Abstract
Social Internet of Things is a new paradigm that integrates Internet of things and Social Networks. Several challenges exist in building Social Internet of Things (SIoT). Very limited research has been carried out in the past 7 years to build a reliable Social Internet of Things community. A major threat with Social Things is Sybil attacks. Since SIoT is comprised of autonomous objects/nodes, tracking fake identities is an open problem. This paper proposes a new mechanism to identify Sybil’s in communities of Social Internet of Things. This paper aims at (i) identifying communities among Social Internet of Things using Community_Infer algorithm. Using the properties of Social Networks and ACO heuristics various communities among the Social Internet of Things were identified. (ii) The communities are checked for existence of Sybil’s. The algorithm Detect_Sybil detects and classifies the number of Sybil’s in each communities. Compared to existing schemes the proposed method classifies communities accurately with a high modularity scoreKeywords
Array
DOI:
10.5937/jaes14-10176
References
Autori koji objavljuju u ovom časopisu pristaju na sledeće uslove:
- Autori zadržavaju autorska prava i pružaju časopisu pravo prvog objavljivanja rada i licenciraju ga Creative Commons licencom koja omogućava drugima da dele rad uz uslov navođenja autorstva i izvornog objavljivanja u ovom časopisu.
- Autori mogu izraditi zasebne, ugovorne aranžmane za neekskluzivnu distribuciju rada objavljenog u časopisu (npr. postavljanje u institucionalni repozitorijum ili objavljivanje u knjizi), uz navođenje da je rad izvorno objavljen u ovom časopisu.
- Autorima je dozvoljeno i podstiču se da postave objavljeni rad onlajn (npr. u institucionalnom repozitorijumu ili na svojim internet stranicama) pre i tokom postupka prijave priloga, s obzirom da takav postupak može voditi produktivnoj razmeni ideja i ranijoj i većoj citiranosti objavljenog rada (up. Efekat otvorenog pristupa).
Downloads
Download data is not yet available.