Time series modeling of neuroscience data:
Gespeichert in:
1. Verfasser: | |
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Format: | Elektronisch E-Book |
Sprache: | English |
Veröffentlicht: |
Boca Raton, Fla.
CRC Press
c2012
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Schriftenreihe: | Interdisciplinary statistics
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Schlagworte: | |
Beschreibung: | Includes bibliographical references "Recent advances in brain science measurement technology have given researchers access to very large-scale time series data such as EEG/MEG data (20 to 100 dimensional) and fMRI (140,000 dimensional) data. To analyze such massive data, efficient computational and statistical methods are required. Time Series Modeling of Neuroscience Data shows how to efficiently analyze neuroscience data by the Wiener-Kalman-Akaike approach, in which dynamic models of all kinds, such as linear/nonlinear differential equation models and time series models, are used for whitening the temporally dependent time series in the framework of linear/nonlinear state space models. Using as little mathematics as possible, this book explores some of its basic concepts and their derivatives as useful tools for time series analysis. Unique features include: statistical identification method of highly nonlinear dynamical systems such as the Hodgkin-Huxley model, Lorenz chaos model, Zetterberg Model, and more Methods and applications for Dynamic Causality Analysis developed by Wiener, Granger, and Akaike state space modeling method for dynamicization of solutions for the Inverse Problems heteroscedastic state space modeling method for dynamic non-stationary signal decomposition for applications to signal detection problems in EEG data analysis An innovation-based method for the characterization of nonlinear and/or non-Gaussian time series An innovation-based method for spatial time series modeling for fMRI data analysis The main point of interest in this book is to show that the same data can be treated using both a dynamical system and time series approach so that the neural and physiological information can be extracted more efficiently. Of course, time series modeling is valid not only in neuroscience data analysis but also in many other sciences and engineering fields where the statistical inference from the observed time series data plays an important role"--Provided by publisher |
Beschreibung: | 1 Online-Ressource (xxv, 532 p.) |
ISBN: | 9781420094602 9781420094619 |
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505 | 0 | |a pt. 1. Dynamic models for time series prediction -- pt. 2. Related theories and tools -- pt. 3. State space modeling | |
650 | 4 | |a Datenverarbeitung | |
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Datensatz im Suchindex
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---|---|
any_adam_object | |
author | Ozaki, Tohru |
author_facet | Ozaki, Tohru |
author_role | aut |
author_sort | Ozaki, Tohru |
author_variant | t o to |
building | Verbundindex |
bvnumber | BV041070131 |
collection | ZDB-38-EBR |
contents | pt. 1. Dynamic models for time series prediction -- pt. 2. Related theories and tools -- pt. 3. State space modeling |
ctrlnum | (OCoLC)774296839 (DE-599)BVBBV041070131 |
dewey-full | 616.8/0475 |
dewey-hundreds | 600 - Technology (Applied sciences) |
dewey-ones | 616 - Diseases |
dewey-raw | 616.8/0475 |
dewey-search | 616.8/0475 |
dewey-sort | 3616.8 3475 |
dewey-tens | 610 - Medicine and health |
discipline | Medizin |
format | Electronic eBook |
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id | DE-604.BV041070131 |
illustrated | Not Illustrated |
indexdate | 2024-07-10T00:38:54Z |
institution | BVB |
isbn | 9781420094602 9781420094619 |
language | English |
oai_aleph_id | oai:aleph.bib-bvb.de:BVB01-026047084 |
oclc_num | 774296839 |
open_access_boolean | |
physical | 1 Online-Ressource (xxv, 532 p.) |
psigel | ZDB-38-EBR |
publishDate | 2012 |
publishDateSearch | 2012 |
publishDateSort | 2012 |
publisher | CRC Press |
record_format | marc |
series2 | Interdisciplinary statistics |
spelling | Ozaki, Tohru Verfasser aut Time series modeling of neuroscience data Tohru Ozaki Boca Raton, Fla. CRC Press c2012 1 Online-Ressource (xxv, 532 p.) txt rdacontent c rdamedia cr rdacarrier Interdisciplinary statistics Includes bibliographical references "Recent advances in brain science measurement technology have given researchers access to very large-scale time series data such as EEG/MEG data (20 to 100 dimensional) and fMRI (140,000 dimensional) data. To analyze such massive data, efficient computational and statistical methods are required. Time Series Modeling of Neuroscience Data shows how to efficiently analyze neuroscience data by the Wiener-Kalman-Akaike approach, in which dynamic models of all kinds, such as linear/nonlinear differential equation models and time series models, are used for whitening the temporally dependent time series in the framework of linear/nonlinear state space models. Using as little mathematics as possible, this book explores some of its basic concepts and their derivatives as useful tools for time series analysis. Unique features include: statistical identification method of highly nonlinear dynamical systems such as the Hodgkin-Huxley model, Lorenz chaos model, Zetterberg Model, and more Methods and applications for Dynamic Causality Analysis developed by Wiener, Granger, and Akaike state space modeling method for dynamicization of solutions for the Inverse Problems heteroscedastic state space modeling method for dynamic non-stationary signal decomposition for applications to signal detection problems in EEG data analysis An innovation-based method for the characterization of nonlinear and/or non-Gaussian time series An innovation-based method for spatial time series modeling for fMRI data analysis The main point of interest in this book is to show that the same data can be treated using both a dynamical system and time series approach so that the neural and physiological information can be extracted more efficiently. Of course, time series modeling is valid not only in neuroscience data analysis but also in many other sciences and engineering fields where the statistical inference from the observed time series data plays an important role"--Provided by publisher pt. 1. Dynamic models for time series prediction -- pt. 2. Related theories and tools -- pt. 3. State space modeling Datenverarbeitung Brain mapping / Statistical methods Neurosciences / Data processing Neurology Zeitreihenanalyse (DE-588)4067486-1 gnd rswk-swf Neurowissenschaften (DE-588)7555119-6 gnd rswk-swf Zeitreihenanalyse (DE-588)4067486-1 s Neurowissenschaften (DE-588)7555119-6 s 1\p DE-604 1\p cgwrk 20201028 DE-101 https://d-nb.info/provenance/plan#cgwrk |
spellingShingle | Ozaki, Tohru Time series modeling of neuroscience data pt. 1. Dynamic models for time series prediction -- pt. 2. Related theories and tools -- pt. 3. State space modeling Datenverarbeitung Brain mapping / Statistical methods Neurosciences / Data processing Neurology Zeitreihenanalyse (DE-588)4067486-1 gnd Neurowissenschaften (DE-588)7555119-6 gnd |
subject_GND | (DE-588)4067486-1 (DE-588)7555119-6 |
title | Time series modeling of neuroscience data |
title_auth | Time series modeling of neuroscience data |
title_exact_search | Time series modeling of neuroscience data |
title_full | Time series modeling of neuroscience data Tohru Ozaki |
title_fullStr | Time series modeling of neuroscience data Tohru Ozaki |
title_full_unstemmed | Time series modeling of neuroscience data Tohru Ozaki |
title_short | Time series modeling of neuroscience data |
title_sort | time series modeling of neuroscience data |
topic | Datenverarbeitung Brain mapping / Statistical methods Neurosciences / Data processing Neurology Zeitreihenanalyse (DE-588)4067486-1 gnd Neurowissenschaften (DE-588)7555119-6 gnd |
topic_facet | Datenverarbeitung Brain mapping / Statistical methods Neurosciences / Data processing Neurology Zeitreihenanalyse Neurowissenschaften |
work_keys_str_mv | AT ozakitohru timeseriesmodelingofneurosciencedata |