
Future Data and Security Engineering
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The 24 full papers presented together with 2 invited keynotes were carefully reviewed and selected from 168 submissions. The selected papers are organized into the following topical headings: Big Data Analytics and Distributed Systems; Advances in Machine Learning for Big Data Analytics; Industry 4.0 and Smart City: Data Analytics and Security; Blockchain and IoT Applications; Machine Learning and Artificial Intelligence for Security and Privacy; Emerging Data Management Systems and Applications.
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Persons
Content
- Intro
- Preface
- Organization
- Contents
- Invited Keynotes
- Federated Learning: Issues in Medical Application
- 1 Introduction
- 2 Federated Learning in Medical Applications
- 2.1 Physical Disorder Predictions
- 2.2 Mental Disorder Predictions
- 2.3 Other Medical Applications
- 3 Research Issues
- 3.1 Heterogeneity Issues
- 3.2 Client Management Issues
- 3.3 Traceability and Accountability Issues
- 3.4 Privacy and Security Issues
- 4 Modular Framework Under Development
- 5 Conclusion and Future Works
- References
- Time in Data Models
- 1 Introduction
- 2 Representing Time
- 3 Snapshots vs. Historical Data Models
- 4 Temporal Databases
- 5 Temporal Multiversion Data Models
- 6 Temporal Integrity Constraints
- 7 Conclusions
- References
- Big Data Analytics and Distributed Systems
- Distributed Scalable Association Rule Mining over Covid-19 Data
- 1 Introduction
- 2 Scrutiny of Related Work
- 3 Preliminaries
- 3.1 Apriori
- 3.2 FP-Growth
- 3.3 k-Nearest Neighbours
- 3.4 Apache Spark
- 4 Methodology
- 4.1 Hardware and Software Configuration
- 4.2 Dataset Description
- 4.3 Data Pre-processing
- 5 Results and Discussion
- 5.1 Core Utilization
- 5.2 Node Utilization
- 5.3 Number of Transactions
- 6 Conclusion
- References
- Threshold Benefit for Groups Influence in Online Social Networks
- 1 Introduction
- 2 Related Work
- 3 Information Diffusion Models
- 3.1 Independent Cascade Model
- 3.2 Problem Definition
- 4 Proposed Algorithm
- 4.1 Estimation of i
- 4.2 Main Algorithm
- 5 Experiments
- 5.1 Experimental Settings
- 5.2 Experiment Results
- 6 Conclusion
- References
- Application Based Cigarette Detection on Social Media Platforms Using Machine Learning Algorithms
- 1 Introduction
- 2 Related Work
- 3 Methodology
- 3.1 Dataset
- 3.2 MMDetection
- 3.3 Mask R-CNN
- 3.4 Cascade Mask R-CNN
- 3.5 HTC
- 4 Performance Evaluation
- 4.1 Mask R-CNN
- 4.2 Cascade Mask R-CNN
- 4.3 HTC
- 5 Conclusions
- References
- Efficient Brain Hemorrhage Detection on 3D CT Scans with Deep Neural Network
- 1 Introduction
- 2 Related Works
- 3 Background
- 3.1 Architecture of U-Net Deep Neural Network
- 3.2 Overfitting and Underfitting
- 3.3 Loss Function
- 3.4 Xavier Initialization
- 3.5 Measure of the Average Precision
- 4 Proposed Method
- 4.1 The Training Phase
- 4.2 The Testing Phase
- 5 Experimental Results
- 5.1 Description of Dataset and Environment
- 5.2 Scenario Descriptions
- 5.3 Scenario Evaluation
- 6 Conclusion
- References
- Advances in Machine Learning for Big Data Analytics
- Multi-class Bagged Proximal Support Vector Machines for the ImageNet Challenging Problem
- 1 Introduction
- 2 Support Vector Machines
- 3 Proximal Support Vector Machines
- 4 Multi-class Bagged Proximal Support Vector Machines
- 4.1 Multi-class Proximal Support Vector Machines
- 4.2 Parallel Bagged Proximal Support Vector Machines for Large-Scale Multi-class
- 5 Experimental Results
- 5.1 Software Programs
- 5.2 ILSVRC 2010 Dataset
- 5.3 Tuning Parameter
- 5.4 Classification Results
- 6 Conclusion and Future Works
- References
- Selective Combination and Management of Distributed Machine Learning Models
- 1 Introduction
- 2 Related Research and Approaches
- 2.1 Related Research
- 2.2 Approach
- 3 Combining Feature Models
- 3.1 Distributed Feature Models
- 3.2 Sequential Combining Method
- 3.3 Adaptive Selection Method
- 3.4 Similarity Model Retrieved Method
- 3.5 Comparison of Performance by Combining
- 3.6 Combining Policy
- 4 Feature Model Management
- 4.1 Management Policy
- 4.2 Similarity Retrieval of Feature Models
- 4.3 R-Trees in a Distributed Environment
- 4.4 Evaluation
- 5 Issues and Summary
- References
- Improving ADABoost Algorithm with Weighted SVM for Imbalanced Data Classification
- 1 Introduction
- 2 Preliminaries
- 3 Proposed Method
- 3.1 Initialize Adaptive ADABoost Weights
- 3.2 Positive Label Sensitive Confidence Weights of the Membership Classifier
- 3.3 Im.ADABoost.W-SVM Algorithm
- 4 Experiments
- 5 Conclusion
- References
- Feature Learning and Data Generative Models for Facial Expression Recognition
- 1 Introduction
- 2 Related Works
- 2.1 Expression Recognition on Face Images
- 2.2 Generative Adversarial Network Model
- 3 FER2013 Data Set Analysis
- 3.1 Overview of FER2013 Data Set
- 3.2 Statistics of Data Set FER2013
- 3.3 Challenges on the FER2013 Data Set
- 4 The Proposed Approach
- 4.1 Problem Statement
- 4.2 Develop the Data Generation Model
- 4.3 Design Identity Models
- 5 Experimental Results
- 5.1 Model Training Process
- 5.2 Accuracy Evaluation
- 6 Conclusion
- References
- Industry 4.0 and Smart City: Data Analytics and Security
- Authorization Strategies and Classification of Access Control Models
- 1 Introduction
- 2 Authorization Strategies
- 2.1 Discretionary Strategy (DAC)
- 2.2 Mandatory Strategy (MAC)
- 2.3 Hybrid Strategy
- 3 Access Control Models
- 3.1 Access Control by Explicit Object-Subject Assignment (OSA)
- 3.2 Access Control by Model-Specific Rules (MsR)
- 3.3 Access Control by Roles
- 3.4 Access Control by Content
- 3.5 Access Control by Context
- 4 Comparative Studies
- 5 Analysis
- 6 Conclusion
- References
- Motorbike Counting in Heavily Crowded Scenes
- 1 Introduction
- 2 Related Work
- 3 Crowd Counting Methods
- 3.1 Bag-of-Visual-Words
- 3.2 Lempitsky-Zisserman's Method
- 3.3 Qing Wen et al.'s Method
- 3.4 Donatello Conte et al.'s Method
- 3.5 Deep Convolutional Neural Network for Object Counting
- 3.6 Context-Aware Crowd Counting (CAN) ch12liu2019context
- 4 Experiments and Discussion
- 4.1 The Dataset
- 4.2 Evaluation Method
- 4.3 Implementation Details
- 4.4 Experimental Results
- 5 Conclusion and Future Work
- References
- Pesticide Label Detection Using Bounding Prediction-Based Deep Convolutional Networks
- 1 Introduction and Motivation
- 2 Technical Background
- 2.1 Deep Learning and Convolutional Neural Networks (CNNs)
- 2.2 You Only Look Once (YOLO)
- 2.3 Single Shot Detection (SSD)
- 3 Experiments
- 3.1 Datasets
- 3.2 Models' Architecture Configuration
- 3.3 Evaluation Metrics
- 3.4 Experimental Results
- 4 Mobile-App Deployment
- 5 Conclusion
- References
- Intelligent Urban Transportation System to Control Road Traffic with Air Pollution Orientation
- 1 Introduction
- 2 Related Work
- 3 IUTAR Concepts and Solutions
- 3.1 System Context Overview
- 3.2 GAINS Vehicles Categories and Emission Factors
- 3.3 Modeling Optimal Traffic Light Cycle
- 4 Application Results
- 4.1 Training Dataset with Image Pre-processing
- 4.2 Test Run Results
- 4.3 IUTAR Dashboard
- 5 Conclusion and Future Works
- References
- A Data Union Method Using Hierarchical Clustering and Set Unionability
- 1 Introduction
- 2 Background and Related Works
- 2.1 Related Works
- 2.2 Dataset Similarity Measurement
- 3 Proposed Method
- 3.1 Schema Step
- 3.2 Clustering Step
- 3.3 Union Step
- 4 Experiment and Evaluation
- 5 Conclusion
- References
- Blockchain and IoT Applications
- A Consensus-Based Load-Balancing Algorithm for Sharded Blockchains
- 1 Introduction
- 2 Problem Definition
- 2.1 Types of Blockchains
- 2.2 Sharding Strategies
- 2.3 The Load-Balancing Problem for Sharded Account-Based Blockchains
- 3 Algorithms
- 3.1 Diffusion Algorithm
- 3.2 Centralized Algorithms
- 4 Experimentation
- 4.1 Sharding Simulations
- 4.2 Numerical Results
- 4.3 Discussion
- 5 Conclusion
- References
- Neighboring Information Exploitation for Anomaly Detection in Intelligent IoT
- 1 Introduction
- 2 Propose Scheme
- 2.1 The Overall Process
- 2.2 Data Processing Model
- 3 Performance Evaluation
- 3.1 Experimental Dataset and Evaluation Method
- 3.2 Experimental Results
- 4 Conclusion
- References
- Feature Representation of AutoEncoders for Unsupervised IoT Malware Detection
- 1 Introduction
- 2 Related Works
- 3 Background
- 3.1 AutoEncoder
- 3.2 Principle Component Analysis
- 3.3 Self-Organizing Maps
- 4 Hybrid AEs and SOMs for IoT Malware Detection
- 4.1 Latent Representation of AEs
- 4.2 SOM-Based Clustering Algorithm
- 5 Experiments
- 5.1 Datasets
- 5.2 Parameters Settings
- 5.3 Evaluation Metrics
- 6 Results and Discussion
- 6.1 IoT Data Analysis
- 6.2 Unknown/New IoT Attack Detection
- 6.3 Transfer Learning
- 7 Conclusions and Future Work
- References
- Machine Learning and Artificial Intelligence for Security and Privacy
- Potential Threat of Face Swapping to eKYC with Face Registration and Augmented Solution with Deepfake Detection
- 1 Introduction
- 2 Related Work
- 2.1 Know Your Customer
- 2.2 Deepfake Generation and Detection
- 3 Deepfake Attack on eKYC Systems
- 3.1 Regular Registration Process for eKYC
- 3.2 Attack Registration Process with Deepfake
- 4 Deepfake Detection to Protect eKYC Systems
- 4.1 Deepfake Detection
- 4.2 Enhanced eKYC with Deepfake Detection
- 5 Experiments
- 6 Conclusion
- References
- Spliced Image Forgery Detection Based on the Combination of Image Pre-processing and Inception V3
- 1 Introduction
- 2 Literature Review
- 3 Problem Statement
- 4 Proposed Method
- 4.1 The Architecture of Inception V3
- 4.2 Spliced Image Forgery Detection
- 5 Simulation Results
- 6 Conclusion
- References
- Comprehensive Analysis of Privacy in Black-Box and White-Box Inference Attacks Against Generative Adversarial Network
- 1 Introduction
- 2 Background
- 3 Related Work
- 3.1 Condition Generative Adversarial Networks
- 3.2 Control Generative Adversarial Networks
- 3.3 Wasserstein Generative Adversarial Networks
- 4 The Experimentation
- 4.1 Threat Models
- 4.2 White-Box Attack
- 4.3 Black-Box Attack Without Auxiliary Knowledge
- 4.4 Black-Box Attack with Auxiliary Knowledge
- 4.5 Experimental Results
- 5 Conclusions
- References
- Face Recognition in the Wild for Secure Authentication with Open Set Approach
- 1 Introduction
- 2 Related Work
- 2.1 Face Recognition
- 2.2 Open-Set Recognition
- 3 Face Recognition for Authentication with Open-Set Approach
- 3.1 Overview
- 3.2 Facenet with OpenMax
- 3.3 Learning Placeholder with Facenet
- 3.4 Pipeline
- 4 Experiments
- 5 Conclusion
- References
- Intrusion Detection in Software-Defined Networks
- 1 Introduction
- 2 Related Works
- 2.1 Methods
- 2.2 Datasets
- 3 The InSDN Dataset
- 4 Methods and Experimental Results
- 4.1 Methods
- 4.2 Experimental Results
- 5 Conclusions
- References
- Emerging Data Management Systems and Applications
- Clustering Analyses of Two-Dimensional Space-Filling Curves
- 1 Preliminaries
- 2 Our Analytical and Combinatorial Approach
- 3 Clustering Statistics of 2-Dimensional Hilbert Curves
- 3.1 (Hk2,G) over Subgrids G Overlapping with Two Quadrants
- 3.2 Query Subgrids Overlapping with All Quadrants
- 3.3 The Big Picture: Computing Eq(Hk2)
- 4 Clustering Statistics of 2-Dimensional z-Order Curves
- 5 Concluding Remarks
- References
- Attendance Monitoring Using Adjustable Power UHF RFID and Web-Based Real-Time Automated Information System
- 1 Introduction
- 2 Literature Review
- 3 Proposed System
- 3.1 System Structure
- 3.2 Hardware Placement
- 3.3 Power Adjustment
- 3.4 Software Analysis
- 3.5 Advantages and Disadvantages
- 4 Simulation Results
- 5 Conclusions
- References
- Integrating Deep Learning Architecture into Matrix Factorization for Student Performance Prediction
- 1 Introduction
- 2 Related Works
- 3 Proposed Method
- 3.1 Problem Definition
- 3.2 Baseline Methods
- 3.3 Deep Learning Matrix Factorization Method
- 4 Result
- 4.1 Dataset
- 4.2 Evaluation
- 4.3 Experimental Result
- 5 Conclusion
- References
- Author Index
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