13:50 〜 14:10
[3S3-IS-2e-02] Incremental informational value of floorplans for rent price prediction
Applications of modern computer vision techniques in real-estate
Regular
キーワード:Computer Vision, Real estate , Rent prices, Deep Learning, Hedonic Price model
This report examines whether a consideration of floorplan images of real-estate
apartments can effectively improve real-estate rental price predictions. We use
a modern computer vision technique to predict the rental price of apartments
using the floorplan of the apartment exclusively. Afterward, we use these
predictions combined with a more traditional hedonic pricing method to see
whether its predictions improved. We found that by including the predictions, we
were able to increase the accuracy of the predictions from an R2 of
0.915 to an R2 of 0.945. This improvement suggests that floorplans
contain considerable information about rent prices, not captured in the other
explanatory variables used. Further investigation, including more explanatory
variables about the apartment itself, could be used in future research to
further examine the price structure of real estate and better understand
consumer behavior.
apartments can effectively improve real-estate rental price predictions. We use
a modern computer vision technique to predict the rental price of apartments
using the floorplan of the apartment exclusively. Afterward, we use these
predictions combined with a more traditional hedonic pricing method to see
whether its predictions improved. We found that by including the predictions, we
were able to increase the accuracy of the predictions from an R2 of
0.915 to an R2 of 0.945. This improvement suggests that floorplans
contain considerable information about rent prices, not captured in the other
explanatory variables used. Further investigation, including more explanatory
variables about the apartment itself, could be used in future research to
further examine the price structure of real estate and better understand
consumer behavior.
講演PDFパスワード認証
論文PDFの閲覧にはログインが必要です。参加登録者の方は「参加者用ログイン」画面からログインしてください。あるいは論文PDF閲覧用のパスワードを以下にご入力ください。