A Heuristic Robust Approach for Real Estate Valuation in Areas with Few Transactions

Publikation: Beitrag in Buch/Bericht/Sammelwerk/KonferenzbandAufsatz in KonferenzbandForschung

Autoren

Organisationseinheiten

Externe Organisationen

  • Technische Universität Dresden
Forschungs-netzwerk anzeigen

Details

OriginalspracheDeutsch
Titel des SammelwerksFIG Working Week 2017
UntertitelSurveying the world of tomorrow - From digitalisation to augmented reality
PublikationsstatusVeröffentlicht - 2017

Abstract

The German market transparency is mainly realizedby results of analyzingpurchase prices. Often, the purchases are analyzedin the context of aregression approach. The results are only reliable in areas with large numbers of purchases. However, in areas with only few transactions the solution of regression is not satisfactory. Furthermore, the purchase prices may contain outliers. Especially in areas with few transactions, the detection of outliers is a challenging task. This study presents three different estimation approaches which aredealingwith outliers. The first approach uses the data snooping to detect the outliers. The second approach is based on a heuristicRANSAC (random sample consensus) algorithm. The thirdapproach uses non–informative robust Bayesian regression techniques, in whichthe normal distribution of the likelihood data is replaced by a Student–distribution to ensure the robustness.The aim of this study is to investigate these three approachesin their efficiencyto deal with outliers in areas with few transactions. For this purpose a closed loop simulationiscarried. The results of the threerobust approachesare compared based on the knownregression coefficients and on the known observations. The results ofthe data snooping and RANSAC showthat the estimationfailmore often than the estimation by means of the robust Bayesian approach, which showsa suitable result forareas with few transactions.

Zitieren

A Heuristic Robust Approach for Real Estate Valuation in Areas with Few Transactions. / Dorndorf, Alexander; Soot, Matthias; Weitkamp, Alexandra et al.
FIG Working Week 2017: Surveying the world of tomorrow - From digitalisation to augmented reality. 2017.

Publikation: Beitrag in Buch/Bericht/Sammelwerk/KonferenzbandAufsatz in KonferenzbandForschung

Dorndorf, A, Soot, M, Weitkamp, A & Alkhatib, H 2017, A Heuristic Robust Approach for Real Estate Valuation in Areas with Few Transactions. in FIG Working Week 2017: Surveying the world of tomorrow - From digitalisation to augmented reality.
Dorndorf, A., Soot, M., Weitkamp, A., & Alkhatib, H. (2017). A Heuristic Robust Approach for Real Estate Valuation in Areas with Few Transactions. In FIG Working Week 2017: Surveying the world of tomorrow - From digitalisation to augmented reality
Dorndorf A, Soot M, Weitkamp A, Alkhatib H. A Heuristic Robust Approach for Real Estate Valuation in Areas with Few Transactions. in FIG Working Week 2017: Surveying the world of tomorrow - From digitalisation to augmented reality. 2017
Dorndorf, Alexander ; Soot, Matthias ; Weitkamp, Alexandra et al. / A Heuristic Robust Approach for Real Estate Valuation in Areas with Few Transactions. FIG Working Week 2017: Surveying the world of tomorrow - From digitalisation to augmented reality. 2017.
Download
@inproceedings{407749b69b7347c2a4ecd841efdbc974,
title = "A Heuristic Robust Approach for Real Estate Valuation in Areas with Few Transactions",
abstract = "The German market transparency is mainly realizedby results of analyzingpurchase prices. Often, the purchases are analyzedin the context of aregression approach. The results are only reliable in areas with large numbers of purchases. However, in areas with only few transactions the solution of regression is not satisfactory. Furthermore, the purchase prices may contain outliers. Especially in areas with few transactions, the detection of outliers is a challenging task. This study presents three different estimation approaches which aredealingwith outliers. The first approach uses the data snooping to detect the outliers. The second approach is based on a heuristicRANSAC (random sample consensus) algorithm. The thirdapproach uses non–informative robust Bayesian regression techniques, in whichthe normal distribution of the likelihood data is replaced by a Student–distribution to ensure the robustness.The aim of this study is to investigate these three approachesin their efficiencyto deal with outliers in areas with few transactions. For this purpose a closed loop simulationiscarried. The results of the threerobust approachesare compared based on the knownregression coefficients and on the known observations. The results ofthe data snooping and RANSAC showthat the estimationfailmore often than the estimation by means of the robust Bayesian approach, which showsa suitable result forareas with few transactions.",
author = "Alexander Dorndorf and Matthias Soot and Alexandra Weitkamp and Hamza Alkhatib",
year = "2017",
language = "Deutsch",
booktitle = "FIG Working Week 2017",

}

Download

TY - GEN

T1 - A Heuristic Robust Approach for Real Estate Valuation in Areas with Few Transactions

AU - Dorndorf, Alexander

AU - Soot, Matthias

AU - Weitkamp, Alexandra

AU - Alkhatib, Hamza

PY - 2017

Y1 - 2017

N2 - The German market transparency is mainly realizedby results of analyzingpurchase prices. Often, the purchases are analyzedin the context of aregression approach. The results are only reliable in areas with large numbers of purchases. However, in areas with only few transactions the solution of regression is not satisfactory. Furthermore, the purchase prices may contain outliers. Especially in areas with few transactions, the detection of outliers is a challenging task. This study presents three different estimation approaches which aredealingwith outliers. The first approach uses the data snooping to detect the outliers. The second approach is based on a heuristicRANSAC (random sample consensus) algorithm. The thirdapproach uses non–informative robust Bayesian regression techniques, in whichthe normal distribution of the likelihood data is replaced by a Student–distribution to ensure the robustness.The aim of this study is to investigate these three approachesin their efficiencyto deal with outliers in areas with few transactions. For this purpose a closed loop simulationiscarried. The results of the threerobust approachesare compared based on the knownregression coefficients and on the known observations. The results ofthe data snooping and RANSAC showthat the estimationfailmore often than the estimation by means of the robust Bayesian approach, which showsa suitable result forareas with few transactions.

AB - The German market transparency is mainly realizedby results of analyzingpurchase prices. Often, the purchases are analyzedin the context of aregression approach. The results are only reliable in areas with large numbers of purchases. However, in areas with only few transactions the solution of regression is not satisfactory. Furthermore, the purchase prices may contain outliers. Especially in areas with few transactions, the detection of outliers is a challenging task. This study presents three different estimation approaches which aredealingwith outliers. The first approach uses the data snooping to detect the outliers. The second approach is based on a heuristicRANSAC (random sample consensus) algorithm. The thirdapproach uses non–informative robust Bayesian regression techniques, in whichthe normal distribution of the likelihood data is replaced by a Student–distribution to ensure the robustness.The aim of this study is to investigate these three approachesin their efficiencyto deal with outliers in areas with few transactions. For this purpose a closed loop simulationiscarried. The results of the threerobust approachesare compared based on the knownregression coefficients and on the known observations. The results ofthe data snooping and RANSAC showthat the estimationfailmore often than the estimation by means of the robust Bayesian approach, which showsa suitable result forareas with few transactions.

M3 - Aufsatz in Konferenzband

BT - FIG Working Week 2017

ER -

Von denselben Autoren