: Independent Component Analysis and Blind Signal Separation, this book reviews the significant developments of the past year.It covers topics such as the use of hidden Markov methods, the independence assumption, and topographic ICA, and includes tutorial chapters on Bayesian and variational approaches. It also provides the latest approaches to ICA problems, including an investigation into certain 'hard problems' for the very first time.Comprising contributions from the most respected and innovative researchers in the field, this volume will be of interest to students and researchers in computer science and electrical engineering; research and development personnel in disciplines such as statistical modelling and data analysis; bio-informatic workers; and physicists and chemists requiring novel data analysis methods.Springer Verlag GmbH, Tiergartenstr. 17, 69121 Heidelberg 300 pp. Englisch. Codice articolo 9781852332631

Contatta il venditore

Compra nuovo

EUR 192,59
Convertire valuta
Spese di spedizione: EUR 60,00
Da: Germania a: U.S.A.
Destinazione, tempi e costi

Quantità: 1 disponibili

Aggiungi al carrello

Immagini fornite dal venditore

Mark Girolami
Editore: Springer London Ltd, GB, 2000
ISBN 10: 1852332638 ISBN 13: 9781852332631
Nuovo Paperback

Da: Rarewaves.com USA, London, LONDO, Regno Unito

Valutazione del venditore 5 su 5 stelle 5 stelle, Maggiori informazioni sulle valutazioni dei venditori

Paperback. Condizione: New. 2000 ed. Independent Component Analysis (ICA) is a fast developing area of intense research interest. Following on from Self-Organising Neural Networks: Independent Component Analysis and Blind Signal Separation, this book reviews the significant developments of the past year.It covers topics such as the use of hidden Markov methods, the independence assumption, and topographic ICA, and includes tutorial chapters on Bayesian and variational approaches. It also provides the latest approaches to ICA problems, including an investigation into certain "hard problems" for the very first time.Comprising contributions from the most respected and innovative researchers in the field, this volume will be of interest to students and researchers in computer science and electrical engineering; research and development personnel in disciplines such as statistical modelling and data analysis; bio-informatic workers; and physicists and chemists requiring novel data analysis methods. Codice articolo LU-9781852332631

Contatta il venditore

Compra nuovo

EUR 277,58
Convertire valuta
Spese di spedizione: GRATIS
Da: Regno Unito a: U.S.A.
Destinazione, tempi e costi

Quantità: Più di 20 disponibili

Aggiungi al carrello

Foto dell'editore

Girolami, Mark
Editore: Springer, 2000
ISBN 10: 1852332638 ISBN 13: 9781852332631
Antico o usato Paperback

Da: Mispah books, Redhill, SURRE, Regno Unito

Valutazione del venditore 4 su 5 stelle 4 stelle, Maggiori informazioni sulle valutazioni dei venditori

Paperback. Condizione: Like New. Like New. book. Codice articolo ERICA70418523326385

Contatta il venditore

Compra usato

EUR 257,47
Convertire valuta
Spese di spedizione: EUR 28,80
Da: Regno Unito a: U.S.A.
Destinazione, tempi e costi

Quantità: 1 disponibili

Aggiungi al carrello

Immagini fornite dal venditore

Mark Girolami
Editore: Springer London Ltd, GB, 2000
ISBN 10: 1852332638 ISBN 13: 9781852332631
Nuovo Paperback

Da: Rarewaves.com UK, London, Regno Unito

Valutazione del venditore 5 su 5 stelle 5 stelle, Maggiori informazioni sulle valutazioni dei venditori

Paperback. Condizione: New. 2000 ed. Independent Component Analysis (ICA) is a fast developing area of intense research interest. Following on from Self-Organising Neural Networks: Independent Component Analysis and Blind Signal Separation, this book reviews the significant developments of the past year.It covers topics such as the use of hidden Markov methods, the independence assumption, and topographic ICA, and includes tutorial chapters on Bayesian and variational approaches. It also provides the latest approaches to ICA problems, including an investigation into certain "hard problems" for the very first time.Comprising contributions from the most respected and innovative researchers in the field, this volume will be of interest to students and researchers in computer science and electrical engineering; research and development personnel in disciplines such as statistical modelling and data analysis; bio-informatic workers; and physicists and chemists requiring novel data analysis methods. Codice articolo LU-9781852332631

Contatta il venditore

Compra nuovo

EUR 262,37
Convertire valuta
Spese di spedizione: EUR 74,88
Da: Regno Unito a: U.S.A.
Destinazione, tempi e costi

Quantità: Più di 20 disponibili

Aggiungi al carrello