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G. Drakopoulos, E. Kafeza, Ph. Mylonas, H. A. Katheeri
Higher Order Trust Ranking of LinkedIn Accounts with Iterative Matrix Methods
International Journal on Artificial Intelligence Tools (IJAIT), Vol. 31, No. 07, November 2022
ABSTRACT
Trust is a fundamental sociotechnological mainstay of the Web today. There is substantial evidence about this since netizens implicitly or explicitly agree to trust virtually every Web service they use ranging from Web-based mail to e-commerce portals. Moreover the methodological framework for trusting individual netizens, primarily their identity and communications, has considerably progressed. Nevertheless, the core of fact checking for human generated content is still far from being substantially automated as most proposed smart algorithms capture inadequately fundamental human traits. One such case is the evaluation of the profile trustworthiness of LinkedIn members based on publicly available attributes available from the platform itself. A trusted profile may indirectly indicate a more suitable candidate since its contents can be easily verified. In this article a first order graph search mechanism for discovering LinkedIn trusted profiles based on a random walker is extended to higher order ranking based on a combination of functional and connectivity patterns. Results are derived for the same benchmark dataset and the first- and higher-order approaches are compared in terms of accuracy.
23 November , 2022
G. Drakopoulos, E. Kafeza, Ph. Mylonas, H. A. Katheeri, "Higher Order Trust Ranking of LinkedIn Accounts with Iterative Matrix Methods", International Journal on Artificial Intelligence Tools (IJAIT), Vol. 31, No. 07, November 2022
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