Feng Shui Theory with Artificial Neural Network Technique for Appraising Real Estate Price

نویسندگان

  • CHIH-HUNG WU
  • WEI-TING LIN
  • CHIA-HSIANG WU
چکیده

Feng shui is the scientific knowledge of Chinese ancient. In Taiwan, though some people thought that feng shui is the superstition, we can see the influence on the people's lives including of choosing good days, divination and house selecting. From the past researches, we know many factors affect the real estate price. Those factors are the announced land values, the building room age, building total number of floor and the transportation condition etc. But it doesn’t include feng shui variables. We also discover the related references about feng shui and real estate price are fewer. Therefore, the present study pioneers in applying feng shui variables for developing a real estate price prediction system with BPN and FNN to compare. Our system combines factors affecting of real estate price with feng shui and surrounding environment of house for estate price appraisal. The research results demonstrated that the feng shui FNN model has the best performance in estate price appraisal.

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تاریخ انتشار 2008