I need a suggestion on how to do analyze this type of data. I want to perform a sentiment analysis or linear regression on it as a machine learning tool. The predictor is score.
color type make new score red truck ford y 2 black sedan chevy n 4 silver sedan nissan y 5 silver truck nissan n 2 black coupe toyota y 1 blue van honda y 1 red truck toyota n 4 red coupe ford n 2 black sedan ford y 1 blue truck toyota y 4 white coupe chevy y 3 white van toyota n 5 red van ford y 2 silver truck nissan n 3 black sedan honda n 1 silver truck chevy y 4 red truck chevy y 5 white coupe honda n 5 blue sedan chevy n 2 blue van nissan y 3
I can run a LinearRegression classifier in WEKA which yields:
score = 1.6 ( color=red,silver,white) + 1.8 (make=honda,nissan,toyota,chevy) + 0.55
However, I would like to implement this in Django for a web app. Is there another way to process this data and yield a linear regression equation not using WEKA. Any other suggestions on how to analyze it other than linear regression? I've already implemented a decision tree.