Dynamic Grouping for Climate Change Negotiation: Facilitating
Cooperation and Balancing Interests through Effective Strategies
- URL: http://arxiv.org/abs/2307.13893v1
- Date: Wed, 26 Jul 2023 01:34:43 GMT
- Title: Dynamic Grouping for Climate Change Negotiation: Facilitating
Cooperation and Balancing Interests through Effective Strategies
- Authors: Yu Qin, Duo Zhang, Yuren Pang
- Abstract summary: We develop a three-stage process: group formation and updates, intra-group negotiation, and inter-group negotiation.
Our model promotes efficient and effective cooperation between various stakeholders to achieve global climate change objectives.
We demonstrate our negotiation model within the RICE-N framework, illustrating a promising approach for facilitating international cooperation on climate change mitigation.
- Score: 9.724269599288748
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this paper, we propose a dynamic grouping negotiation model for climate
mitigation based on real-world business and political negotiation protocols.
Within the AI4GCC competition framework, we develop a three-stage process:
group formation and updates, intra-group negotiation, and inter-group
negotiation. Our model promotes efficient and effective cooperation between
various stakeholders to achieve global climate change objectives. By
implementing a group-forming method and group updating strategy, we address the
complexities and imbalances in multi-region climate negotiations. Intra-group
negotiations ensure that all members contribute to mitigation efforts, while
inter-group negotiations use the proposal-evaluation framework to set
mitigation and savings rates. We demonstrate our negotiation model within the
RICE-N framework, illustrating a promising approach for facilitating
international cooperation on climate change mitigation.
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