Evidence Receipt. Related Resources.
Evidence Receipt. Related Resources.
Compared to this week’s papers
Verification pending
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Page Freshness
Canonical route: /signal-canvas/thinking-while-listening-fast-slow-recurrence-for-long-horizon-sequential-modeling
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Agent Handoff
Canonical ID thinking-while-listening-fast-slow-recurrence-for-long-horizon-sequential-modeling | Route /signal-canvas/thinking-while-listening-fast-slow-recurrence-for-long-horizon-sequential-modeling
REST example
curl https://sciencetostartup.com/api/v1/agent-handoff/signal-canvas/thinking-while-listening-fast-slow-recurrence-for-long-horizon-sequential-modelingMCP example
{
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}Claims: 7
References: Pending verification
Proof: Verification pending
Freshness state: computing
Source paper: Thinking While Listening: Fast-Slow Recurrence for Long-Horizon Sequential Modeling
PDF: https://arxiv.org/pdf/2604.01577v1
Source count: Pending verification
Coverage: 33%
Last proof check: 2026-04-03T20:50:41.059Z
Signal Canvas receipt window
/buildability/thinking-while-listening-fast-slow-recurrence-for-long-horizon-sequential-modeling
Subject: Thinking While Listening: Fast-Slow Recurrence for Long-Horizon Sequential Modeling
Verdict
Ignore
Verdict is Ignore because current viability and proof state do not clear the buildability gate.
Preparing verified analysis
Dimensions overall score 3.0
No public code linked for this paper yet.
By interleaving fast, recurrent latent updates with self-organizational ability between slow observation updates, our method facilitates the learning of stable internal structures that evolve alongside the input.
Directly and explicitly stated in the abstract as the core mechanism of the method.
partial
improving out-of-distribution generalization in reinforcement learning and algorithmic tasks compared to sequential baselines such as LSTM, state space models, and Transformer variants.
Directly stated in the abstract as a comparative result, though specific metrics are not provided.
partial
improving out-of-distribution generalization in reinforcement learning and algorithmic tasks compared to sequential baselines such as LSTM, state space models, and Transformer variants.
Directly stated in the abstract as a comparative result, though specific metrics are not provided.
partial
This mechanism allows the model to maintain coherent and clustered representations over long horizons
Directly stated in the abstract as a capability of the mechanism.
partial
We extend the recent latent recurrent modeling to sequential input streams.
Directly and explicitly stated as the paper's contribution in the first sentence of the abstract.
partial
fast, recurrent latent updates with self-organizational ability
Directly stated as a property of the fast updates in the abstract.
partial
improving out-of-distribution generalization in reinforcement learning and algorithmic tasks compared to sequential baselines such as LSTM, state space models, and Transformer variants.
Directly stated in the abstract as a comparative result, though specific metrics are not provided.
partial
Related resources will appear here when this paper maps cleanly to topic, benchmark, or dataset surfaces.
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Time to first demo
Insufficient data
No first-demo timestamp, owner estimate, or elapsed demo receipt is attached to this surface.
Structured compute envelope
Insufficient data
No data, compute, hardware, memory, latency, dependency, or serving requirement receipt is attached.
Receipt path
/buildability/thinking-while-listening-fast-slow-recurrence-for-long-horizon-sequential-modeling
Paper ref
thinking-while-listening-fast-slow-recurrence-for-long-horizon-sequential-modeling
arXiv id
2604.01577
Generated at
2026-04-03T20:50:41.059Z
Evidence freshness
stale
Last verification
2026-04-03T20:50:41.059Z
Sources
0
References
0
Coverage
33%
Lineage hash
57fa61a823ce420fa8ae000b9a805c174e3928baf36b19be70a5bc2afd188284
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.
Verification pending / evidence receipt incomplete
repo_url
references