HabitatAgent: An End-to-End Multi-Agent System for Housing Consultation

arXiv:2604.0055653.7h-index: 1
Predicted impact top 48% in LG · last 90 daysOriginality Incremental advance
AI Analysis

This addresses the need for reliable and auditable decision-support in housing selection, an incremental improvement over existing methods.

The paper tackled the problem of housing selection by developing HabitatAgent, an end-to-end multi-agent system for housing consultation, which achieved 95% accuracy in evaluations compared to a baseline of 75%.

Housing selection is a high-stakes and largely irreversible decision problem. We study housing consultation as a decision-support interface for housing selection. Existing housing platforms and many LLM-based assistants often reduce this process to ranking or recommendation, resulting in opaque reasoning, brittle multi-constraint handling, and limited guarantees on factuality. We present HabitatAgent, the first LLM-powered multi-agent architecture for end-to-end housing consultation. HabitatAgent comprises four specialized agent roles: Memory, Retrieval, Generation, and Validation. The Memory Agent maintains multi-layer user memory through internal stages for constraint extraction, memory fusion, and verification-gated updates; the Retrieval Agent performs hybrid vector--graph retrieval (GraphRAG); the Generation Agent produces evidence-referenced recommendations and explanations; and the Validation Agent applies multi-tier verification and targeted remediation. Together, these agents provide an auditable and reliable workflow for end-to-end housing consultation. We evaluate HabitatAgent on 100 real user consultation scenarios (300 multi-turn question--answer pairs) under an end-to-end correctness protocol. A strong single-stage baseline (Dense+Rerank) achieves 75% accuracy, while HabitatAgent reaches 95%.

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