This is from Chapter 2 in the book
Machine Learning In Action and I am trying to make the plot pictured here:
The author has posted the plot's code here, which I believe may be a bit hacky (he also mentions this code is sloppy since it is out of the book's scope).
Here is my attempt to re-create the plot:
First, the .txt file holding the data is as follows (source: "datingTestSet2.txt" in Ch.2 here):
40920 8.326976 0.953952 largeDoses 14488 7.153469 1.673904 smallDoses 26052 1.441871 0.805124 didntLike 75136 13.147394 0.428964 didntLike 38344 1.669788 0.134296 didntLike ...
datingDataMat is a
numpy.ndarray of shape `(1000L, 2L) where column 0 is "Frequent Flier Miles Per Year", column 1 is "% Time Playing Video Games", and column 2 is "liter of ice cream consumed per week", as shown in the sample above.
datingLabels is a
list of ints 1, 2, or 3 meaning "Did Not Like", "Liked in Small Doses", and "Liked in Large Doses" respectively - associated with column 3 above.
Here is the code I have to create the plot (full details for
file2matrix are at the end):
datingDataMat,datingLabels = file2matrix("datingTestSet2.txt") import matplotlib.pyplot as plt fig = plt.figure() ax = fig.add_subplot (111) plt.xlabel("Freq flier miles") plt.ylabel("% time video games") # Not sure how to finish this: plt.legend([1, 2, 3], ["did not like", "small doses", "large doses"]) plt.scatter(datingDataMat[:,0], datingDataMat[:,1], 15.0*np.array(datingLabels), 15.0*np.array(datingLabels)) # Change marker color and size plt.show()
The output is here:
My main concern is how to create this legend. Is there a way to do this without needing a direct handle to the points?
Next, I am curious whether I can find a way to switch the colors to match those of the plot. Is there a way to do this without having some kind of "handle" on the individual points?
Also, if interested, here is the
def file2matrix(filename): fr = open(filename) numberOfLines = len(fr.readlines()) returnMat = np.zeros((numberOfLines,3)) #numpy.zeros(shape, dtype=float, order='C') classLabelVector =  fr = open(filename) index = 0 for line in fr.readlines(): line = line.strip() listFromLine = line.split('\t') returnMat[index,:] = listFromLine[0:3] # FFmiles/yr, % time gaming, L ice cream/wk classLabelVector.append(int(listFromLine[-1])) index += 1 return returnMat,classLabelVector