Student Performance Prediction Model
Model Description
This model is trained to predict student performance based on various socio-economic and academic factors. It uses a regression approach to estimate the final grades of students.
Dataset
The model was trained using the Student Performance Predictions Dataset from Kaggle, which includes features such as:
- Study time
- Parent education level
- Previous grades
- Absences
You can find the dataset here.
Training
The model was trained using the following configuration:
- Library: TensorFlow/Keras
- Model Type: Regression
- Evaluation Metrics: Mean Absolute Error (MAE)
Results
The model's performance was evaluated using the validation loss (val_loss), which was calculated as the Mean Absolute Error (MAE). The model achieved a MAE of X on the validation dataset.
Metrics
The model was evaluated using Mean Absolute Error (MAE) on the validation set, achieving a MAE score of [your score here].
How to Use
You can load the model and use it for prediction as follows:
from tensorflow.keras.models import load_model
model = load_model("student_performance_model.h5")
# Use the model for prediction