
Artificial Intelligence Applications and Innovations
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The 49 full papers and 6 short papers presented were carefully reviewed and selected from 101 submissions. They cover a broad range of topics such as deep learning ANN; genetic algorithms - optimization; constraints modeling; ANN training algorithms; social media intelligent modeling; text mining/machine translation; fuzzy modeling; biomedical and bioinformatics algorithms and systems; feature selection; emotion recognition; hybrid Intelligent models; classification - pattern recognition; intelligent security modeling; complex stochastic games; unsupervised machine learning; ANN in industry; intelligent clustering; convolutional and recurrent ANN; recommender systems; intelligent telecommunications modeling; and intelligent hybrid systems using Internet of Things. The papers are organized in the following topical sections:AI anomaly detection - active learning; autonomous vehicles - aerial vehicles; biomedical AI; classification - clustering; constraint programming - brain inspired modeling; deep learning - convolutional ANN; fuzzy modeling; learning automata - logic based reasoning; machine learning - natural language; multi agent - IoT; nature inspired flight and robot; control - machine vision; and recommendation systems.
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Content
- Intro
- Preface
- AIAI 2019
- Organization
- Abstracts of Invited Talks
- Learning from Electronic Health Records: From Temporal Abstractions to Time Series Interpretability
- Empirical Approach: How to Get Fast, Interpretable Deep Learning
- "In-memory Computing": Accelerating AI Applications
- Contents
- Invited Paper
- The Power of the ``Pursuit'' Learning Paradigm in the Partitioning of Data
- 1 Introduction
- 2 The Object Migration Automata
- 3 Developing the Pursuit Concept: The Environment
- 3.1 The Design and Results of the POMA
- 4 Enhanced OMA (EOMA)
- 5 Enhancing the EOMA with a Pursuit Paradigm
- 6 Cohesiveness in the EPP: The Transitive PEOMA
- 7 Conclusions
- References
- AI Anomaly Detection - Active Learning
- Cyber-Typhon: An Online Multi-task Anomaly Detection Framework
- Abstract
- 1 Introduction
- 2 Literature Review
- 3 The Proposed Cyber-Typhon Framework
- 4 Datasets
- 4.1 Training the RBMs
- 5 Results
- 6 Discussion and Conclusions
- References
- Investigating the Benefits of Exploiting Incremental Learners Under Active Learning Scheme
- Abstract
- 1 Introduction
- 2 Related Work
- 2.1 Incremental Learning
- 2.2 Active Learning
- 3 Proposed Framework
- 4 Experimental Procedure and Results
- 5 Conclusions and Future Work
- Acknowledgements
- References
- The Blockchain Random Neural Network in Cybersecurity and the Internet of Things
- Abstract
- 1 Introduction
- 1.1 Research Motivation
- 1.2 Research Proposal
- 2 Related Work
- 2.1 Internet of Things
- 2.2 Neural Networks in Cryptography
- 2.3 Blockchain in Security
- 3 Blockchain Neural Network in the Internet of Things
- 3.1 The Random Neural Network
- 3.2 The Random Neural Network with Blockchain Configuration
- 4 Cybersecurity and the IoT Blockchain Model
- 4.1 Private Key
- 4.2 Roaming and Verification
- 4.3 Neural Chain Network and Mining
- 4.4 Decentralized Information
- 5 Neural Blockchain in Cybersecurity and IoT Validation
- 6 Conclusions
- Appendix
- References
- Autonomous Vehicles - Aerial Vehicles
- A Visual Neural Network for Robust Collision Perception in Vehicle Driving Scenarios
- 1 Introduction
- 2 Model Description
- 2.1 Spatiotemporal Neural Computation in the Pre-synaptic Area
- 2.2 Adaptive Inhibition Mechanism
- 2.3 The LGMD Cell
- 2.4 Output Spike Frequency
- 3 Experimental Evaluation
- 3.1 Synthetic Visual Stimuli Testing
- 3.2 Real-World Driving Scenes Testing
- 3.3 Discussion
- 4 Concluding Remarks
- References
- An LGMD Based Competitive Collision Avoidance Strategy for UAV
- 1 Introduction
- 2 Model Description
- 2.1 LGMD Process
- 3 System Overview
- 3.1 Quadcopter Platform
- 4 Experiments and Results
- 4.1 Video Simulation
- 4.2 Hovering and Features Analysis
- 4.3 Arena Real-Time Flight
- 5 Conclusion
- References
- Mixture Modules Based Intelligent Control System for Autonomous Driving
- 1 Introduction
- 2 Related Work
- 3 Lateral and Longitudinal Controller
- 3.1 Lateral Controller
- 3.2 Longitudinal Controller
- 4 Experiments and Results
- 4.1 Experimental Platform
- 4.2 Path Tracking Experiment
- 4.3 Speed Control Experiment
- 5 Conclusion
- References
- Biomedical AI
- An Adaptive Temporal-Causal Network Model for Stress Extinction Using Fluoxetine
- Abstract
- 1 Introduction
- 2 Underlying Neurological Principles
- 3 The Temporal-Causal Network Model
- 4 Example Simulation
- 5 Mathematical Analysis
- 6 Conclusion
- References
- Clustering Diagnostic Profiles of Patients
- 1 Introduction
- 2 Patient Data and Diagnoses as Profiles
- 3 Experiments: Methodology and Evaluation
- 4 Summary and Conclusions
- References
- Emotion Analysis in Hospital Bedside Infotainment Platforms Using Speeded up Robust Features
- Abstract
- 1 Introduction
- 2 Related Work
- 3 System Architecture
- 3.1 Overview
- 3.2 The Emotion Analysis Process
- 4 The System in Practice
- 5 Experimental Results
- 6 Conclusion
- Acknowledgment
- References
- FISUL: A Framework for Detecting Adverse Drug Events from Heterogeneous Medical Sources Using Feature Importance
- 1 Introduction
- 2 Related Work
- 3 The FISUL Framework
- 3.1 Phase I: Boruta Feature Importance
- 3.2 Phase II: Predictive Modeling
- 3.3 Phase III: Clustering
- 4 Experimental Evaluation
- 5 Conclusions
- References
- Classification - Clustering
- A New Topology-Preserving Distance Metric with Applications to Multi-dimensional Data Clustering
- Abstract
- 1 Introduction
- 2 Methodology
- 2.1 The Proposed Topology-Preserving Distance Metric
- 2.2 Determining the Value of d0 Parameter
- 2.3 A k-Means Variant for the Proposed Topology-Preserving Distance Metric
- 3 Results
- 4 Conclusions
- Acknowledgement
- References
- Classification of Incomplete Data Using Autoencoder and Evidential Reasoning
- 1 Introduction
- 2 Basics of Evidential Reasoning
- 3 Proposed algorithm
- 3.1 The Architecture of the Autoencoder
- 3.2 The Learning
- 3.3 Decision Making for a Test Point
- 4 Experiments
- 4.1 Experimental Set Up
- 4.2 Experiment 1
- 4.3 Experiment 2
- 4.4 Experiment 3
- 5 Conclusion
- References
- Dynamic Reliable Voting in Ensemble Learning
- 1 Introduction
- 2 Related Work
- 2.1 Supervised Learning as Base Classifiers
- 2.2 Confidence Score in Ensemble Learning
- 3 Dynamic Reliable Voting Algorithm
- 3.1 Problem Formulation and Modeling
- 3.2 Classifier Selection
- 4 Experimentation Results and Discussion
- 4.1 Data Description and Protocol
- 4.2 Results and Discussion
- 5 Conclusion
- References
- Extracting Action Sensitive Features to Facilitate Weakly-Supervised Action Localization
- 1 Introduction
- 2 Related Works
- 3 Action Sensitive Network
- 3.1 Action Sensitive Extractor
- 3.2 Action Detection Criterion
- 3.3 Network Details
- 4 Experiments
- 4.1 Dataset
- 4.2 Implementation Details
- 4.3 Ablation Study
- 4.4 Experiments on AutoLoc
- 5 Conclusion
- References
- Image Recognition Based on Combined Filters with Pseudoinverse Learning Algorithm
- Abstract
- 1 Introduction
- 2 Related Work
- 3 Proposed Methodology
- 3.1 Gabor Kernel
- 3.2 Random Kernel
- 3.3 Pseudoinverse Kernel
- 3.4 Ensemble Model
- 4 Performance Evaluation
- 4.1 MNIST Dataset
- 4.2 CIFAR-10 Dataset
- 4.3 Discussion
- 5 Conclusions
- Acknowledgements
- References
- Constraint Programming - Brain Inspired Modeling
- Design-Parameters Optimization of a Deep-Groove Ball Bearing for Different Boundary Dimensions, Employing Amended Differential Evolution Algorithm
- Abstract
- 1 Introduction
- 2 Mathematical Modelling of Ball Bearing Design Problem
- 2.1 Design Parameters
- 2.2 Objective Function
- 2.3 Constraints
- 3 Amended Differential Evolution Algorithm (ADEA)
- 4 Results and Discussion
- 5 Conclusions
- References
- Exploring Brain Effective Connectivity in Visual Perception Using a Hierarchical Correlation Network
- 1 Introduction
- 2 Monolayer Correlation Network
- 3 Hierarchical Correlation Network
- 3.1 Voxel Correlation in the HcorrNet
- 3.2 Corresponding Correlation in the HcorrNet
- 3.3 Stimulus-Sensitivity Activation Patterns
- 3.4 Forward Encoding Process Representation in the HcorrNet
- 4 Decoding Process
- 5 Experiments
- 6 Conclusion
- References
- Solving the Talent Scheduling Problem by Parallel Constraint Programming
- 1 Introduction
- 2 Preliminaries
- 3 A CSP Model
- 4 Solving the TS in Parallel
- 5 Numerical Results
- 6 Conclusion
- References
- Deep Learning - Convolutional ANN
- A Deep Reinforcement Learning Approach for Automated Cryptocurrency Trading
- 1 Introduction
- 1.1 Related Work
- 2 Cryptocurrency and Bitcoin
- 2.1 Automated Trading
- 3 Reinforcement Learning
- 4 Q-learning Trading System
- 5 Experimental Data and Results
- 5.1 Bitcoin Historical Data
- 5.2 Results
- 6 Conclusions and Future Work
- References
- Capacity Requirements Planning for Production Companies Using Deep Reinforcement Learning
- Abstract
- 1 Introduction
- 2 Methodology for Applying Deep Reinforcement Learning to Planning Processes
- 2.1 Step 1: Model Business Process
- 2.2 Step 2: Identify Relevant Planning Process Steps
- 2.3 Step 3: Convert Planning Process into Markov Decision Process
- 2.4 Step 4: Develop Reinforcement Learning Environment
- 2.5 Step 5: Configure Reinforcement Learning Agent
- 2.6 Step 6: Evaluate Learning Results
- 3 Use Case for Deep Planning Methodology (DPM)
- 3.1 Standard Business Process Model for Production Companies
- 3.2 Capacity Requirements Planning Process
- 3.3 Markov Decision Process for Capacity Requirements Planning
- 3.4 Learning Environment for Capacity Requirements Planning
- 3.5 Learning Agent for Shift Schedule
- 3.6 Experimental Evaluation
- 4 Conclusion and Future Work
- References
- Comparison of Neural Network Optimizers for Relative Ranking Retention Between Neural Architectures
- Abstract
- 1 Introduction
- 2 Related Work
- 3 Methodology
- 3.1 Evolving Architectures
- 3.2 Experimental Setup
- 3.3 Implementation
- 4 Results
- 4.1 Neural Architectures
- 4.2 Monte-Carlo Simulations
- 5 Limitations
- 6 Conclusions
- 7 Future Work
- Acknowledgements
- References
- Detecting Violent Robberies in CCTV Videos Using Deep Learning
- 1 Introduction
- 2 Proposed Method
- 2.1 UNI-Crime Dataset
- 2.2 Neural Network Training
- 3 Results
- 4 Conclusion
- References
- Diversity Regularized Adversarial Deep Learning
- 1 Introduction
- 2 Related Work
- 3 Method
- 3.1 Feature Diversification in GAN
- 4 Experiments
- 5 Conclusion
- References
- Interpretability of a Deep Learning Model for Rodents Brain Semantic Segmentation
- 1 Introduction
- 2 Machine Learning Interpretability
- 3 Methods
- 3.1 Machine Learning System
- 3.2 Interpretability System
- 4 Experiments
- 4.1 Database
- 4.2 Rodents' Brain Semantic Tissue Segmentation
- 4.3 Background Removal
- 4.4 Results
- 5 Conclusion
- References
- Learning and Detecting Stuttering Disorders
- 1 Introduction
- 2 Preliminaries
- 3 The Proposed Architecture
- 4 Detection Technique
- 4.1 Noise Removal
- 4.2 Audio File Preparation
- 4.3 Feature Extraction
- 4.4 Fragment Classification
- 4.5 Segment Classification
- 5 Experiments
- 6 Conclusions
- References
- Localization of Epileptic Foci by Using Convolutional Neural Network Based on iEEG
- 1 Introduction
- 2 Dataset
- 3 Method
- 3.1 Short Time Fourier Transform (STFT)
- 3.2 Z-Score Normalization
- 3.3 Convolutional Neural Network (CNN)
- 4 Experimental Result and Discussion
- 5 Conclusion
- References
- Review Spam Detection Using Word Embeddings and Deep Neural Networks
- Abstract
- 1 Introduction
- 2 Review Spam Detection - A Literature Review
- 3 Dataset
- 4 Methods
- 5 Experimental Results
- 6 Conclusion
- Acknowledgments
- References
- Tools for Semi-automatic Preparation of Training Data for OCR
- 1 Introduction
- 2 Related Work
- 3 Tools for Semi-automatic Annotation
- 3.1 Line Image Extraction
- 3.2 Character Segmentation
- 3.3 CRNN Classifier
- 3.4 Classifier Training
- 3.5 Line Annotator
- 4 Conclusion and Future Work
- References
- Training Strategies for OCR Systems for Historical Documents
- 1 Introduction
- 2 CRNN Classifier
- 3 Dataset
- 4 Synthetic Data Creation
- 4.1 Synthetic Data Generator
- 5 Training Strategies
- 6 Experiments
- 6.1 Binarization and White-Space-Padding Experiment
- 6.2 Annotated Dataset Experiment - Strategy 1
- 6.3 Synthetic Dataset Experiment - Strategy 2
- 6.4 Synthetic and Annotated Dataset Experiment - Strategy 3
- 7 Conclusions
- References
- A Review on the Application of Deep Learning in Legal Domain
- Abstract
- 1 Introduction
- 2 Research Methodology
- 2.1 Literature Selection
- 2.2 Research Questions
- 3 Literature Review
- 3.1 Legal Data Search
- 3.2 Legal Data Analytics
- 3.3 Legal Intelligent Interfaces
- 4 Conclusion
- References
- Long-Short Term Memory for an Effective Short-Term Weather Forecasting Model Using Surface Weather Data
- Abstract
- 1 Introduction
- 2 Weather Research and Forecasting Model
- 3 Proposed Deep Model Using Long Short-Term Memory (LSTM) Network
- 4 Methodology
- 4.1 Surface Weather Parameters
- 4.2 Data Collection and Preparation
- 4.3 Proposed Model with Optimal Number of LSTM Layers
- 5 Results and Discussion
- 6 Conclusion and Future Work
- Acknowledgement
- References
- Segmentation Methods for Image Classification Using a Convolutional Neural Network on AR-Sandbox
- Abstract
- 1 Introduction
- 2 Background
- 3 General Approach
- 4 CNN Base Model
- 5 Image Processing
- 5.1 Canny Edge Detector
- 5.2 Color-Space
- 5.3 Threshold
- 5.4 Similarity Indexes
- 6 Results
- 6.1 ROC Curves
- 6.2 Confusion Matrix
- 7 Analysis of Results
- 8 Conclusions
- References
- Fuzzy Modeling
- A Hybrid Model Based on Fuzzy Rules to Act on the Diagnosed of Autism in Adults
- 1 Introduction
- 2 Literature Review
- 2.1 Autistic Spectrum Disorder (ASD)
- 2.2 Fuzzy Neural Networks: Principal Concepts
- 3 Pruning Fuzzy Neural Network for Detection of Autistic Persons
- 3.1 Network Architecture
- 3.2 Pruning Method - F-Score
- 3.3 Training of the Model Based on Extreme Learning Machine
- 4 Tests
- 4.1 Assumptions and Initial Test Configurations
- 4.2 Dataset Used in the Tests.
- 4.3 Binary Pattern Classification Tests
- 5 Conclusion
- References
- An Unsupervised Fuzzy Rule-Based Method for Structure Preserving Dimensionality Reduction with Prediction Ability
- 1 Introduction
- 2 Proposed Method
- 2.1 The Rule-Based System
- 2.2 Initial Rule Base Formation
- 2.3 Training the Rule Base
- 2.4 Rejection of Outputs
- 3 Experimentation
- 3.1 Dataset Descriptions and Experimental Settings
- 3.2 Results and Discussions
- 4 Conclusion
- References
- Interpretable Fuzzy Rule-Based Systems for Detecting Financial Statement Fraud
- 1 Introduction
- 2 Financial Statement Fraud Detection - A Literature Review
- 3 Research Methodology
- 3.1 Dataset
- 3.2 Feature Selection
- 3.3 Fuzzy Rule-Based Systems
- 3.4 Performance Evaluation
- 4 Experimental Results
- 5 Conclusion
- References
- Learning Automata - Logic Based Reasoning
- Learning Automata-Based Solutions to the Single Elevator Problem
- 1 Introduction
- 1.1 Prior Art for the SEP
- 1.2 Learning Automata (LA)
- 1.3 Contributions of This Paper
- 2 The Single Elevator Problem (SEP)
- 2.1 Competitive Solutions
- 3 LA-Based Solutions
- 3.1 Problem Modelling
- 3.2 LRI-Based Solution: SEP3
- 3.3 PLRI-Based Solution: SEP4
- 4 Results and Discussions
- 5 Conclusions
- References
- Optimizing Self-organizing Lists-on-Lists Using Enhanced Object Partitioning
- 1 Introduction
- 1.1 Contributions of this Paper
- 1.2 Outline of this Paper
- 2 Theoretical Background
- 2.1 The Field of Learning Automata
- 2.2 The OMA
- 3 Environments with Locality of Reference
- 3.1 Models of Dependence
- 4 Adaptive Lists-on-Lists (LOL)
- 5 Hierarchical Data ``Sub''-Structures
- 6 EOMA-Augmented Hierarchical SLLs-on-SLLs
- 7 Results and Discussions
- 8 Conclusion
- References
- EduBAI: An Educational Platform for Logic-Based Reasoning
- 1 Introduction
- 2 Platform Design and Methodology
- 2.1 Main Concepts, Rules and Game Mechanics
- 2.2 Axiomatizing the Game Dynamics
- 2.3 Axiomatizing the Team Tactic Intelligence
- 3 Implementation
- 4 Related Work and Conclusions
- References
- Machine Learning - Natural Language
- A Machine Learning Tool for Interpreting Differences in Cognition Using Brain Features
- 1 Introduction
- 2 Methods
- 2.1 Dataset and Participants
- 2.2 Data and Image Processing
- 2.3 Factor Analysis
- 2.4 Cross-Validation Procedure
- 2.5 Feature Importance Analysis
- 3 Results
- 4 Conclusion
- References
- Comparison of the Best Parameter Settings in the Creation and Comparison of Feature Vectors in Distributional Semantic Models Across Multiple Languages
- 1 Introduction
- 2 Background
- 3 Data and Evaluation Methods
- 4 Our Heuristic Analysis
- 5 Results
- 5.1 Results of the First Phase
- 5.2 Results of the Second Phase
- 5.3 Results on the Test Datasets
- 6 Evaluation and Discussion
- 7 Conclusions
- References
- Distributed Community Prediction for Social Graphs Based on Louvain Algorithm
- Abstract
- 1 Introduction
- 2 Related Work
- 2.1 Divisive Algorithms
- 2.2 Agglomerative Algorithms
- 2.3 Transformation Methods
- 2.4 Other Approaches
- 3 Proposed Methodology
- 3.1 Graph Statistical Analysis and Feature Enrichment
- 3.2 Representative Subgraph Extraction
- 3.3 Community Prediction Model Training and Application
- 4 Experiments
- 5 Conclusions
- Acknowledgment
- References
- Iliou Machine Learning Data Preprocessing Method for Suicide Prediction from Family History
- Abstract
- 1 Introduction
- 2 Related Work
- 3 Data Preprocessing
- 4 Iliou Preprocessing Method
- 5 Experimental Results
- 6 Conclusions
- References
- Ontology Population Framework of MAGNETO for Instantiating Heterogeneous Forensic Data Modalities
- Abstract
- 1 Introduction
- 2 Information Extraction Methods
- 2.1 Multimedia Content Indexing
- 2.2 Text Mining
- 2.3 Automatic Language Translation
- 3 MAGNETO Knowledge Base
- 3.1 The Underlying Ontology
- 3.2 Population of the MAGNETO Ontology
- 4 Conclusions and Future Work
- References
- Random Forest Surrogate Models to Support Design Space Exploration in Aerospace Use-Case
- 1 Introduction
- 2 Related Work
- 3 An Approach to Explore Design Space Using Random Forests Surrogate Models
- 3.1 Use-Case: A Design Study of Turbine Rear Structure
- 3.2 Surrogate Model Generation
- 3.3 Improve Random Forests Model Performance
- 3.4 Parameters Importance and Rules from RF Surrogate Models
- 3.5 Decision Support
- 4 Experimental Design
- 4.1 Dataset Descriptions
- 4.2 Hyperparameters and Configuration Selection
- 4.3 Experiment
- 5 Results and Analysis
- 5.1 Parameters Importance and Rules Extraction
- 6 Conclusions and Future Work
- References
- Stacking Strong Ensembles of Classifiers
- 1 Introduction
- 2 Well-Known Methods for Creating Ensembles
- 3 Proposed Hybrid Scheme
- 4 Comparisons and Experimental Results
- 5 Conclusions
- References
- Multi Agent - IoT
- An Agent-Based Framework for Complex Networks
- Abstract
- 1 Introduction
- 2 Related Work
- 3 ACONA Framework Model
- 3.1 Functions
- 3.2 Communication and Data Structures
- 3.3 Configuration
- 3.4 Complex Structures: Controller
- 4 Application and Results
- 4.1 Cognitive Architecture in Building Automation
- 4.2 Self-evolving Agents in a Multi-agent System
- 4.3 Infrastructure in an Industry 4.0 Application
- 5 Conclusion and Future Work
- Acknowledgment
- References
- Studying Emotions at Work Using Agent-Based Modeling and Simulation
- 1 Introduction
- 2 Emotional Agent-Based Models of Human Behavior in the Workplace
- 3 Agent-Based Model of Employees Emotions
- 3.1 Agent Mental States
- 3.2 Computational Representation of the OCC Model Components and Their Corresponding Relationships
- 3.3 Emotion Generation Process
- 4 Simulation and Results Analysis
- 4.1 Emotions-Evoking Stimuli
- 4.2 Stimuli Emotional Content
- 5 Discussion and Conclusion
- References
- Towards an Adaption and Personalisation Solution Based on Multi Agent System Applied on Serious Games
- Abstract
- 1 Introduction
- 2 The Game Model Cycle
- 3 Towards an Improved Game Model
- 4 System Design Architecture
- 4.1 The Learner Agent
- 4.2 The Adaption and Personalization Model
- 4.3 Architecture Design for Adaption and Personalization Engine
- 5 Conclusion and Future Work
- References
- Nature Inspired Flight and Robot Control - Machine Vision
- Constant Angular Velocity Regulation for Visually Guided Terrain Following
- 1 Introduction
- 2 Methods
- 2.1 Angular Velocity Decoding Model
- 2.2 Control Scheme for Automatic Terrain Following
- 2.3 Parameter Setting
- 3 Experiments and Results
- 3.1 Moving Grating Experiments
- 3.2 Terrain Following Simulations
- 4 Conclusion and Discussion
- References
- Motion Segmentation Based on Structure-Texture Decomposition and Improved Three Frame Differencing
- 1 Introduction
- 2 Related Work
- 3 Proposed Method
- 3.1 Structure-Texture Image Decomposition
- 4 Implementation
- 4.1 Extraction of Frames from Video Data and Conversion to Gray-Scale
- 4.2 Structure-Texture Decomposition
- 4.3 Improved Three-Frame Differencing
- 4.4 Divide in Non-overlapping Blocks
- 4.5 Detection of Moving Objects
- 4.6 Post-processing
- 5 Experimental Results and Analysis
- 5.1 Qualitative Evaluation
- 5.2 Quantitative Evaluation
- 6 Conclusion
- References
- Using Shallow Neural Network Fitting Technique to Improve Calibration Accuracy of Modeless Robots
- Abstract
- 1 Introduction
- 2 Fuzzy Error Interpolation Method
- 2.1 Overview of the Fuzzy Interpolation System
- 2.2 Membership Functions
- 2.3 Control Rules
- 2.4 Fuzzy Inference System
- 3 Simulation Results
- 4 Conclusion and Summary
- References
- Recommendation Systems
- Banner Personalization for e-Commerce
- 1 Introduction
- 2 Related Work
- 3 Proposed Evaluation Metrics
- 4 Proposed Framework
- 5 Evaluation
- 6 Conclusion
- References
- Hybrid Data Set Optimization in Recommender Systems Using Fuzzy T-Norms
- Abstract
- 1 Introduction
- 2 Related Work
- 2.1 Reproduction of Experiments in Recommender Systems Evaluation Based on Explanations
- 2.2 Reproducibility of Recommender Systems Experiments Based on Explanations
- 3 Proposed Extension and Algorithm
- 3.1 Hybrid Hamacher and Einstein Products
- 4 Experiments and Results
- 4.1 Evaluation Metrics
- 4.2 Experimental Results
- 4.3 Discussion
- 5 Conclusions and Future Work
- References
- MuSIF: A Product Recommendation System Based on Multi-source Implicit Feedback
- Abstract
- 1 Introduction
- 2 Related Work
- 3 Method
- 3.1 Implicit Matrix Factorization (MF)
- 3.2 Association Rule Mining (ARM)
- 3.3 Initializing User Item Factor Vectors
- 4 Evaluation
- 4.1 Single-Source Evaluation with Transaction Events
- 4.2 Multi-source Evaluation with Transactions, Views and Addtocart Events
- 4.3 Single-Source vs Multi-source Comparison
- 4.4 Coverage
- 5 Conclusions and Future Work
- Acknowledgments
- References
- On the Invariance of the SELU Activation Function on Algorithm and Hyperparameter Selection in Neural Network Recommenders
- 1 Introduction
- 2 Activation Functions
- 2.1 ReLU
- 2.2 ELU
- 2.3 SELU
- 3 Neural Network Architectures
- 3.1 Single Layer Feedforward Neural Network
- 3.2 Single Layer Feedforward Neural Network with Global Mean
- 3.3 Double Layer Feedforward Neural Network
- 4 Experimental Results
- 5 Conclusion
- References
- Author Index
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