Model Analysis of Urban Space and Social Risk-Taking a Criminal Case in Taoyuan City for Example

碩士 === 銘傳大學 === 都市規劃與防災學系碩士班 === 107 === This study want to study the criminal cases and other variables of Taoyuan City. Each space has different characteristics, and these spatial characteristics are affected by different indexs. This study will be explored in criminal cases. Therefore, we can use...

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Main Authors: ZENG, WEI-HAO, 曾偉豪
Other Authors: HU, CHICH-PING
Format: Others
Language:zh-TW
Published: 2018
Online Access:http://ndltd.ncl.edu.tw/handle/xftv8v
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spelling ndltd-TW-107MCU006530052019-05-16T01:24:52Z http://ndltd.ncl.edu.tw/handle/xftv8v Model Analysis of Urban Space and Social Risk-Taking a Criminal Case in Taoyuan City for Example 都市空間與社會風險之模型分析—以桃園市刑事案件為例 ZENG, WEI-HAO 曾偉豪 碩士 銘傳大學 都市規劃與防災學系碩士班 107 This study want to study the criminal cases and other variables of Taoyuan City. Each space has different characteristics, and these spatial characteristics are affected by different indexs. This study will be explored in criminal cases. Therefore, we can use spatial analysis to get the indexs for these effects. And the distribution of each variable, exploring whether it affects criminal cases. And to discuss whether the indexs are concentrated, scattered or random. In addition, after exploring spatial autocorrelation, using spatial regression analysis models (such as traditional regression model, spatial error model and spatial delay model) can be used to explore the relationship between indexs. And through spatial analysis to understand the indexs of criminal cases, find ways to reduce the incidence of criminal cases. HU, CHICH-PING 胡志平 2018 學位論文 ; thesis 57 zh-TW
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language zh-TW
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description 碩士 === 銘傳大學 === 都市規劃與防災學系碩士班 === 107 === This study want to study the criminal cases and other variables of Taoyuan City. Each space has different characteristics, and these spatial characteristics are affected by different indexs. This study will be explored in criminal cases. Therefore, we can use spatial analysis to get the indexs for these effects. And the distribution of each variable, exploring whether it affects criminal cases. And to discuss whether the indexs are concentrated, scattered or random. In addition, after exploring spatial autocorrelation, using spatial regression analysis models (such as traditional regression model, spatial error model and spatial delay model) can be used to explore the relationship between indexs. And through spatial analysis to understand the indexs of criminal cases, find ways to reduce the incidence of criminal cases.
author2 HU, CHICH-PING
author_facet HU, CHICH-PING
ZENG, WEI-HAO
曾偉豪
author ZENG, WEI-HAO
曾偉豪
spellingShingle ZENG, WEI-HAO
曾偉豪
Model Analysis of Urban Space and Social Risk-Taking a Criminal Case in Taoyuan City for Example
author_sort ZENG, WEI-HAO
title Model Analysis of Urban Space and Social Risk-Taking a Criminal Case in Taoyuan City for Example
title_short Model Analysis of Urban Space and Social Risk-Taking a Criminal Case in Taoyuan City for Example
title_full Model Analysis of Urban Space and Social Risk-Taking a Criminal Case in Taoyuan City for Example
title_fullStr Model Analysis of Urban Space and Social Risk-Taking a Criminal Case in Taoyuan City for Example
title_full_unstemmed Model Analysis of Urban Space and Social Risk-Taking a Criminal Case in Taoyuan City for Example
title_sort model analysis of urban space and social risk-taking a criminal case in taoyuan city for example
publishDate 2018
url http://ndltd.ncl.edu.tw/handle/xftv8v
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