使用机器学习技术为住房开发项目提供户型规范:泰国曼谷大都市区研究

Kongkoon Tochaiwat, Patcharida Pultawee
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引用次数: 0

摘要

明确住房开发项目的户型极为必要。然而,如今确定项目户型已成为一件棘手的事情,需要经验丰富的项目开发人员具备专业技能和知识。本研究旨在应用四种机器学习技术:决定树"、"随机森林"、"梯度提升树 "和 "集合分类器 "四种机器学习技术,对从泰国房地产公司市场报告中收集到的 179 个房地产项目数据进行分析,重点选择月平均销售率高于所有已购项目平均销售率的项目。通过这一过程,数据集减少了 59 个项目,包括 31 个联排别墅、22 个独栋别墅和 6 个半独立式别墅。因此,组合分类器模型的准确率最高,达到 90.91%。对识别项目类型影响最大的因素是与主干道、空中火车站、公共汽车站、医院和百货商店的距离。独栋别墅项目适用于潜力较大的地段。理想的地段应靠近主干道、公交车站、百货商店和医院。此外,联排别墅项目适用于中等潜力的地段,这些地段不靠近购物中心,但仍需要靠近医院、天车站或公共汽车站。最后,半独立式住宅项目是中等潜力地段的理想选择,这些地段需要靠近主干道,以便根据具体情况方便地前往天铁站或公共交通。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
House Type Specification for Housing Development Project Using Machine Learning Techniques: A Study From Bangkok Metropolitan Region, Thailand
Specifying the house type of a housing development project is extremely necessary. However, the determination of a project type nowadays has become a delicate matter, requiring the expertise and knowledge of seasoned project developers. This study aimed to apply four machine learning techniques: Decision Tree, Random Forest, Gradient Boosted Tree and Ensemble Classifier, to analyze the data from 179 housing estate projects collected from market reports of real estate companies in Thailand, with a focus on selecting projects with average monthly sales rates that are higher than the average of all acquired projects. This process resulted in a reduced dataset of 59 projects, including 31 townhouses, 22 single-family houses, and six semi-detached houses. As a result, the Ensemble Classifier model has the highest accuracy of 90.91%. The factors most influential in identifying the type of project are the distances from a main road, sky train station, bus station, hospital, and department store. Single-detached house projects are suitable for locations with high potential. The ideal location should be in proximity to a main road, bus station, department store, and hospital. In addition, townhouse projects are ideal for medium-potential locations that are not near shopping malls, but still require proximity to a hospital, sky train station, or bus station. Ultimately, semi-detached house projects are ideal for medium-potential locations that require proximity to a main road for convenient access to sky train station or public transportation, depending on the specific context.
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