Environmental policy research fails to integrate procedural and recognitional justice perspectives and collective actions in governance learning for just climate adaptations. Drawing on the insights of two cities experiencing climate impacts differently, Bergen (Norway) and Istanbul (Turkey), this paper assesses how collective actions influence different levels of governments (local to national) to learn from these actions to implement just climate actions in their localities. Using environmental justice (specifically recognition and procedural) and policy learning literature, we contextualize a three-governance learning typology that emerges through collective actions that may trigger governance structures for policy integration: governance learning by resisting, co-opting, and expanding. We identify what kind of learning is introduced to the existing governance structures in Bergen and Istanbul, and how that learning shapes or is shaped by the governance structures, local government in Bergen and local to national governments in Istanbul, while developing climate adaptation policies and actions. Overall, this paper shows what types of knowledge and information are incorporated or ignored after collective actions and how power mediates interactions between actors across multiple urban settings for just climate adaptation.
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