Machine Learning Empowered Insights into Rental Market Behavior

F. Covaci
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Abstract

The aim of the current study is to determine which models are most suited for forecasting a property's rental price given a variety of provided characteristics and to develop a predictive model using machine learning techniques to estimate the rental prices of apartments in Cluj-Napoca, Romania, in relation to market dynamics. Given the absence of a comprehensive dataset tailored for this specific purpose, a primary focus was placed on data acquisition, cleaning, and transformation processes. By leveraging this dataset, the model aims to provide accurate predictions of fair rental prices within the Cluj-Napoca real estate market. Additionally, the research explores the factors influencing rental prices and evaluates the model's performance against real-world data to assess its practical utility and effectiveness in aiding rental market stakeholders.
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机器学习助力洞察租赁市场行为
当前研究的目的是确定哪些模型最适合根据所提供的各种特征预测房产的租金价格,并利用机器学习技术开发一个预测模型,以根据市场动态估算罗马尼亚克卢日-纳波卡公寓的租金价格。由于缺乏专门为此目的定制的综合数据集,因此主要重点放在数据采集、清理和转换过程上。通过利用该数据集,该模型旨在准确预测克卢日-纳波卡房地产市场的合理租金价格。此外,研究还探讨了影响租金价格的因素,并根据实际数据评估了模型的性能,以评估其在帮助租赁市场利益相关者方面的实用性和有效性。
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