Fr. 103.00

Model and Data Engineering - 12th International Conference, MEDI 2023, Sousse, Tunisia, November 2-4, 2023, Proceedings

English · Paperback / Softback

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Description

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This volume LNCS 14396 constitutes the refereed proceedings of the 12th International Conference, MEDI 2023,in November 2023 ,held  in Sousse, Tunisia.
The 27 full papers were carefully peer reviewed and selected from 99 submissions. 
The Annual International Conference on Model and Data Engineering focuses on bring together researchers and practitioners and enabling them to showcase the latest advances in modelling and data management.

List of contents

Modelling.- A Comparative Analysis of Time Series Prediction Techniques -A Systematic Literature Review (SLR).-  A Formal Metamodel with Composite Components.- A floating-point numbers theory for Event-B.- Model based testing approach for EIP-1559 Ethereum Smart contracts.- Execution planning in aggregated search in the web of data without using metadata.- Discovering Relationships between Heterogeneous declarative Mappings for RDF Knowledge Graph.- Machine Learning and Optimization.- Exploring Synthetic Noise Algorithms for Real-world Similar Data Generation: A Case Study on Digitally Twining Hybrid Turbo-shaft Engines in UAV/UAS Applications.- Understanding Mobile Game Reviews Through Sentiment Analysis: A Case Study of PUBGm.- Data-Driven and Model-Driven Approaches in Predictive Modeling for Operational Efficiency: Use case mining industry.- Approach based on Bayesian network and ontology for identifying factorsimpacting the states of people with psychological problems from data on social media.-  Social recommendation using deep auto-encoder and confidence aware sentiment Analysis.- Deep Learning Based on TensorFlow and Keras for Predictive Monitoring of Business Process Execution Delays.- Ontology and Database Systems.- OntoFD: A Generic Social Media Fake News Ontology.-  Finding a Second Wind: Speeding Up Graph Traversal Queries in RDBMSs Using Column-Oriented Processing.- Ontology matching using multi-head attention graph isomorphism network.-  Investigating the Perceived Usability of Entity-Relationship Quality Frameworks for NoSQL Databases.- Fuzzy HealthIoT ontology for comorbidity treatment.- Healthcare Applications.- Advancing Brain Tumor Segmentation via Attention-based 3D U-Net Architecture and Digital Image Processing.- Breast Cancer Detection based DenseNet with Attention model in Mammogram Images.- AI-based Long-term Monitoring System for patients in pandemics: COVID-19 case study.- Cardiovascular Anomaly Detection using Deep Learning Techniques.- Applications and Security.- Real-Time Mitigation of Trust-Related Attacks in Social IoT.- Hybrid Data-driven and Knowledge-based Predictive Maintenance Framework in the Context of Industry 4.0.- Enhancing Semantic Image Synthesis: A GAN-Based Approach with Multi-Feature Adaptive Denormalization Layer.- Towards an Effective Attribute-based Access Control Model for Neo4j.- GRU-Based Forecasting Model for Energy Production and Consumption: Leveraging Random Forest Feature Importance.-  Localizing Non-Functional Code Bugs in User Interfaces using Deep Learning Techniques.                       

Product details

Assisted by Ladjel Bellatreche (Editor), Ladjel Bellatreche et al (Editor), Faiez Gargouri (Editor), Tahar Kechadi (Editor), Mohamed Mosbah (Editor)
Publisher Springer, Berlin
 
Languages English
Product format Paperback / Softback
Released 03.01.2024
 
EAN 9783031493324
ISBN 978-3-0-3149332-4
No. of pages 396
Dimensions 155 mm x 22 mm x 235 mm
Illustrations XIII, 396 p. 130 illus., 116 illus. in color.
Series Lecture Notes in Computer Science
Subject Natural sciences, medicine, IT, technology > IT, data processing > IT

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