- Prove the linear relation of logistic regression by assuming that our Gaussian distributions share the same covariance matrix.
- Change the learning rate of the optimizer and see how the loss value is increased/decreased in iterations.
- Try to find the mapping function so that you can convert our non-linearly separable samples into linearly separable data points.
- What will happen if the bias vector is not added to the input data?
- What will happen if the loss function is changed? Change it to each of the following:
- Mean squared error (tf.losses.meanSquaredError)
- Absolute error (tf.losses.absoluteDifference)
- Weighted loss (tf.losses.computeWeightedLoss)
- Let's try to implement multiclass logistic regression that supports three-class predictions.
- Hint: Combine two logistic regression models to do binary classification twice.
- Save and load the logistic regression...
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