CYLGMay 22, 2025

NY Real Estate Racial Equity Analysis via Applied Machine Learning

arXiv:2505.16946v3
Originality Synthesis-oriented
AI Analysis

This research addresses racial inequity in real estate for policymakers and communities, though it is incremental as it applies existing machine learning methods to a specific domain.

This study analyzed racial disparities in property ownership in New York State and New York City using an advanced race/ethnicity imputation model, revealing that White individuals hold a disproportionate share of properties and property value while Black, Hispanic, and Asian communities are underrepresented, with disparities most pronounced in minority-majority neighborhoods.

This study analyzes tract-level real estate ownership patterns in New York State (NYS) and New York City (NYC) to uncover racial disparities. We use an advanced race/ethnicity imputation model (LSTM+Geo with XGBoost filtering, validated at 89.2% accuracy) to compare the predicted racial composition of property owners to the resident population from census data. We examine both a Full Model (statewide) and a Name-Only LSTM Model (NYC) to assess how incorporating geospatial context affects our predictions and disparity estimates. The results reveal significant inequities: White individuals hold a disproportionate share of properties and property value relative to their population, while Black, Hispanic, and Asian communities are underrepresented as property owners. These disparities are most pronounced in minority-majority neighborhoods, where ownership is predominantly White despite a predominantly non-White population. Corporate ownership (LLCs, trusts, etc.) exacerbates these gaps by reducing owner-occupied opportunities in urban minority communities. We provide a breakdown of ownership vs. population by race for majority-White, -Black, -Hispanic, and -Asian tracts, identify those with extreme ownership disparities, and compare patterns in urban, suburban, and rural contexts. The findings underscore persistent racial inequity in property ownership, reflecting broader historical and socio-economic forces, and highlight the importance of data-driven approaches to address these issues.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes