Trust Model for Cloud Data Service Providers

Ragini Chavan, Jayashree Muley
International Journal of Computational and Electronic Aspects in Engineering
Volume 4: Issue 3, July-September 2023, pp 86-89


Author's Information
Ragini Chavan 1 
Corresponding Author
1Department of Statistics, Pratibha College of Commerce and Computer Studies, Pune, India
ragini.stats@gmail.com

Jayashree Muley2
2Department of Statistics, Pratibha College of Commerce and Computer Studies, Pune, India

Article -- Peer Reviewed
First online on – 12 September 2023

Open Access article under Creative Commons License

Cite this article –Ragini Chavan, Jayashree Muley, “Trust Model for Cloud Data Service Providers”, International Journal of Computational and Electronic Aspects in Engineering, RAME Publishers, vol. 4, Issue 3, pp. 86-89, 2023.
https://doi.org/10.26706/ijceae.4.3.20230905


Abstract:-
This research paper provides the researcher with the use of a multivariate logistic regression model in the field of the cloud computing world based on the trust of the data service provider. For this model, different factors are considered to measure the trust of the data service provider. This model gives the relationship between the trust of the service provider and different factors which are considered while uploading the data to the cloud. The value of the parameters of the model gives the share of that particular parameter in the model. According to the fitted model Security, Authentication of the service provider, service providers’ information, and Cost of storage are the key factors to build consumer trust.
Index Terms:-
Cloud computing, Logistic Regression Model, Trust, Factors
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