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Improving Design Preference Prediction Accuracy Using Feature Learning
Author(s) -
Alex Burnap,
Yanxin Pan,
Ye Liu,
Yi Ren,
Honglak Lee,
Richard Gonzalez,
Panos Y. Papalambros
Publication year - 2016
Publication title -
journal of mechanical design
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.911
H-Index - 120
eISSN - 1528-9001
pISSN - 1050-0472
DOI - 10.1115/1.4033427
Subject(s) - computer science , machine learning , feature (linguistics) , artificial intelligence , rank (graph theory) , representation (politics) , preference , boltzmann machine , restricted boltzmann machine , dimensionality reduction , feature learning , data mining , task (project management) , preference learning , visualization , principal component analysis , artificial neural network , engineering , mathematics , statistics , philosophy , linguistics , systems engineering , combinatorics , politics , political science , law
Quantitative preference models are used to predict customer choices among design alternatives by collecting prior purchase data or survey answers. This paper examines how to improve the prediction accuracy of such models without collecting more data or changing the model. We propose to use features as an intermediary between the original customer-linked design variables and the preference model, transforming the original variables into a feature representation that captures the underlying design preference task more effectively. We apply this idea to automobile purchase decisions using three feature learning methods (principal component analysis (PCA), low rank and sparse matrix decomposition (LSD), and exponential sparse restricted Boltzmann machine (RBM)) and show that the use of features offers improvement in prediction accuracy using over 1 million real passenger vehicle purchase data. We then show that the interpretation and visualization of these feature representations may be used to help augment data-driven design decisions. [DOI: 10.1115/1.4033427]

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