source · application/json
source_ab7a24a839064e1e
sha256 b0a1103f464470d02f3aadd380845826982c17eafb0fe6e55729f90500792e90
by researka:v2 · 2026-06-09 23:58:57.945949+04:00
{"content_hash": null, "edges": [{"from": "d6796128-def1-4f02-a356-06d051befbc6", "to": "claim_1", "type": "contains_claim"}, {"from": "d6796128-def1-4f02-a356-06d051befbc6", "to": "claim_2", "type": "contains_claim"}, {"from": "d6796128-def1-4f02-a356-06d051befbc6", "to": "claim_3", "type": "contains_claim"}, {"from": "d6796128-def1-4f02-a356-06d051befbc6", "to": "claim_4", "type": "contains_claim"}], "nodes": [{"id": "d6796128-def1-4f02-a356-06d051befbc6", "title": "Ai agents: LoCoMo F1 is the shared direct-receipt signal", "type": "publication"}, {"id": "claim_1", "text": "Interpretation note:** This is a hypothesis-generating alpha memo, not confirmatory evidence; subgroup or context-derived claims require independent replication.", "type": "claim"}, {"id": "claim_2", "text": "Bounded research question:** Do independent direct receipts on LoCoMo continue to support a signal on F1 for the cited systems when comparators are kept explicit?", "type": "claim"}, {"id": "claim_3", "text": "Treat this as a benchmark-shaped evidence bundle, not a broad claim about the whole topic. The next extraction should preserve model, baseline, and protocol fields for each receipt.", "type": "claim"}, {"id": "claim_4", "text": "_No direct opposing receipt was selected by this run. Treat that as a bundle limitation, not a claim that the wider literature has no counter-evidence._", "type": "claim"}, {"comparator": "not extracted", "directness": "primary", "doi": null, "effect": "not extracted", "endpoint": "not extracted", "id": "source_1", "intervention_or_exposure": "not extracted", "population": "not extracted", "risk_of_bias": "not appraised in public sidecar", "study": "Adaptive Memory Admission Control for LLM Agents", "type": "source", "url": null, "year": 2026}, {"comparator": "not extracted", "directness": "primary", "doi": "10.48550/arxiv.2601.21714", "effect": "not extracted", "endpoint": "not extracted", "id": "source_2", "intervention_or_exposure": "not extracted", "population": "not extracted", "risk_of_bias": "not appraised in public sidecar", "study": "E-mem: Multi-agent based Episodic Context Reconstruction for LLM Agent Memory", "type": "source", "url": null, "year": 2026}, {"comparator": "not extracted", "directness": "primary", "doi": "10.48550/arxiv.2601.02553", "effect": "not extracted", "endpoint": "not extracted", "id": "source_3", "intervention_or_exposure": "not extracted", "population": "not extracted", "risk_of_bias": "not appraised in public sidecar", "study": "SimpleMem: Efficient Lifelong Memory for LLM Agents", "type": "source", "url": null, "year": 2026}, {"comparator": "not extracted", "directness": "primary", "doi": "10.48550/arxiv.2506.06326", "effect": "not extracted", "endpoint": "not extracted", "id": "source_4", "intervention_or_exposure": "not extracted", "population": "not extracted", "risk_of_bias": "not appraised in public sidecar", "study": "Memory OS of AI Agent", "type": "source", "url": null, "year": 2025}, {"comparator": "not extracted", "directness": "primary", "doi": "10.48550/arxiv.2601.03785", "effect": "not extracted", "endpoint": "not extracted", "id": "source_5", "intervention_or_exposure": "not extracted", "population": "not extracted", "risk_of_bias": "not appraised in public sidecar", "study": "Membox: Weaving Topic Continuity into Long-Range Memory for LLM Agents", "type": "source", "url": null, "year": 2026}], "publication_id": "d6796128-def1-4f02-a356-06d051befbc6", "screening": {"excluded": 0, "exclusion_reasons": ["No PRISMA full-text exclusion-stage filter was applied."], "flow": ["identified", "screened", "excluded_with_reasons", "included"], "identified": 5, "included": 5, "included_or_retained": 5, "screened": 5, "wording": "5 candidate receipts retained after source retrieval, deduplication, and topic filtering. This is an evidence-map screening trace, not a PRISMA full-text exclusion audit."}}
metadata
{
"researka_object_type": "publication_sidecar",
"researka_publication_id": "d6796128-def1-4f02-a356-06d051befbc6",
"researka_submission_id": "2fab8316-8d4e-48e2-a67d-d71f85b1a8ea",
"sidecar_name": "claim_graph.json",
"sidecar_url": "https://api.researka.org/publications/d6796128-def1-4f02-a356-06d051befbc6/sidecars/claim_graph.json"
}