A Residential District Land Value Model - Case Study in Sanshia,Taipei County

碩士 === 國立政治大學 === 地政研究所 === 97 === How to estimate the announced current land value objectively and systematically is always a hot issue in land valuation research field. And, since the announced current land value is the foundation for levying the land value increment tax and compensation when land...

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Main Author: 李建德
Other Authors: Chang, Chin-Oh
Format: Others
Language:zh-TW
Published: 2009
Online Access:http://ndltd.ncl.edu.tw/handle/11063880890706356000
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spelling ndltd-TW-097NCCU51330302015-11-20T04:19:25Z http://ndltd.ncl.edu.tw/handle/11063880890706356000 A Residential District Land Value Model - Case Study in Sanshia,Taipei County 住宅區段地價估價模型之建立-臺北縣三峽鎮為例 李建德 碩士 國立政治大學 地政研究所 97 How to estimate the announced current land value objectively and systematically is always a hot issue in land valuation research field. And, since the announced current land value is the foundation for levying the land value increment tax and compensation when land expropriation, the risk of unfairness might happen if the announced current land value is not objective and systematical. Under the announced current land value system, most parcel land values are produced using the district land value. Although decades of valuation experience by assessors, the district land value would not necessarily reflect fundamental value effectively. Taking into consideration of the difference between the degree the zoning affect the land value and the heterogeneity characteristic of land, this paper construct district land value model on different zoning. The empirical study region is the residential zoning area in the Sanshia Township, for its landscape with new and old mixed buildings, featuring metropolitan development characteristic, and stable sales transaction volume. The empirical time period is from 2000 to 2009. The district land value estimated from sales, collected from the Shulin Land Office, is the dependent variable. The selection of the independent variables is in line with the region factors of common residential area regulated by “The Regulations on the Land Value Investigation and Estimation” after combining similar attributes for easing the bias possibility from co linearity. The empirical result shows the significant variables are the ratio of constructed road area to total area within the land value district, parking convenience, development potentiality and the distance from bus station, junior, elementary schools, market, service facilities, graveyard, etc. The model fit is good with adj-R2. This paper hopes to increase the automation degree of the announced current land value and make the announced current land value objectively and systematically by establishment of the district land value model. Chang, Chin-Oh 張金鶚 2009 學位論文 ; thesis 67 zh-TW
collection NDLTD
language zh-TW
format Others
sources NDLTD
description 碩士 === 國立政治大學 === 地政研究所 === 97 === How to estimate the announced current land value objectively and systematically is always a hot issue in land valuation research field. And, since the announced current land value is the foundation for levying the land value increment tax and compensation when land expropriation, the risk of unfairness might happen if the announced current land value is not objective and systematical. Under the announced current land value system, most parcel land values are produced using the district land value. Although decades of valuation experience by assessors, the district land value would not necessarily reflect fundamental value effectively. Taking into consideration of the difference between the degree the zoning affect the land value and the heterogeneity characteristic of land, this paper construct district land value model on different zoning. The empirical study region is the residential zoning area in the Sanshia Township, for its landscape with new and old mixed buildings, featuring metropolitan development characteristic, and stable sales transaction volume. The empirical time period is from 2000 to 2009. The district land value estimated from sales, collected from the Shulin Land Office, is the dependent variable. The selection of the independent variables is in line with the region factors of common residential area regulated by “The Regulations on the Land Value Investigation and Estimation” after combining similar attributes for easing the bias possibility from co linearity. The empirical result shows the significant variables are the ratio of constructed road area to total area within the land value district, parking convenience, development potentiality and the distance from bus station, junior, elementary schools, market, service facilities, graveyard, etc. The model fit is good with adj-R2. This paper hopes to increase the automation degree of the announced current land value and make the announced current land value objectively and systematically by establishment of the district land value model.
author2 Chang, Chin-Oh
author_facet Chang, Chin-Oh
李建德
author 李建德
spellingShingle 李建德
A Residential District Land Value Model - Case Study in Sanshia,Taipei County
author_sort 李建德
title A Residential District Land Value Model - Case Study in Sanshia,Taipei County
title_short A Residential District Land Value Model - Case Study in Sanshia,Taipei County
title_full A Residential District Land Value Model - Case Study in Sanshia,Taipei County
title_fullStr A Residential District Land Value Model - Case Study in Sanshia,Taipei County
title_full_unstemmed A Residential District Land Value Model - Case Study in Sanshia,Taipei County
title_sort residential district land value model - case study in sanshia,taipei county
publishDate 2009
url http://ndltd.ncl.edu.tw/handle/11063880890706356000
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