Difference between revisions of "FLATearthers"

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Latest revision as of 20:29, 16 February 2019

FLATearthers.jpeg

TEAM

 

PROPOSAL

 

POSTER

 

APPLICATION

 

RESEARCH PAPER


Group Members
  • Benjamin Ng Wei Xian
  • Yong Yong Qing
  • Goh Mi Shan, Brittany

  • Project Description

    Our project aims to find out how external and internal factors may affect resale housing prices. External factors are, though not limited to, noise levels, proximity to hawker centers, MRT stations, shopping malls, schools and eldercare services. Internal factors are, though not limited to, remaining lease, number of rooms, floor, flat type and age of the flat.


    We will be using 3 different models:

      1. Hedonic pricing model
      2. Geographically weighted regression
      3. Geographically and temporally weighted regression

    to compare and explain how the factors stated above may, affect resale housing prices.