• Mapping Affordability across the US

    Who Can Afford to Buy a Home in America?

    Owning a home is one of the most important ways of building wealth in America. As rises in home prices outpace rises in income, fewer and fewer Americans can afford to buy a home, causing the generational wealth gap to widen. Housing assistance programs are imperative to expand access to homeownership – particularly for Black Americans, who have historically been excluded from stable homeowning through policies and practices including redlining and exclusionary zoning. Designing effective housing assistance requires understanding where gaps in affordability currently exist for potential homeowners. Read more.

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  • OpenTSS: Countering Tenant Screening

    OpenTSS aims to develop a crowdsourcing tool and/or campaign to audit tenant screening services and reveal the patterns of their inner algorithms, data structures, and representations, by collecting tenant screening reports, as well as denied renters’ experiences. Read more.

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  • Race-Neutral vs Race-Conscious: Using Algorithmic Methods to Evaluate the Reparative Potential of Housing Programs

    The racial wealth gap in the US remains a persistent issue; white individuals possess six times more wealth than Black individuals. Leading scholars and public figures have pointed to slavery and post-slavery discrimination as root cause factors, and called for reparations. Yet the institutionalization of race-neutral ideologies in policies and practices hinders a reparative approach to closing the racial wealth gap. Read more.

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  • iBuyers and “Race for Profit”

    iBuyers use automated valuation algorithms and streamlined home-buying processes, including exemption of repairs before selling and cash offers, to purchase homes. Previous literature has examined the roles and limitations of iBuyers in the housing market, but there is a lack of empirical research on the racial implications of these algorithmic home-buying processes. Using spatial lag model, this study identifies spatial clustering of iBuyer profit margins and a statistically significant and positive correlation between profit margins and the rise in the proportion of Black or Latinx residents within a given neighborhood tract. This work will be submitted to Journal of Urban Affairs. Read more.

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  • Surveillance camera

    Studying the impact of police surveillance on racial bias using open data

    Using data from 2000+ police departments, this project measures the effects of policing technologies, including face recognition, drones, body-worn cameras, predictive policing, and home security partnerships, on racial biases in law enforcement.

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  • The Police or the Public? 911 Calls and Racial Discriminations in Policing

    A large proportion of police-citizen interactions are initiated by 911, and thus pairing 911 call data with police stop data provides a step toward a more systematic causal framework for estimating racial bias.

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  • Tradeoffs in Hotspot Predictive Policing

    Predictive policing systems use narrowly scoped data and narrowly defined objectives that lead to 'hotspot' policing — disproportionate policing of small areas. What impact does this have on communities beyond how it effects crime? We examine how algorithms can lead to changes in police practices and policies.

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  • Understanding the Causal Effect of Race in the Criminal Justice System

    Applying a systematic framework to causally understand the effect of race on policing, the policing team looks at linked data quantitatively to estimate how different races benefit or suffer differently from the same policy interventions.

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  • A Data Generative Approach to Criminal Justice Records Linkage Problems

    Linking law enforcement data, which is collected through heterogeneous administrative processes, into a stitched data set will provide a more systematic characterization and insightful understanding of law enforcement.

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  • Open Data Initiative on Criminal Justice

    Researchers are building datasets from various law enforcement-related sources, like body camera images, cell phone mobility data, and social media posts. With interfaces that support users from different programming backgrounds, this initiative will benefit law enforcement researchers across the US.

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Institute for Data, Systems, and Society (IDSS) is committed to addressing complex societal challenges by advancing education and research at the intersection of statistics, data science, information and decision systems, and social sciences.

News

MIT News | January 28, 2025

Expanding robot perception

IDSS faculty Luca Carlone is working to give robots a more human-like awareness of their environment.


CEE News | January 27, 2025

MIT students apply compositionality to real-world engineering design problems

Focusing on autonomous robotics and mobility, students in IDSS faculty Gioele Zardini's course learned a compositional design optimization framework language to formulate complex problems and solve them.


CEE News | January 27, 2025

MIT researchers awarded federal grant to enhance transit accessibility for underserved communities

IDSS faculty Jinhua Zhao and Gioele Zardini awarded grant to design, deploy and evaluate an integrated autonomous vehicles and public transportation system in Chicago.


Upcoming 2

IDSS Distinguished Seminar Series

TBA

Jennifer Pan (Stanford University)
MIT Building E18, Room 304
IDSS Distinguished Seminar Series

TBA

Johan Ugander (Stanford University)
MIT Building E18, Room 304

MIT Institute for Data, Systems, and Society
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