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Using Machine Learning Techniques to Predict Esthetic Features of Buildings

Authors: Yusuf Cihat Aydin; Parham A. Mirzaei; Jonathan Hale;
Abstract
Abstract Several substantial market barriers obstruct the widespread adoption of sustainable buildings. Esthetic features are amongst the main driving forces behind the marketability of buildings, ...
Related Organizations
- Nottingham Trent University United Kingdom
Keywords
Artificial neural network, Esthetic judgment, Machine learning, Decision tree, Survey, Computational esthetic
Artificial neural network, Esthetic judgment, Machine learning, Decision tree, Survey, Computational esthetic

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