'A C2C E-COMMERCE TRUST MODEL BASED ON REPUTATION' Python implementation

Overview

Project description

A library providing functionalities to calculate reputation and degree of trust on C2C ecommerce platforms.
The work is fully based on the paper 'A C2C E-COMMERCE TRUST MODEL BASED ON REPUTATION' by China University of Mining and Technology.
It can be found here: http://www.jatit.org/volumes/Vol96No11/27Vol96No11.pdf

Implementation steps

  • direct trust - buyer to seller
  • seller's reputation
  • business trust
  • commodity trust
  • comprehensive trust degree

Current work

Direct trust has been implemented but is missing tests. That's the priority for now!
APIs are to be defined yet, methods exposed by direct trust module are a draft and they may change in the future.

Owner
Davide Bigotti
Davide Bigotti
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