Development of GA-Based Fuzzy Associative Memory for Smart Phone Product Selection
Abstract
Smart phone selection based on customer preference is a fairly complicated problem
usually customer voice is inconsistent, imperfect and vague. However, the customer voice
about a product is same. A good product has positive image to the customer and the same
for poor product. This research describes a technique to map the voice of customer about
smart phone product based on case-based reasoning. The technique to model the case
based reasoning is Fuzzy Associative Memory (FAM). First, FAM system is constructed
subjectively based on historical data and then optimized using Genetic Algorithm (GA) to
increase its accuracy. A set of data in a size of 42x16 is used for training while another
data with the same size is used for testing. After optimization, the accuracy of the proposed
FAM system is 90.48% when training and testing.
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- Industrial Engineering [2225]