AEGIS: Hệ Thống Dự Phòng Cho Trí Tuệ Nhân Tạo Vật Lý

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AEGIS: Hệ Thống Dự Phòng Cho Trí Tuệ Nhân Tạo Vật Lý AEGIS: Phát Hi

AEGIS là phương pháp chọn lọc nâng cấp, sử dụng cảm biến nhẹ để phát hiện các bước nguy hiểm trong chính sách yếu. Khi phát hiện, hệ thống chuyển sang chính sách mạnh hơn chỉ cho những bước cần thiết. Kết quả cho thấy AEGIS cải thiện đáng kể hiệu suất so với các phương pháp khác.

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Abstract:Long-horizon robot manipulation tends to fail gradually: one bad step degrades the state, and the policy spirals into a basin from which it cannot recover. The failure is often visible before it happens. We introduce AEGIS (Activation-probe Early-warning, Gated Inference Switching), a selective escalation method that uses a lightweight probe on a weak policy's frozen activations to detect high-risk steps while there is still time to act. When the probe flags a step, control switches to a stronger separate policy, but only for the steps that need it. On LIBERO-Spatial, AEGIS recovers 10.1% of the trajectories the weak policy alone loses, versus 4.6% for budget-matched blind escalation and 5.1% for a random-trigger placebo. These gains are significant under one-sided exact paired McNemar tests with Holm-Bonferroni adjustment over three pre-registered contrasts: +5.4pp over blind escalation, p=8.5e-6; +5.0pp over random triggering, p=1.0e-4; paired-trajectory bootstrap CIs exclude zero. AEGIS activates the stronger policy on only 38% of steps, so the lever is timing rather than compute. The probe clears its precondition with an early-window AUROC of 0.764, 95% CI [0.70, 0.84], read from the weak-policy path over the first 30% of trajectory steps before any handoff. We pre-register the full analysis plan, including a conditional recovered-task-rate estimand and explicit kill criteria, and confirm the result on 700 common-random-number episodes per arm, with nA-fail=646.

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