Title of article :
A support vector regression based prediction model of affective responses
for product form design
Author/Authors :
Chih-Chieh Yang، نويسنده , , Meng-Dar Shieh، نويسنده , , *، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2010
Abstract :
In this paper, a state-of-the-art machine learning approach known as support vector regression (SVR) is
introduced to develop a model that predicts consumers’ affective responses (CARs) for product form
design. First, pairwise adjectives were used to describe the CARs toward product samples. Second, the
product form features (PFFs) were examined systematically and then stored them either as continuous
or discrete attributes. The adjective evaluation data of consumers were gathered from questionnaires.
Finally, prediction models based on different adjectives were constructed using SVR, which trained a series
of PFFs and the average CAR rating of all the respondents. The real-coded genetic algorithm (RCGA)
was used to determine the optimal training parameters of SVR. The predictive performance of the SVR
with RCGA (SVR–RCGA) is compared to that of SVR with 5-fold cross-validation (SVR–5FCV) and a
back-propagation neural network (BPNN) with 5-fold cross-validation (BPNN–5FCV). The experimental
results using the data sets on mobile phones and electronic scooters show that SVR performs better than
BPNN. Moreover, the RCGA for optimizing training parameters for SVR is more convenient for practical
usage in product form design than the timeconsuming CV.
Keywords :
Kansei engineering , Product form design , Support vector regression , Genetic Algorithm , Neural network
Journal title :
Computers & Industrial Engineering
Journal title :
Computers & Industrial Engineering