Predict the output which should give a fair idea about the chances of admission for a student for a particular university

Overview

AdmissionPrediction

Predict the output which should give a fair idea about the chances of admission for a student for a particular university. This dataset was built with the purpose of helping students in shortlisting universities with their profiles. This dataset is created for prediction of Graduate Admissions from an Indian perspective.The dataset contains several parameters which are considered important during the application for Masters Programs. The parameters included are :

  1. GRE Scores ( out of 340 )
  2. TOEFL Scores ( out of 120 )
  3. University Rating ( out of 5 )
  4. Statement of Purpose and Letter of Recommendation Strength ( out of 5 )
  5. Undergraduate GPA ( out of 10 )
  6. Research Experience ( either 0 or 1 )
  7. Chance of Admit ( ranging from 0 to 1 )

Dataset

• Serial No.

• GRE Score- out of 340

• TOEFL Score- out of 120

• University Rating – out of 5

• SOP - Statement of Purpose(out of 5)

• LOR - Letter of Recommendation Strength(out of 5)

• CGPA (Undergraduate GPA

• Research- Research Experience(either 0 or 1)

• Chance of Admit- Ranging from 0 to 1

NOTE: For dataset you can connect with me on LinkedIn https://www.linkedin.com/in/arvind-sandhu-4825b3184 I'll be more then happy to help you out with any concern

Owner
ArvindSandhu
ArvindSandhu
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