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Main Authors: Chang, Chen-Wei, Cheng, Yu-Chieh, Tsai, Yun-En, Chen, Fanglan, Lu, Chang-Tien
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.00078
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author Chang, Chen-Wei
Cheng, Yu-Chieh
Tsai, Yun-En
Chen, Fanglan
Lu, Chang-Tien
author_facet Chang, Chen-Wei
Cheng, Yu-Chieh
Tsai, Yun-En
Chen, Fanglan
Lu, Chang-Tien
contents Access to metro systems plays a critical role in shaping urban housing markets by enhancing neighborhood accessibility and driving property demand. We present RailEstate, a novel web based system that integrates spatial analytics, natural language interfaces, and interactive forecasting to analyze how proximity to metro stations influences residential property prices in the Washington metropolitan area. Unlike static mapping tools or generic listing platforms, RailEstate combines 25 years of historical housing data with transit infrastructure to support low latency geospatial queries, time series visualizations, and predictive modeling. Users can interactively explore ZIP code level price patterns, investigate long term trends, and forecast future housing values around any metro station. A key innovation is our natural language chatbot, which translates plain-English questions e.g., What is the highest price in Falls Church in the year 2000? into executable SQL over a spatial database. This unified and interactive platform empowers urban planners, investors, and residents to derive actionable insights from metro linked housing data without requiring technical expertise.
format Preprint
id arxiv_https___arxiv_org_abs_2511_00078
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle RailEstate: An Interactive System for Metro Linked Property Trends
Chang, Chen-Wei
Cheng, Yu-Chieh
Tsai, Yun-En
Chen, Fanglan
Lu, Chang-Tien
Computers and Society
Artificial Intelligence
Databases
Access to metro systems plays a critical role in shaping urban housing markets by enhancing neighborhood accessibility and driving property demand. We present RailEstate, a novel web based system that integrates spatial analytics, natural language interfaces, and interactive forecasting to analyze how proximity to metro stations influences residential property prices in the Washington metropolitan area. Unlike static mapping tools or generic listing platforms, RailEstate combines 25 years of historical housing data with transit infrastructure to support low latency geospatial queries, time series visualizations, and predictive modeling. Users can interactively explore ZIP code level price patterns, investigate long term trends, and forecast future housing values around any metro station. A key innovation is our natural language chatbot, which translates plain-English questions e.g., What is the highest price in Falls Church in the year 2000? into executable SQL over a spatial database. This unified and interactive platform empowers urban planners, investors, and residents to derive actionable insights from metro linked housing data without requiring technical expertise.
title RailEstate: An Interactive System for Metro Linked Property Trends
topic Computers and Society
Artificial Intelligence
Databases
url https://arxiv.org/abs/2511.00078