Developing frameworks for an equitable future: from building decarbonization to generative modeling.

In this thesis I develop computational frameworks to understand equity under two perspectives: building decarbonization policy and generative modeling. Part 1 - Equitable building decarbonization Buildings significantly contribute to global carbon emissions, necessitating urgent decarbonization...

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Bibliographic Details
Main Author: De Simone, Zoe
Other Authors: Reinhart, Christoph
Format: Thesis
Published: Massachusetts Institute of Technology 2024
Online Access:https://hdl.handle.net/1721.1/157353
https://orcid.org/0000-0001-9138-9362
Description
Summary:In this thesis I develop computational frameworks to understand equity under two perspectives: building decarbonization policy and generative modeling. Part 1 - Equitable building decarbonization Buildings significantly contribute to global carbon emissions, necessitating urgent decarbonization to meet 2050 climate targets. The U.S. strives for net-zero emissions by 2050, supported by federal incentives promoting building upgrades. However, financing deep retrofits for all U.S. homes exceeds available public funds. This chapter proposes a model that examines long-term carbon reduction trajectories under various incentive policies, focusing on fairness and equity. Using Oshkosh, WI, as a case study, it explores the philosophical, economic, political, and mathematical dimensions of creating just and effective decarbonization policies that ensure healthy, low-carbon homes for all. Part 2 - Equitable diffusion models Generative Text-to-Image (TTI) models, while capable of producing high-quality images, often replicate training data biases. Traditional fairness views in machine learning, which consider fairness as binary, are challenged. This section introduces DiffusionWorldViewer, a novel framework with a Web UI that enables users to analyze the underlying worldviews of diffusion models and edit model outputs to align with their personal fairness perspectives, thus promoting a diverse understanding of fairness in AI technologies.