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- #!/usr/bin/python
- """
- Skeleton code for k-means clustering mini-project.
- """
- import pickle
- import numpy
- import matplotlib.pyplot as plt
- import sys
- sys.path.append("../tools/")
- from feature_format import featureFormat, targetFeatureSplit
- def Draw(pred, features, poi, mark_poi=False, name="image.png", f1_name="feature 1", f2_name="feature 2"):
- """ some plotting code designed to help you visualize your clusters """
- ### plot each cluster with a different color--add more colors for
- ### drawing more than five clusters
- colors = ["b", "c", "k", "m", "g"]
- for ii, pp in enumerate(pred):
- plt.scatter(features[ii][0], features[ii][1], color = colors[pred[ii]])
- ### if you like, place red stars over points that are POIs (just for funsies)
- if mark_poi:
- for ii, pp in enumerate(pred):
- if poi[ii]:
- plt.scatter(features[ii][0], features[ii][1], color="r", marker="*")
- plt.xlabel(f1_name)
- plt.ylabel(f2_name)
- plt.savefig(name)
- plt.show()
- ### load in the dict of dicts containing all the data on each person in the dataset
- data_dict = pickle.load( open("../final_project/final_project_dataset.pkl", "r") )
- ### there's an outlier--remove it!
- data_dict.pop("TOTAL", 0)
- ### the input features we want to use
- ### can be any key in the person-level dictionary (salary, director_fees, etc.)
- feature_1 = "salary"
- feature_2 = "exercised_stock_options"
- poi = "poi"
- features_list = [poi, feature_1, feature_2]
- data = featureFormat(data_dict, features_list )
- poi, finance_features = targetFeatureSplit( data )
- ### in the "clustering with 3 features" part of the mini-project,
- ### you'll want to change this line to
- ### for f1, f2, _ in finance_features:
- ### (as it's currently written, the line below assumes 2 features)
- for f1, f2 in finance_features:
- plt.scatter( f1, f2 )
- plt.show()
- ### cluster here; create predictions of the cluster labels
- ### for the data and store them to a list called pred
- ### rename the "name" parameter when you change the number of features
- ### so that the figure gets saved to a different file
- try:
- Draw(pred, finance_features, poi, mark_poi=False, name="clusters.pdf", f1_name=feature_1, f2_name=feature_2)
- except NameError:
- print "no predictions object named pred found, no clusters to plot"
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