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  Built environment and travel: Tackling non-linear residential self-selection with double machine learning

Nachtigall, F., Wagner, F., Berrill, P., Creutzig, F. (2025): Built environment and travel: Tackling non-linear residential self-selection with double machine learning. - Transportation Research Part D: Transport and Environment, 140, 104593.
https://doi.org/10.1016/j.trd.2025.104593

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 ???ViewItemFull_lblCreators???:
Nachtigall, Florian1, ???ENUM_CREATORROLE_AUTHOR???                 
Wagner, Felix1, ???ENUM_CREATORROLE_AUTHOR???           
Berrill, Peter2, ???ENUM_CREATORROLE_AUTHOR???
Creutzig, Felix1, ???ENUM_CREATORROLE_AUTHOR???                 
???ViewItemFull_lblAffiliations???:
1Potsdam Institute for Climate Impact Research, Potsdam, ou_persistent13              
2External Organizations, ou_persistent22              

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???ViewItemFull_lblSubject???: Urban form, Compact development, Travel behavior, Travel-related CO2 emissions, Moderating effects, Causal machine learning
 ???ViewItemFull_lblAbstract???: Understanding how the built environment influences travel is key to low-carbon urban planning. However, previous cross-sectional studies lack a realistic operationalization of residential self-selection that accounts for its non-linear nature, limiting its applicability to urban planning. We propose a double machine learning (DML) approach that accounts for nonlinearities in residential self-selection and captures non-linear moderating effects. Using travel diaries of 32,201 Berlin residents, we estimate the built environment’s impact on per capita travel-related CO2 emissions. Our results indicate that neglecting nonlinearities overestimates this impact by 13%–18%, inflating the built environment proportion by 13%pt. Age, income, and car ownership also nonlinearly moderate the built environment’s effect, with the effect being largest for middle-aged, high-income, car-owning households, a novel finding. Applying the method to urban planning reveals a 43%pt emissions reduction potential for 64,000 planned Berlin housing units, highlighting the need for evidence-based urban planning to effectively mitigate CO2 emissions in cities.

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???ViewItemFull_lblLanguages???: eng - English
 ???ViewItemFull_lblDates???: 2024-07-312025-01-032025-01-312025-03-01
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 ???ViewItemFull_lblIdentifiers???: ???ENUM_IDENTIFIERTYPE_DOI???: 10.1016/j.trd.2025.104593
???ENUM_IDENTIFIERTYPE_PIKDOMAIN???: RD5 - Climate Economics and Policy - MCC Berlin
???ENUM_IDENTIFIERTYPE_ORGANISATIONALK???: RD5 - Climate Economics and Policy - MCC Berlin
???ENUM_IDENTIFIERTYPE_WORKINGGROUP???: Cities: Data Science and Sustainable Planning
???ENUM_IDENTIFIERTYPE_RESEARCHTK???: Cities
???ENUM_IDENTIFIERTYPE_RESEARCHTK???: Decarbonization
???ENUM_IDENTIFIERTYPE_MODELMETHOD???: Machine Learning
???ENUM_IDENTIFIERTYPE_MDB_ID???: pending
???ENUM_IDENTIFIERTYPE_OATYPE???: Hybrid Open Access
???ENUM_IDENTIFIERTYPE_REGIONALK???: Germany
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???project_info_title??? : CircEular
???project_info_grant_id??? : 101056810
???project_info_funding_info_program_title??? : Horizon Europe (HE)
???project_info_funding_info_organization_title??? : European Commission (EC)

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???ViewItemFull_lblSourceTitle???: Transportation Research Part D: Transport and Environment
???ViewItemFull_lblSourceGenre???: ???ENUM_GENRE_JOURNAL???, SCI, Scopus
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???ENUM_IDENTIFIERTYPE_PUBLISHER???: Elsevier