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4,299,418 works, Canadian by any of four routes.

Every filter state is a URL; the URL is the query; the query is citable via /q/⟨hash⟩. The page, the API and the export parse the same parameters.

The current cohort, streamed from the database: every work column, the machine labels, the provisional scores, and the per-row validation status. Exports are capped at 100,000 rows. Mints a permanent /q/ link for this exact query. The same filters always produce the same link, whoever asks.

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Healthcare Systems and Reforms
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Direct Codex and Gemma labels are unvalidated and sparse. Distilled predictions cover the full frame and are also unvalidated. Choose the evidence source explicitly; absence of a direct label is never a negative label.

affaffiliation
fundfunder
venuejournal
aboutaboutness

The four routes compose: require the funder route and exclude affiliation to get the funder-only stratum no affiliation-based frame ever sees.

1,107 results · 1 filter active ·
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20002025
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Machine labels · sparse coverage
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An unlabeled work is unknown, not a negative. Label coverage is reported on every query.
1,107 works in the cohort · of 4,299,418page 4 of 23

Labels cover 7 of 1,107 works in this cohort. The rest are unlabeled, which is not a negative label: the label table is sparse today and grows as labeling rounds land.

Distilled predictions cover 1,107 of 1,107 works in this cohort. Predictions are machine_predicted_unvalidated teacher distillation outputs. Candidate is the union; consensus is the intersection.

affunlabeled
Financing Health Improvements In India
Anil B. Deolalikar, Dean T. Jamison, Prabhat Jha, Ramanan Laxminarayan
2008· article· en· Health Affairs· Economics, Econometrics and Finance
distilled prediction:candidate · noneconsensus · none
39
citations
venueno affunlabeled
Factors Affecting Health Care Utilization in Tehran
Soraya Nouraei Motlagh, Asma Sabermahani, Mohsen Asadi Lari, Mohammad Reza Hadian, Mohamad Reza Vaez Mahdavi, Hasan Abolghasem Gorji
2015· article· en· Global Journal of Health Science· Economics, Econometrics and Finance
distilled prediction:candidate · noneconsensus · none
33
citations
fundno affunlabeled
Who pays for and who benefits from health care services in Uganda?
Brendan Kwesiga, John E. Ataguba, Christabel Abewe, Paul Kizza, Charlotte Muheki Zikusooka
2015· article· en· BMC Health Services Research· Economics, Econometrics and Finance
distilled prediction:candidate · noneconsensus · none
33
citations
affunlabeled
Unmet need and met unneed in health care utilisation in Iran
Mohammad Hajizadeh, Luke B. Connelly, James R.G. Butler, Aredshir Khosravi
2012· article· en· International Journal of Social Economics· Economics, Econometrics and Finance
distilled prediction:candidate · noneconsensus · none
32
citations

How this was built: Screen · Findings · About