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首页> 外文期刊>International Journal of Data Science and Analytics >Location identification for real estate investment using data analytics
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Location identification for real estate investment using data analytics

机译:使用数据分析的房地产投资的位置识别

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摘要

The modeling and control of complex systems, such as transportation, communication, power grids or real estate, require vast amounts of data to be analyzed. The number of variables in the models of such systems is large, typically a few hundred or even thousands. Computing the relationships between these variables, extracting the dominant variables and predicting the temporal and spatial dynamics of the variables are the general focuses of data analytics research. Statistical modeling and artificial intelligence have emerged as crucial solution enablers to these problems. The problem of real estate investment involves social, governmental, environmental and financial factors. Existing work on real estate investment focuses predominantly on the trend predictions of house pricing exclusively from financial factors. In practice, real estate investment is influenced by multiple factors (stated above), and computing an optimal choice is a multivariate optimization problem and lends itself naturally to machine learning-based solutions. In this work, we focus on setting up a machine learning framework to identify an optimal location for investment, given a preference set of an investor. We consider, in this paper, the problem to only direct real estate factors (bedroom type, garage spaces, etc.), other indirect factors like social, governmental, etc., will be incorporated into future work, in the same framework. Two solution approaches are presented here: first, decision trees and principal component analysis (PC A) with K-means clustering to compute optimal locations. In the second, PC A is replaced by artificial neural networks, and both methods are contrasted. To the best of our knowledge, this is the first work where the machine learning framework is introduced to incorporate all realistic parameters influencing the real estate investment decision. The algorithms are verified on the real estate data available in the TerraFly platform.
机译:复杂系统的建模和控制,如运输,通信,电网或房地产,需要分析大量数据。此类系统模型中的变量数大,通常是几百甚至数千个。计算这些变量之间的关系,提取主导变量并预测变量的时间和空间动态是数据分析研究的一般侧重。统计建模和人工智能已成为关键的解决方案使这些问题推动。房地产投资问题涉及社会,政府,环境和财务因素。房地产投资的现有工作主要关注房屋定价的趋势预测,其特征来自财务因素。在实践中,房地产投资受到多种因素的影响(上面规定),计算最佳选择是多元化优化问题,自然地引起基于机器学习的解决方案。在这项工作中,考虑到投资者的偏好组,我们专注于建立机器学习框架以确定投资的最佳位置。我们认为,本文只有直接房地产因素(卧室型,车库空间等),其他间接因素,如社会,政府等,将在同一框架中纳入未来的工作。此处提出了两个解决方案方法:首先,决策树和主成分分析(PC A)与K-means群集以计算最佳位置。在第二个中,PC A被人工神经网络所取代,两种方法形成对比。据我们所知,这是引入机器学习框架的第一项工作,以纳入影响房地产投资决策的所有现实参数。该算法在Terrafly平台中的房地产数据上验证。

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