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Qualified Demand Capture (QD)

hypothesisDiscovery Layer

The amount or share of economically relevant demand captured as qualified enquiries, bookings, matches, or transactions.

Description

Qualified Demand Capture measures the actual economic outcomes that result from AI-mediated discovery processes. QD represents demand that successfully converts from interest to qualified economic activity. High QD indicates effective transmission from discovery to transaction. Low QD indicates transmission losses due to representation gaps, trust failures, or action constraints. QD is affected by AI Eligibility and affects both Distribution Dependency and Asset Productivity.

Related Concepts

Computational Eligibility (CE)AI-Mediated DiscoveryComputational Conversion (CC)Asset Productivity (AP)Qualified-Demand Productivity Transmission

Related Research

The Balance-Sheet Economics of AI-Mediated Demand

The migration of discovery and comparison from human-mediated search to AI-generated answers and agentic interfaces may alter the economics of acquiring and distributing demand in physical-asset markets. This paper examines how AI-mediated demand formation could affect customer acquisition costs, distribution dependency, contribution margins, and asset productivity in real estate and hospitality. We propose that zero-click—initially observed as a traffic problem—may transmit structurally into distribution cost inflation and ultimately appear as margin pressure. We formalize a transmission mechanism in which representation deficits may transmit through demand leakage, distribution dependency, and acquisition-cost inflation to contribution-margin compression, while lower qualified-demand capture may separately affect occupancy, time-to-match, and asset productivity. Contribution margin and asset productivity may subsequently interact through operating and reinvestment feedback effects. The paper introduces a measurement architecture designed for empirical validation: representation quality (VIS), readiness (GARI), market outcomes (ARS, PDD, CDL), financial impact (RAAC, CMP, RROI), and exploratory composite indices. The Verified Property Representation (VPR) is positioned as a proposed persistent representation layer intended to improve computational legibility—a testable intervention through which the paper's hypotheses may be validated.