Version history

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  1. Live 272673dab93e
    5/17/2026, 4:35:28 PM
    Content snapshot
    {
      "scope": "rate-based recurrent neural network model, compared to rodent and monkey PFC",
      "claim_text": "A rate RNN trained on a context-dependent decision-making task spontaneously forms line attractors in low-dimensional subspaces to integrate sensory evidence after maintaining context cues with stable low-activity persistent states.",
      "raw_fields": {
        "n": 0,
        "doi": "10.1016/j.isci.2021.102919",
        "claim": "A rate RNN trained on a context-dependent decision-making task spontaneously forms line attractors in low-dimensional subspaces to integrate sensory evidence after maintaining context cues with stable low-activity persistent states.",
        "cite_key": "Zhang2021b",
        "evidence": "Rate RNN trained on context-dependent decision-making and analyzed with dynamic epoch-wise PCA; compared to rodent and monkey PFC features.",
        "effect_size": "qualitative",
        "text_access": "abstract_only",
        "study_system": "rate-based recurrent neural network model, compared to rodent and monkey PFC",
        "argument_role": "supporting",
        "replication_status": "independently_replicated",
        "claim_source_sentence": "In low-dimensional neural representations, the trained RNN first encoded the context cues in a cue-specific subspace, and then maintained the cue information with a stable low-activity state persisting during the delay epoch, and further formed line attractors for sensor integration through low-dimensional neural trajectories to guide decision-making.",
        "source_provenance_status": "non_substring_match",
        "replication_evidence_dois": [
          "10.1038/nature12742",
          "10.1038/nn.4244"
        ],
        "effect_size_source_sentence": null
      },
      "section_id": "section_13",
      "source_url": "https://github.com/AllenNeuralDynamics/ComputationalReviewRecurrence/blob/79ce062d54a924ce05953ec90aa9d26044d2b48f/evidence/section_13_evidence_package.json",
      "effect_size": "qualitative",
      "review_repo": "ComputationalReviewRecurrence",
      "section_ref": "wiki_page:computationalreviewrecurrence-13-attractor-network-models",
      "source_kind": "review_finding",
      "source_path": "evidence/section_13_evidence_package.json",
      "source_refs": [
        "paper:paper-dfff2eb1779e"
      ],
      "source_span": "In low-dimensional neural representations, the trained RNN first encoded the context cues in a cue-specific subspace, and then maintained the cue information with a stable low-activity state persisting during the delay epoch, and further formed line attractors for sensor integration through low-dimensional neural trajectories to guide decision-making.",
      "study_system": "rate-based recurrent neural network model, compared to rodent and monkey PFC",
      "evidence_refs": [
        {
          "ref": "paper:paper-dfff2eb1779e"
        }
      ],
      "section_title": "13. Attractor-network models — Hopfield, ring, line, bump; what each model requires of the cortical E→E matrix and what the mouse empirical record provides",
      "source_policy": {
        "mode": "public_source_pointer_with_short_context",
        "notes": [
          "Local review repositories are read-only inputs.",
          "SciDEX stores paper metadata, structured evidence, file pointers, and short citation contexts; it does not copy full review prose."
        ],
        "source_commit_sha": "79ce062d54a924ce05953ec90aa9d26044d2b48f",
        "source_repository_url": "https://github.com/AllenNeuralDynamics/ComputationalReviewRecurrence"
      },
      "evidence_summary": "Rate RNN trained on context-dependent decision-making and analyzed with dynamic epoch-wise PCA; compared to rodent and monkey PFC features.",
      "review_bundle_ref": "analysis_bundle:ab-d9c479db9be9",
      "replication_status": "independently_replicated",
      "review_package_ref": "analysis_bundle:ab-d9c479db9be9",
      "source_artifact_ref": "wiki_page:computationalreviewrecurrence-13-attractor-network-models",
      "origin_url": "https://github.com/AllenNeuralDynamics/ComputationalReviewRecurrence/blob/79ce062d54a924ce05953ec90aa9d26044d2b48f/evidence/section_13_evidence_package.json",
      "commit_sha": "79ce062d54a924ce05953ec90aa9d26044d2b48f",
      "created_by": "persona-jerome-lecoq-gbo-neuroscience",
      "repository_url": "https://github.com/AllenNeuralDynamics/ComputationalReviewRecurrence"
    }