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タスクごとの協働フレームワーク:人間とAIの「てこ比」を定量化する
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ポイント
- 人間とAIの協働における「てこ比」を、タスク指定や中断対応、結果レビューにかかる人間時間で割って定義した。
- この「てこ比」は、情報密度が方向性を持つことや、タスクの新規性による計画項の制約など、先行研究を定量的に統合する。
- タスクごとの上限は新規性で、ウィンドウ化された指標は蓄積された計画投資で上限が決まるが、どちらも有限である。
Abstract
We propose a per-task leverage ratio for human-agent collaboration: human work displaced by an agent, divided by the human time required to specify the task, resolve mid-run interrupts, and review the result. The denominator decomposes into three channels through which a conserved per-task information requirement must flow, each with its own time-cost scalar. We show that information density itself is directional and bounded by separate ceilings on human-to-agent and agent-to-human flow, and that the asymptotic behavior of leverage decomposes into two scaling axes (capability and memory) with a non-zero floor on the planning term set by irreducible task novelty bounded by human throughput. We extend this per-task analysis to a windowed leverage measure that accommodates recurring tasks, spawned subtasks, and amortized system-design investment. The per-task ceiling does not bind the windowed measure, though both remain bounded: $L_{text{task}}$ by per-task novelty, $L_{text{window}}$ by the stock of accumulated planning investment that pays out within the window. The framework operationalizes aspects of earlier qualitative work on supervisory control (Sheridan, 1992), common ground (Clark & Brennan, 1991), and mixed-initiative interaction (Horvitz, 1999) within a single normative ratio, and produces a list of testable empirical questions that we leave as open problems.
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