Description
- Up to this point we’ve been looking at only two features at a time. We’ve done this largely so that we can visualize the decision boundary. With only two features, the decision boundary is a line in the plane defined by the two features.
- The models we’ve looked at so far (Perceptron, Adaline, and Logistic Regression are applicable to any number of features.
- Using the Iris dataset, focus on the species Iris-setosa and Iris-versicolor. These two classes are not linearly separable when you use only the two features petal length and sepal length.
- Train the Adaline learning model using the following
- All six cases of using two features at a time.
- All four cases of using three features at a time.
- The one case of using all features at once.
- Do not use Scikit learn for this assignment. You may, if you want, use the sample code that I’ve posted to Blackboard.
- Summarize your results (i.e, what’ s the best accuracy you can obtain for each of the 11 cases you considered) in a table.
- Discuss your findings. Does using more dimensions help when trying to classify the data in this dataset?
Include all of your analysis and discussion



