Litcius/Paper detail

Blockchain-Based Event Detection and Trust Verification Using Natural Language Processing and Machine Learning

Zeinab Shahbazi, Yung-Cheol Byun

2021IEEE Access52 citationsDOIOpen Access PDF

Abstract

Information sharing is one of the huge topics in social media platform regarding the daily news related to events or disasters happens in nature or its human-made. The automatic urgent need identification and sharing posts and information delivery with a short response are essential tasks in this area. The key goal of this research is developing a solution for management of disasters and emergency response using social media platforms as a core component. This process focuses on text analysis techniques to improve the process of authorities in terms of emergency response and filter the information using the automatically gathered information to support the relief efforts. Specifically, we used state-of-art Machine Learning (ML), Deep Learning (DL), and Natural Language Processing (NLP) based on supervised and unsupervised learning using social media datasets to extract real-time content related to the emergency events to comfort the fast response in a critical situation. Similarly, the blockchain framework used in this process for trust verification of the detected events and eliminating the single authority on the system. The main reason of using the integrated system is to improve the system security and transparency to avoid sharing the wrong information related to an event in social media.

Topics & Concepts

Computer scienceSocial mediaTransparency (behavior)Complex event processingMachine learningArtificial intelligenceEmergency managementEvent (particle physics)Process (computing)Information sharingMicrobloggingNatural disasterComputer securityWorld Wide WebData scienceOperating systemPhysicsLawQuantum mechanicsPolitical scienceMeteorologyBlockchain Technology Applications and SecurityNetwork Security and Intrusion DetectionTraffic Prediction and Management Techniques