TY - JOUR
T1 - Combining multiple correspondence analysis with association rule mining to conduct user-driven product design of wearable devices
AU - Wang, Chih-Hsuan
AU - Nien, Su Hau
PY - 2016/3/1
Y1 - 2016/3/1
N2 - In recent years, the popularity of smart phones has boomed the emergence of wearable devices like wristband, smart watch, and sport watch since these devices are portable to record human body information, synchronize information with smart phones, and conduct real-time monitoring of physical condition. However, a recent survey indicates that near 70% respondents are not interested in buying Apple's new iWatch although the marketplace is full of competing alternatives like Samsung's Gear fit, LG's G watch, and Sony's SW3. In this study, a novel framework combining multiple correspondence analysis (MCA), association rule mining (ARM), with K nearest neighbor (KNN) is proposed to help brand companies address the following issues: (1) using MCA to explore the latent relationships between users' demographic profiles, user perceptions of design attributes, and user preferences for wearable devices, (2) using ARM to identify key design attributes that can best configure a specific alternative to achieve effective product differentiation (positioning), (3) using KNN to accomplish efficient product selection (recommendation). More importantly, hundreds of consumers are surveyed to justify the validity of the presented framework.
AB - In recent years, the popularity of smart phones has boomed the emergence of wearable devices like wristband, smart watch, and sport watch since these devices are portable to record human body information, synchronize information with smart phones, and conduct real-time monitoring of physical condition. However, a recent survey indicates that near 70% respondents are not interested in buying Apple's new iWatch although the marketplace is full of competing alternatives like Samsung's Gear fit, LG's G watch, and Sony's SW3. In this study, a novel framework combining multiple correspondence analysis (MCA), association rule mining (ARM), with K nearest neighbor (KNN) is proposed to help brand companies address the following issues: (1) using MCA to explore the latent relationships between users' demographic profiles, user perceptions of design attributes, and user preferences for wearable devices, (2) using ARM to identify key design attributes that can best configure a specific alternative to achieve effective product differentiation (positioning), (3) using KNN to accomplish efficient product selection (recommendation). More importantly, hundreds of consumers are surveyed to justify the validity of the presented framework.
KW - Association rule mining
KW - Multiple correspondence analysis
KW - Nearest-neighbor recommendation
KW - Product design
KW - Wearable device
UR - http://www.scopus.com/inward/record.url?scp=84959318174&partnerID=8YFLogxK
U2 - 10.1016/j.csi.2015.11.007
DO - 10.1016/j.csi.2015.11.007
M3 - Article
AN - SCOPUS:84959318174
SN - 0920-5489
VL - 45
SP - 37
EP - 44
JO - Computer Standards and Interfaces
JF - Computer Standards and Interfaces
ER -