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Evidence Receipt. Related Resources.
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Canonical ID adversarial-bandit-optimization-with-globally-bounded-perturbations-to-linear-losses | Route /signal-canvas/adversarial-bandit-optimization-with-globally-bounded-perturbations-to-linear-losses
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curl https://sciencetostartup.com/api/v1/agent-handoff/signal-canvas/adversarial-bandit-optimization-with-globally-bounded-perturbations-to-linear-lossesMCP example
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}Claims: 7
References: 23
Proof: Verification pending
Freshness state: computing
Source paper: Adversarial Bandit Optimization with Globally Bounded Perturbations to Linear Losses
PDF: https://arxiv.org/pdf/2603.26066v1
Source count: 3
Coverage: 50%
Last proof check: 2026-03-30T22:00:28.241Z
Signal Canvas receipt window
/buildability/adversarial-bandit-optimization-with-globally-bounded-perturbations-to-linear-losses
Subject: Adversarial Bandit Optimization with Globally Bounded Perturbations to Linear Losses
Verdict
Ignore
Verdict is Ignore because current viability and proof state do not clear the buildability gate.
Preparing verified analysis
Dimensions overall score 2.0
No public code linked for this paper yet.
The algorithm maintains a sequence {xt}T t=1⊂K , which is updated according to xt+1 = arg min x∈K { η ∑t τ =1 g⊤ τ x +R(x) }
This is a direct description of the SCRiBLe algorithm's update rule, explicitly stated in the text.
partial
SCRiBLe utilizes a ν-self-concordant barrier R, which always exists on the action setK.
This statement clearly defines a property of the SCRiBLe algorithm and its reliance on a specific type of barrier function.
partial
Under this model, we establish both expected and high-probability regret guarantees.
This is a primary result explicitly stated in the abstract and reinforced by the mention of Lemma 9's role in deriving these guarantees.
partial
As a special case of our analysis, we recover an improved high-probability regret bound for classical bandit linear optimization, which corresponds to the setting without perturbations.
This is a specific outcome of the general analysis, highlighted in the abstract as a notable consequence.
partial
We further complement our upper bounds by proving a lower bound on the expected regret.
This is a key theoretical contribution mentioned in the abstract, indicating a complete picture of the regret bounds.
partial
The lemmas presented above collectively lead to Lemma 9, which constitutes a key technical result of this paper. In particular, it establishes a bound on ∑T t=1 θ⊤ t xt−∑T t=1 θ⊤ t x∗
The text explicitly labels Lemma 9 as a 'key technical result' and describes its specific mathematical contribution.
partial
Theorem 12 For any horizon T ≥ 1 and any player, there exists an adversary generating a C-approximately linear function sequence such that the regr et is at least 2C.
This is a specific lower bound result presented as Theorem 12, with clear conditions and outcome.
partial
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Time to first demo
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Structured compute envelope
Insufficient data
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Receipt path
/buildability/adversarial-bandit-optimization-with-globally-bounded-perturbations-to-linear-losses
Paper ref
adversarial-bandit-optimization-with-globally-bounded-perturbations-to-linear-losses
arXiv id
2603.26066
Generated at
2026-03-30T22:00:28.241Z
Evidence freshness
stale
Last verification
2026-03-30T22:00:28.241Z
Sources
3
References
23
Coverage
50%
Lineage hash
7014d209b354ed16dcc2846ea6564e563f606853056ca8664f2fe38f9a146367
Canonical opportunity-kernel lineage hash.
External signature
unsigned_external
No founder, registry, pilot, or production-adoption signature is attached to this receipt.
Verification
not_verified
Verification is blocked until an external signature is provided.
23 refs / 3 sources / Verification pending
repo_url
proof_status