Genetic_Programming_Theory_and_Practice_XIII

(C. Jardin) #1

Predicting Product Choice with Symbolic Regression and Classification 217


For the Spice MI-495, data was missing for the USB connection attribute.
This was taken fromwww.GSMArena.comon September 26th 2013. The phone
thickness attribute was missing from both these sources. It was taken from
comapareindia.in.comon November 5th 2013.
For the Micromax Canvas 4 A210, data was missing for the GPS attribute. This
was taken fromwww.GSMArena.comon September 26th 2013.
For the Lava Iris 504Q, data was missing for the GPS attribute. It was taken from
comapareindia.in.com on November 5th 2013.


References


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