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dc.contributor.author김주형-
dc.date.accessioned2022-11-15T07:36:34Z-
dc.date.available2022-11-15T07:36:34Z-
dc.date.issued2021-01-
dc.identifier.citation대한건축학회논문집, v. 37, NO. 1, Page. 191-199en_US
dc.identifier.issn2733-6239;2733-6247en_US
dc.identifier.urihttp://koreascience.or.kr/article/JAKO202110265883524.pageen_US
dc.identifier.urihttps://repository.hanyang.ac.kr/handle/20.500.11754/176897-
dc.description.abstract서울의 부동산 가격은 다양한 정책에도 불안정한 추세를 보여 관련 대책 수립을 위한 가격 예측은 중요한 연구주제가 되었으며 최근에는 다양한 머신러닝 기법이 도입되어 비교 연구의 필요성이 제기된다. 이에 부동산 지수별 최적 머신러닝 예측 모델 선별과 예측력의 비교연구를 진행하기 위해 4가지의 부동산 지수와 3가지의 머신러닝 모델 RF, XGB, LSTM을 활용하였다. 연구결과 LSTM모델이 높은 예측 정확도를 보였고 RF, XGB, LSTM 모델 모두 선형적이며 작은 등락을 가지는 전세가격지수 데이터에서 예측력이 높았다. 이를 통해 부동산 지수의 예측은 부동산 지수의 주기특성과 데이터 형상에 따라 머신러닝 모델별 예측 정확도의 차이를 가지는 사실을 알 수 있다. As the real estates occupy major portion of domestic households assets, relevant issue has been dealt seriously by the Korean government. However, apartment prices in downtown Seoul, the capital city, have soared despite various policies. Forecasting the real estate market trendhas become an important research topic in order to provide information for establishing policies. In the prediction of the real estate market inthe previous studies, two research directions were classified as follows: quantitative economic models and machine learning models. Regardingthis trend, there was a need for comparative research on machine learning models, emerging methods, that are used to compare and predictvarious real estate indices. In this study, the machine learning model RF(Random Forest), XGBoost(eXtreme Gradient Boosting), and LSTM(Long Short Term Memory) are used to select suitable machine learning models for selected real estate index and conduct a comparativestudy to validate predictive power of machine learning models. Apartment sales index, land price index, charter price index, and real estatepsychological index using univariate variables are predicted. In addition, RF, XGBoost and LSTM models all tended to be generally marginalwith RMSE values of 0.0268, 0.0296, and 0.0259 in charter(Jeonse), Korean traditional pre-deposit rental system, price index data with linearbut small variants. This shows that the prediction of the real estate index is deviated from the prediction accuracy of machine learningmodels depending on the periodic characteristics and data characteristics of the real estate index.en_US
dc.languagekoen_US
dc.publisher대한건축학회en_US
dc.subject부동산 지수 예측en_US
dc.subject머신러닝en_US
dc.subject장단기메모리en_US
dc.subjectReal Estates Index Forecastingen_US
dc.subjectMachine Learningen_US
dc.subjectLong Short-Term Memoryen_US
dc.title머신러닝을 이용한 부동산 지수 예측 모델 비교en_US
dc.title.alternativeComparison of Models to Forecast Real Estates Index Introducing Machine Learningen_US
dc.typeArticleen_US
dc.relation.no1-
dc.relation.volume37-
dc.identifier.doi10.5659/JAIK.2021.37.1.191en_US
dc.relation.page191-199-
dc.relation.journal대한건축학회논문집-
dc.contributor.googleauthor이주미-
dc.contributor.googleauthor박성훈-
dc.contributor.googleauthor조상호-
dc.contributor.googleauthor김주형-
dc.sector.campusS-
dc.sector.daehak공과대학-
dc.sector.department건축공학부-
dc.identifier.pidkcr97jhk-
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