房地产评估中的神经网络和线性模型:成套选择程序的影响

Q1 Social Sciences Valori e Valutazioni Pub Date : 2024-07-01 DOI:10.48264/vvsiev-20243505
Matteo Galante, Silvio Giove, Paolo Rosato
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引用次数: 0

摘要

神经网络在房地产评估中的应用最近再次受到科学界的关注。一般来说,有效使用神经网络需要有一个大型数据库,否则,即使在 "训练集 "上表现出色,也有可能获得令人不满意的泛化特性(即所谓的过拟合效应)。另一方面,众所周知的多元回归模型(MRA)在优化时需要的参数较少,但却无法捕捉复杂的非线性关系。由于在房地产市场上通常很难找到大型数据库,因此多元回归模型通常比人工神经网络(ANN)能提供更好的结果。此外,后者需要花费大量精力进行有效训练,包括寻找最佳结构和估算特征参数。为建立高效的神经网络而进行的优化过程需要长时间的工作和强大的计算能力。这篇论文概述了使用神经网络的技术现状,并证实房地产市场数据的稀缺往往成为神经网络具体应用的严重障碍,随后提出了一种创新算法,用于选择训练过程中使用的数据。这种算法似乎能够提高预测性能:力求充分利用现有信息进行学习的网络,在概括基本现象的行为方面,似乎比那些使用完全随机选择的数据进行训练的网络(通常在实践中是这样做的)能力更强。
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Neural networks and linear models in real estate appraisal: the impact of sets selection procedures
IThe use of Neural Networks in real estate appraisal has been recently subject of renewed interest by the scientific community. Generally, their effective use requires the availability of a large database, otherwise facing the real risk, even with an excellent performance on the «training set», of obtaining unsatisfactory generalisation properties (the so called over fitting effect). The well-known multiple regression models (MRAs), on the other side, require fewer parameters for their optimisation but are unable to capture complex nonlinear relationships. Since large databases are usually difficult to find in the real estate market, MRA models often provide better results than Artificial Neural Networks (ANNs). Furthermore, the latter require considerable effort to be effectively trained, both in finding the best structure and in estimating the characterising parameters. The optimisation process that leads to an efficient neural network requires a long job as well as considerable computational capabilities. This contribution, after outlining the state of the art in the use of ANNs and confirming that the scarcity of real estate market data often turned out to be a serious obstacle in their concrete application, proposed an innovative algorithm for selecting the data used in the training process. Such an algorithm seems to be able to improve predictive performance: networks that seek to take full advantage of the information available for learning seem to have better abilities in generalising the behaviour of the underlying phenomenon than those that are trained with completely randomly selected data, as usually done in practice.
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来源期刊
Valori e Valutazioni
Valori e Valutazioni Social Sciences-Law
CiteScore
2.30
自引率
0.00%
发文量
16
审稿时长
12 weeks
期刊介绍: La rivista ufficiale della SIEV si intitola “Valori e Valutazioni. Teorie ed esperienze”/“Valori e Valutazioni” is the official journal of the Italian Society of Property Evaluation and Investment Decision (SIEV).La rivista si propone di diffondere la cultura della valutazione nei seguenti campi tematici: • architettura, ingegneria civile, edile, dell’ambiente e del territorio, • pianificazione territoriale, urbanistica e ambientale; • investimenti pubblici e privati di natura immobiliare e infrastrutturale; • mercato immobiliare e produzione edilizia; • tutela, valorizzazione e gestione dei beni culturali e ambientali; • finanza immobiliare. A tal fine analizza originali problemi valutativi ed espone applicazioni metodologiche avanzate, alimentando il dibattito scientifico-culturale. Data la multidisciplinarietà dei temi trattati, la rivista si rivolge ad un pubblico molto ampio ed eterogeneo costituito da studiosi e ricercatori, professionisti, imprenditori, tecnici e funzionari della Pubblica Amministrazione.
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