Active Geospatial Search for Efficient Tenant Eviction Outreach
About
Tenant evictions threaten housing stability and are a major concern for many cities. An open question concerns whether data-driven methods enhance outreach programs that target at-risk tenants to mitigate their risk of eviction. We propose a novel active geospatial search (AGS) modeling framework for this problem. AGS integrates property-level information in a search policy that identifies a sequence of rental units to canvas to both determine their eviction risk and provide support if needed. We propose a hierarchical reinforcement learning approach to learn a search policy for AGS that scales to large urban areas containing thousands of parcels, balancing exploration and exploitation and accounting for travel costs and a budget constraint. Crucially, the search policy adapts online to newly discovered information about evictions. Evaluation using eviction data for a large urban area demonstrates that the proposed framework and algorithmic approach are considerably more effective at sequentially identifying eviction cases than baseline methods.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Cyber Defense | CyGym Volt Typhoon 50 devices | Avg Player Utility per Device2 | 7 | |
| Cyber Defense | CyGym Volt Typhoon 1000 devices | Avg Player Utility7 | 7 | |
| Cyber Defense | CyGym Volt Typhoon 100 devices | Average Player Utility per Device50 | 7 | |
| Cyber Defense | CyGym Volt Typhoon 10 devices | Avg Player Utility per Device0.03 | 7 | |
| Cyber Defense | CyGym Volt Typhoon 10000 devices | Avg Player Utility per Device0.002 | 7 |