Using spatial big data to analyse neighbourhood effects on immigrant inclusion and well-being
This paper examines how the social and built environment shapes preference on protectionist immigration policy, generalised trust, and life satisfaction. It seeks to understand the intergroup processes that underpin intergroup contact and acculturation in the neighbourhoods by combining an individua...
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sg-ntu-dr.10356-1805892024-10-20T15:44:20Z Using spatial big data to analyse neighbourhood effects on immigrant inclusion and well-being Leong, Chan-Hoong Ang, Angelica Ting Yi Tambyah, Siok Kuan S. Rajaratnam School of International Studies Social Sciences Immigration Ethnicity This paper examines how the social and built environment shapes preference on protectionist immigration policy, generalised trust, and life satisfaction. It seeks to understand the intergroup processes that underpin intergroup contact and acculturation in the neighbourhoods by combining an individual-level survey (n = 1188) with census information on housing resale transactions (as proxy of socio-economic class) and other geospatial points of interest. Analyses of spatial big data revealed that neighbourhoods with a higher density of ethnic minorities and immigrant households are characterised by lower trust and quality of life. In contrast, neighbourhoods with a higher density of immigrant households are associated with a preference for a protectionist immigration policy (mitigated by proximity to community clubs). These environmental factors are associated with the outcome even after controlling for individual-level differences. Importantly, the findings underscore the enduring influence of ethnicity and immigrant identities more than the socio-economic background of the neighbourhood. Intergroup contact alone is insufficient to foster inclusion, especially in locales densely populated with ethnic minorities and immigrant communities. Shared amenities, such as community clubs, were found to play a crucial role in creating a conducive environment for meaninful contact. Submitted/Accepted version 2024-10-14T05:30:03Z 2024-10-14T05:30:03Z 2024 Journal Article Leong, C., Ang, A. T. Y. & Tambyah, S. K. (2024). Using spatial big data to analyse neighbourhood effects on immigrant inclusion and well-being. International Journal of Intercultural Relations, 102, 102020-. https://dx.doi.org/10.1016/j.ijintrel.2024.102020 0147-1767 https://hdl.handle.net/10356/180589 10.1016/j.ijintrel.2024.102020 2-s2.0-85199515026 102 102020 en International Journal of Intercultural Relations © 2024 Elsevier Ltd. All rights reserved. This article may be downloaded for personal use only. Any other use requires prior permission of the copyright holder. The Version of Record is available online at http://doi.org/10.1016/j.ijintrel.2024.102020. application/pdf |
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Social Sciences Immigration Ethnicity Leong, Chan-Hoong Ang, Angelica Ting Yi Tambyah, Siok Kuan Using spatial big data to analyse neighbourhood effects on immigrant inclusion and well-being |
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This paper examines how the social and built environment shapes preference on protectionist immigration policy, generalised trust, and life satisfaction. It seeks to understand the intergroup processes that underpin intergroup contact and acculturation in the neighbourhoods by combining an individual-level survey (n = 1188) with census information on housing resale transactions (as proxy of socio-economic class) and other geospatial points of interest. Analyses of spatial big data revealed that neighbourhoods with a higher density of ethnic minorities and immigrant households are characterised by lower trust and quality of life. In contrast, neighbourhoods with a higher density of immigrant households are associated with a preference for a protectionist immigration policy (mitigated by proximity to community clubs). These environmental factors are associated with the outcome even after controlling for individual-level differences. Importantly, the findings underscore the enduring influence of ethnicity and immigrant identities more than the socio-economic background of the neighbourhood. Intergroup contact alone is insufficient to foster inclusion, especially in locales densely populated with ethnic minorities and immigrant communities. Shared amenities, such as community clubs, were found to play a crucial role in creating a conducive environment for meaninful contact. |
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S. Rajaratnam School of International Studies |
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S. Rajaratnam School of International Studies Leong, Chan-Hoong Ang, Angelica Ting Yi Tambyah, Siok Kuan |
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Article |
author |
Leong, Chan-Hoong Ang, Angelica Ting Yi Tambyah, Siok Kuan |
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Leong, Chan-Hoong |
title |
Using spatial big data to analyse neighbourhood effects on immigrant inclusion and well-being |
title_short |
Using spatial big data to analyse neighbourhood effects on immigrant inclusion and well-being |
title_full |
Using spatial big data to analyse neighbourhood effects on immigrant inclusion and well-being |
title_fullStr |
Using spatial big data to analyse neighbourhood effects on immigrant inclusion and well-being |
title_full_unstemmed |
Using spatial big data to analyse neighbourhood effects on immigrant inclusion and well-being |
title_sort |
using spatial big data to analyse neighbourhood effects on immigrant inclusion and well-being |
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2024 |
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https://hdl.handle.net/10356/180589 |
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