Robotics & Artificial Intelligence
Which kind of data will be required for creating a machine learning model for predicting whether a student will be successful in an exam or not ?
Decision making in Machines
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Answer
To create a machine learning model that predicts whether a student will be successful in an exam, we need a dataset containing information about students from the past. This data helps the model learn patterns and make predictions.
The required data can include:
1. Academic Performance Data
- Marks/grades in previous tests and exams
- Subjec-wise scores and overall percentage
2. Study and Practice Data
- Hours spent studying regularly
- Homework and assignment completion
- Number of practice papers/tests attempted
3. Attendance Data
- Attendance percentage
- Regularity in attending classes
4. Classwork/Behaviour Indicators
- Class participation
- Teacher feedback on performance and effort
5. Final Result (Target Data)
- The past final exam result of the student (e.g., Pass/Fail or Successful/Not successful)
- This is the output label that the model learns to predict.
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