Cognitive modeling of human memory and learning : (Record no. 40928)

MARC details
000 -LEADER
fixed length control field 12324nam a2200637 i 4500
001 - CONTROL NUMBER
control field 9292525
003 - CONTROL NUMBER IDENTIFIER
control field IEEE
005 - DATE AND TIME OF LATEST TRANSACTION
control field 20240917144827.0
006 - FIXED-LENGTH DATA ELEMENTS--ADDITIONAL MATERIAL CHARACTERISTICS
fixed length control field m o d
007 - PHYSICAL DESCRIPTION FIXED FIELD--GENERAL INFORMATION
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008 - FIXED-LENGTH DATA ELEMENTS--GENERAL INFORMATION
fixed length control field 210105s2020 nju ob 001 eng d
010 ## - LIBRARY OF CONGRESS CONTROL NUMBER
Canceled/invalid LC control number 2020015458 (print)
020 ## - INTERNATIONAL STANDARD BOOK NUMBER
International Standard Book Number 1119705916
020 ## - INTERNATIONAL STANDARD BOOK NUMBER
International Standard Book Number 1119705878
020 ## - INTERNATIONAL STANDARD BOOK NUMBER
Canceled/invalid ISBN 9781119705918
Qualifying information ePub
020 ## - INTERNATIONAL STANDARD BOOK NUMBER
International Standard Book Number 9781119705871
Qualifying information electronic bk.
020 ## - INTERNATIONAL STANDARD BOOK NUMBER
Canceled/invalid ISBN 9781119705925
Qualifying information electronic bk.
020 ## - INTERNATIONAL STANDARD BOOK NUMBER
Canceled/invalid ISBN 1119705924
Qualifying information electronic bk.
020 ## - INTERNATIONAL STANDARD BOOK NUMBER
Canceled/invalid ISBN 9781119705864
Qualifying information cloth
020 ## - INTERNATIONAL STANDARD BOOK NUMBER
Canceled/invalid ISBN 111970586X
024 7# - OTHER STANDARD IDENTIFIER
Standard number or code 10.1002/9781119705925
Source of number or code doi
035 ## - SYSTEM CONTROL NUMBER
System control number (CaBNVSL)mat09292525
035 ## - SYSTEM CONTROL NUMBER
System control number (IDAMS)0b0000648d5918e0
040 ## - CATALOGING SOURCE
Original cataloging agency CaBNVSL
Language of cataloging eng
Description conventions rda
Transcribing agency CaBNVSL
Modifying agency CaBNVSL
082 00 - DEWEY DECIMAL CLASSIFICATION NUMBER
Classification number 153.1/20113
100 1# - MAIN ENTRY--PERSONAL NAME
Personal name Ghosh, Lidia,
Relator term author.
245 10 - TITLE STATEMENT
Title Cognitive modeling of human memory and learning :
Remainder of title a non-invasive brain-computer interfacing approach /
Statement of responsibility, etc. Lidia Ghosh, Artificial Intelligence Lab., Dept. of Electronics and Tele-Communication Engineering, Amit Konar, Artificial Intelligence Lab., Dept. of Electronics and Tele-Communication Engineering, Pratyusha Rakshit, Artificial Intelligence Lab., Dept. of Electronics and Tele-Communication Engineering.
264 #1 - PRODUCTION, PUBLICATION, DISTRIBUTION, MANUFACTURE, AND COPYRIGHT NOTICE
Place of production, publication, distribution, manufacture Hoboken, New Jersey :
Name of producer, publisher, distributor, manufacturer Wiley,
Date of production, publication, distribution, manufacture, or copyright notice [2020]
264 #2 - PRODUCTION, PUBLICATION, DISTRIBUTION, MANUFACTURE, AND COPYRIGHT NOTICE
Place of production, publication, distribution, manufacture [Piscataqay, New Jersey] :
Name of producer, publisher, distributor, manufacturer IEEE Xplore,
Date of production, publication, distribution, manufacture, or copyright notice [2020]
300 ## - PHYSICAL DESCRIPTION
Extent 1 PDF.
336 ## - CONTENT TYPE
Content type term text
Source rdacontent
337 ## - MEDIA TYPE
Media type term electronic
Source isbdmedia
338 ## - CARRIER TYPE
Carrier type term online resource
Source rdacarrier
504 ## - BIBLIOGRAPHY, ETC. NOTE
Bibliography, etc. note Includes bibliographical references and index.
505 0# - FORMATTED CONTENTS NOTE
Formatted contents note Chapter 1: Introduction to Human Memory and Learning Models -- 1.1 Introduction 2 -- 1.2 Philosophical Contributions to Memory Research 4 -- 1.2.1 Atkinson and Shiffrin's Model 4 -- 1.2.2 Tveter's Model 6 -- 1.2.3 Tulving's model 6 -- 1.2.4 The Parallel and Distributed Processing (PDP) Approach 8 -- 1.2.5 Procedural and Declarative Memory 9 -- 1.3 Brain-theoretic Interpretation of Memory Formation 11 -- 1.3.1 Coding for Memory 11 -- 1.3.2 Memory Consolidation 13 -- 1.3.3 Location of stored Memories 16 -- 1.3.4 Isolation of Information in Memory 16 -- 1.4 Cognitive Maps 17 -- 1.5 Neural Plasticity 18 -- 1.6 Modularity 19 -- 1.7 The cellular Process behind STM Formation 20 -- 1.8 LTM Formation 21 -- 1.9 Brain Signal Analysis in the Context of Memory and Learning 22 -- 1.9.1 Association of EEG alpha and theta band with memory performances 22 -- 1.9.2 Oscillatory beta and gamma frequency band activation in STM performance 26 -- 1.9.3 Change in EEG band power with changing working memory load 26 -- 1.9.4 Effects of Electromagnetic field on the EEG response of Working Memory 29 -- 1.9.5 EEG Analysis to discriminate focused attention and WM performance 30 -- 1.9.6 EEG power changes in memory repetition effect 31 -- 1.9.7 Correlation between LTM Retrieval and EEG features 34 -- 1.9.8 Impact of math anxiety on WM response: An EEG study 37 -- 1.10 Memory Modelling by Computational Intelligence Techniques 38 -- 1.11 Scope of the Book 43 -- References 47 -- Chapter 2: Working Memory Modeling Using Inverse Fuzzy Relational Approach -- 2.1 Introduction 56 -- 2.2 Problem Formulation and Approach 59 -- 2.2.1 Independent Component Analysis as a Source Localization Tool 61 -- 2.2.2 Independent Component Analysis vs Principal Component Analysis 62 -- 2.2.3 Feature Extraction 63 -- 2.2.4 Phase 1: WM Modeling 64 -- 2.2.4.1 Step I: WM modeling of subject using EEG signals during full face encoding and recall from specific part of same face 65 -- 2.2.4.2 Step II: WM modeling of subject using EEG signals during full face encoding and recall from all parts of same face 68.
505 8# - FORMATTED CONTENTS NOTE
Formatted contents note 2.2.5 Phase 2: WM Analysis 69 -- 2.2.6 Finding Max-Min Compositional of Weight Matrix 70 -- 2.3 Experimental Results and Performance Analysis 75 -- 2.3.1 Experimental Set-up 75 -- 2.3.2 Source Localization using e-LORETA 78 -- 2.3.3 Pre-processing 79 -- 2.3.4 Selection of EEG Features 80 -- 2.3.5 WM Model Consistency across Partial Face Stimuli 81 -- 2.3.6 Inter-person Variability of Weight Matrix W 85 -- 2.3.7 Variation in Imaging Attributes 87 -- 2.3.8 Comparative Analysis with existing Fuzzy Inverse Relations 87 -- 2.4 Discussion 88 -- 2.5 Conclusion 89 -- References 90 -- Chapter 3: Short-Term Memory Modeling in Shape-Recognition Task by Type-2 Fuzzy Deep Brain Learning -- 3.1 Introduction 98 -- 3.2 System Overview 101 -- 3.3 Brain Functional Mapping using Type-2 Fuzzy DBLN 107 -- 3.3.1 Overview of Type-2 Fuzzy Sets 107 -- 3.3.2 Type-2 Fuzzy Mapping and Parameter Adaptation by Perceptron-like Learning 108 -- 3.3.2.1 Construction of the Proposed Interval Type-2 Fuzzy Membership Function 109 -- 3.3.2.2 Construction of IT2FS Induced Mapping Function 110 -- 3.3.2.3 Secondary Membership Function Computation of Proposed GT2FS 112 -- 3.3.2.4 Proposed General Type-2 Fuzzy Mapping 114 -- 3.3.3 Perceptron-like Learning for Weight Adaptation 115 -- 3.3.4 Training of the Proposed Shape-Reconstruction Algorithm 116 -- 3.3.5 The Test Phase of the Memory Model 118 -- 3.4 Experiments and Results 118 -- 3.4.1 Experimental Set-up 118 -- 3.4.2 Experiment 1: Validation of the STM Model with respect to Error Metric 121 -- 3.4.3 Experiment 2: Similar Encoding by a Subject for Similar Input Object-Shapes 122 -- 3.4.4 Experiment 3: Study of Subjects' Learning Ability with Increasing Complexity in Object Shape 123 -- 3.4.5 Experiment 4: Convergence Time of the Weight Matrix G for Increased Complexity of the Input Shape Stimuli 124 -- 3.4.6 Experiment 5: Abnormality in G matrix for the subjects with Brain Impairment 125 -- 3.5 Biological Implications 126 -- 3.6 Performance Analysis 128.
505 8# - FORMATTED CONTENTS NOTE
Formatted contents note 3.6.1 Performance Analysis of the Proposed T2FS Methods 128 -- 3.6.2 Computational Performance Analysis of the Proposed T2FS Methods 130 -- 3.6.3 Statistical Validation using Wilcoxon Signed-Rank Test 130 -- 3.6.4 Optimal Parameter Selection and Robustness Study 131 -- 3.7 Conclusions 133 -- References 135 -- Chapter 4: EEG Analysis for Subjective Assessment of Motor Learning Skill in Driving Using Type-2 Fuzzy Reasoning -- 4.1 Introduction 142 -- 4.2 System Overview 144 -- 4.2.1 Rule Design to determine the degree of learning 145 -- 4.2.2 Single Trial Detection of Brain Signals 148 -- 4.2.2.1 Feature Extraction 149 -- 4.2.2.2 Feature Selection 149 -- 4.2.2.3 Classification 150 -- 4.2.3 Type-2 Fuzzy Reasoning 151 -- 4.2.4 Training and Testing of the Classifiers 151 -- 4.3 Determining Type and Degree of Learning by Type-2 Fuzzy Reasoning 151 -- 4.3.1 Preliminaries on IT2FS and GT2FS 153 -- 4.3.2 Proposed Reasoning Method 1: CIT2FS based Reasoning 153 -- 4.3.3 Computation of Percentage Normalized Degree of Learning 155 -- 4.3.4 Optimal (Sn(B Selection in IT2FS Reasoning 156 -- 4.3.5 Proposed Reasoning Method 2: Triangular Vertical Slice Based CGT2FS Reasoning 156 -- 4.3.6 Proposed Reasoning Method 3: CGT2FS Reasoning with Gaussian Secondary Membership Function (MF) 158 -- 4.4 Experiments and Results 162 -- 4.4.1 The Experimental set-up 162 -- 4.4.2 Stimulus Presentation 163 -- 4.4.3 Experiment 1: Source Localization using eLORETA 163 -- 4.4.4 Experiment 2: Validation of the Rules 164 -- 4.4.5 Experiment 3: Pre-processing and Artifact Removal using ICA 165 -- 4.4.6 Experiment 4: N400 Old/New Effect Observation over the Successive Trials 167 -- 4.4.7 Experiment 5: Selection of the Discriminating EEG Features using PCA 168 -- 4.5 Performance Analysis and Statistical Validation 169 -- 4.5.1 Performance Analysis of the LSVM Classifiers 169 -- 4.5.2 Robustness Study 170 -- 4.5.3 Performance Analysis of the Proposed T2FS Reasoning Methods 170 -- 4.5.4 Computational Performance Analysis of the Proposed T2FS Reasoning Methods 171.
505 8# - FORMATTED CONTENTS NOTE
Formatted contents note 4.5.5 Statistical Validation using Wilcoxon Signed-Rank Test 172 -- 4.6 Conclusion 173 -- References 173 -- Chapter 5: EEG Analysis to Decode Human Memory Responses in Face Recognition Task Using Deep LSTM Network -- 5.1 Introduction 182 -- 5.2 CSP Modeling 186 -- 5.2.1 The Standard CSP Algorithm 186 -- 5.2.2 The Proposed CSP Algorithm 187 -- 5.3 Proposed LSTM Classifier with Attention Mechanism 189 -- 5.4 Experiment and Results 195 -- 5.4.1 The Experimental Set-up 195 -- 5.4.2 Experiment 1: Activated Brain Region Selection using eLORETA 196 -- 5.4.3 Experiment 2: Detection of the ERP signals associated with the familiar andunfamiliar face discrimination 198 -- 5.4.4 Experiment 3: Performance Analysis of the Proposed CSP algorithm as a Feature extraction Technique 199 -- 5.4.5 Experiment 4: Performance Analysis of the Proposed LSTM based Classifier 201 -- 5.4.6 Experiment 5: Classifier Performance Analysis with varying EEG Time-Window Length 202 -- 5.4.7 Statistical Validation of the Proposed LSTM Classifier using McNamers' Test 203 -- 5.5 Conclusions 204 -- References 204 -- Chapter 6: Cognitive Load Assessment in Motor Learning Tasks by Near-Infrared Spectroscopy Using Type-2 Fuzzy Sets -- 6.1 Introduction 214 -- 6.2 Principles and Methodologies 216 -- 6.2.1 Normalization of Raw Data 217 -- 6.2.2 Pre-processing 218 -- 6.2.3 Feature Extraction 218 -- 6.2.4 Training Instance Generation for Offline Training 219 -- 6.2.5 Feature Selection using Evolutionary Algorithm 219 -- 6.2.6 Classifier Training and Testing 221 -- 6.3 Classifier Design 221 -- 6.3.1 Preliminaries of IT2FS and GT2FS 221 -- 6.3.2 IT2FS Induced Classifier Design 222 -- 6.3.3 GT2FS Induced Classifier Design 228 -- 6.4 Experiments and Results 230 -- 6.4.1 Experimental Set-up 230 -- 6.4.2 Participants 232 -- 6.4.3 Stimulus Presentation for Online Classification 232 -- 6.4.4 Experiment 1: Demonstration of decreasing Cognitive Load with increasing Learning Epochs for similar stimulus 233 -- 6 .4.5 Experiment 2: Automatic Extraction of Discriminating fNIRs features 234.
505 8# - FORMATTED CONTENTS NOTE
Formatted contents note 6.4.6 Experiment 3: Optimal Parameter Setting of Feature Selection and Classifier Units 235 -- 6.5 Biological Implications 237 -- 6.6 Performance Analysis 239 -- 6.6.1 Performance Analysis of the proposed IT2FS and GT2FS Classifier 239 -- 6.6.2 Statistical Validation of the Classifiers using McNamer;s Test 242 -- 6.7 Conclusion 243 -- References 243 -- Chapter 7: Conclusions and Future Directions of Research on BCI based Memory and Learning -- 7.1 Self-Review of the Works Undertaken in the Book 250 -- 7.2 Limitations of EEG BCI-Based Memory Experiments 252 -- 7.3 Further Scope of Future Research on Memory and Learning 253 -- References.
506 ## - RESTRICTIONS ON ACCESS NOTE
Terms governing access Restricted to subscribers or individual electronic text purchasers.
520 ## - SUMMARY, ETC.
Summary, etc. "This book models human memory from a cognitive standpoint by utilizing brain activations acquired from the cortex by electroencephalographic (EEG) and functional near-infrared-spectroscopic (f-NIRs) means. It begins with an overview of the early models of memory. The authors then propose a simplistic model of Working Memory (WM) built with fuzzy Hebbian learning. A second perspective of memory models is concerned with Short-Term Memory (STM)-modeling in the context of 2-dimensional object-shape reconstruction from visually examined memorized instances. A third model assesses the subjective motor learning skill in driving from erroneous motor actions. Other models introduce a novel strategy of designing a two-layered deep Long Short-Term Memory (LSTM) classifier network and also deal with cognitive load assessment in motor learning tasks associated with driving. The book ends with concluding remarks based on principles and experimental results acquired in previous chapters"--
Assigning source Provided by publisher
530 ## - ADDITIONAL PHYSICAL FORM AVAILABLE NOTE
Additional physical form available note Also available in print.
538 ## - SYSTEM DETAILS NOTE
System details note Mode of access: World Wide Web
650 #0 - SUBJECT ADDED ENTRY--TOPICAL TERM
Topical term or geographic name entry element Memory.
650 #0 - SUBJECT ADDED ENTRY--TOPICAL TERM
Topical term or geographic name entry element Brain-computer interfaces.
650 #0 - SUBJECT ADDED ENTRY--TOPICAL TERM
Topical term or geographic name entry element Cognitive neuroscience.
655 #4 - INDEX TERM--GENRE/FORM
Genre/form data or focus term Electronic books.
700 1# - ADDED ENTRY--PERSONAL NAME
Personal name Konar, Amit,
Relator term author.
700 1# - ADDED ENTRY--PERSONAL NAME
Personal name Rakshit, Pratyusha,
Relator term author.
710 2# - ADDED ENTRY--CORPORATE NAME
Corporate name or jurisdiction name as entry element IEEE Xplore (Online Service),
Relator term distributor.
710 2# - ADDED ENTRY--CORPORATE NAME
Corporate name or jurisdiction name as entry element Wiley,
Relator term publisher.
776 08 - ADDITIONAL PHYSICAL FORM ENTRY
Relationship information Print version:
Main entry heading Ghosh, Lidia.
Title Cognitive modeling of human memory and learning.
Place, publisher, and date of publication Hoboken, New Jersey : Wiley, [2020]
International Standard Book Number 9781119705864
Record control number (DLC) 2020015457
856 42 - ELECTRONIC LOCATION AND ACCESS
Materials specified Abstract with links to resource
Uniform Resource Identifier <a href="https://ieeexplore.ieee.org/xpl/bkabstractplus.jsp?bkn=9292525">https://ieeexplore.ieee.org/xpl/bkabstractplus.jsp?bkn=9292525</a>
942 ## - ADDED ENTRY ELEMENTS (KOHA)
Source of classification or shelving scheme Dewey Decimal Classification
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