Conference paper Open Access

A Semantic Model with Self-Adaptive and Autonomous Relevant Technology for Social Media Applications

Samani, Zahra Najafabadi; Lercher, Alexander; Saurabh, Nishant; Prodan, Radu


Citation Style Language JSON Export

{
  "publisher": "Zenodo", 
  "DOI": "10.5281/zenodo.3581081", 
  "title": "A Semantic Model with Self-Adaptive and Autonomous Relevant Technology for Social Media Applications", 
  "issued": {
    "date-parts": [
      [
        2019, 
        8, 
        26
      ]
    ]
  }, 
  "abstract": "<p>With the rapidly increasing popularity of social media applications, decentralized control and ownership is taking more attention to preserve user&rsquo;s privacy. However, the lack of central control in the decentralized social network poses new issues of collaborative decision making and trust to this permission-less environment. To tackle these problems and fulfill the requirements of social media services, there is a need for intelligent mechanisms integrated to the decentralized social media that consider trust in various aspects according to the requirement of services. In this paper, we describe an adaptive microservice-based design capable of finding relevant communities and accurate decision making by extracting semantic information and applying role-stage model while preserving anonymity. We apply this information along with exploiting Pareto solutions to estimate the trust in accordance with the quality of<br>\nservice and various conflicting parameters, such as accuracy, timeliness, and latency.</p>", 
  "author": [
    {
      "family": "Samani, Zahra Najafabadi"
    }, 
    {
      "family": "Lercher, Alexander"
    }, 
    {
      "family": "Saurabh, Nishant"
    }, 
    {
      "family": "Prodan, Radu"
    }
  ], 
  "id": "3581081", 
  "type": "paper-conference", 
  "event": "Seventh Workshop on   Large Scale Distributed Virtual Environments,   LSDVE 2019  in conjunction of Euro-Par 2019"
}
193
76
views
downloads
All versions This version
Views 193193
Downloads 7676
Data volume 23.7 MB23.7 MB
Unique views 193193
Unique downloads 7676

Share

Cite as