Random Forest is an example of ensemble learning where each model is a decision tree and their predictions are aggregated to identify the most popular result. Random forest only select a random subset of features from the original data to make predictions.
In random forest the decision trees are trained independent to each other.
Classes, functions, and methods:
from sklearn.ensemble import RandomForestClassifier
: random forest classifier from sklearn ensemble class.plt.plot(x, y)
: draw line plot for the values of y against x values.
Add notes from the video (PRs are welcome)
- bootstrapping: training on a subset of the observations
The notes are written by the community. If you see an error here, please create a PR with a fix. |