Litcius/Paper detail

Multi-level framework for anomaly detection in social networking

Aditya Khamparia, Sagar Dhanraj Pande, Deepak Gupta, Ashish Khanna, Arun Kumar Sangaiah

2020Library Hi Tech26 citationsDOI

Abstract

Purpose The purpose of this paper is to propose a structured multilevel system that will distinguish the anomalies present in different online social networks (OSN). Design/methodology/approach Author first reviewed the related work, and then, the research model designed was explained. Furthermore, the details regarding Levels 1 and 2 were narrated. Findings By using the proposed technique, F Score obtained for Twitter and Facebook data set was 96.22 and 94.63, respectively. Research limitations/implications Four data sets were used for the experiment and the acquired outcomes demonstrate enhancement over the current existing frameworks. Originality/value This paper designed a multilevel framework that can be used to detect the anomalies present in the OSN.

Topics & Concepts

Computer scienceOriginalityAnomaly detectionSet (abstract data type)Data scienceValue (mathematics)Data setAnomaly (physics)Social mediaData miningWork (physics)Information retrievalWorld Wide WebMachine learningArtificial intelligenceSociologyMechanical engineeringCondensed matter physicsEngineeringQualitative researchProgramming languagePhysicsSocial scienceComplex Network Analysis TechniquesNetwork Security and Intrusion DetectionSpam and Phishing Detection
Multi-level framework for anomaly detection in social networking | Litcius