REAL TIME OPERATION ON E-BUSINESS CREDIT EVALUATION BASED ON SENTIMENT EXCAVATION

Authors

  • Mrs. Priya Anand Lecturer, Department of Commerce Sri Sankara College, Kalady Ernakulam, Cochin, India.
  • Dr. T M Bhraguram Assistant Professor, Department of IT Shinas College of Technology, Shinas Sultanate of Oman.

DOI:

https://doi.org/10.53555/eijse.v3i2.63

Keywords:

Opinion mining, electronic commerce, credit evaluation, point of view

Abstract

To expand the purchasers find out about the credit of E-trade item merchants and the buy rate of the Etrade clients, E-business credit assessment shows in view of the assessment mining calculation was advanced. Remove the component words and perspectives from the items and client surveys, and after that make utilization of factual and quantitative approach to examine them. Meanwhile, an acknowledge assessment demonstrate for exchange time-recurrence can be set up, which can be utilized to examine the vender's credit of E-business clients. Through the try, this model was checked to have certain practicability and legitimacy in E-business credit assessment.

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Published

2017-06-27