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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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Gender and Technology in Education
Retraction
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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.

388 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.
388 works in the cohort · of 4,299,418page 2 of 8

Labels cover 1 of 388 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 388 of 388 works in this cohort. Predictions are machine_predicted_unvalidated teacher distillation outputs. Candidate is the union; consensus is the intersection.

affunlabeled
'Virtual family'
Willa Duplantis, Eve MacGregor, Maria Klawe, Michele Ng
2002· article· en· ACM SIGCSE Bulletin· Social Sciences
distilled prediction:candidate · insufficient_payloadconsensus · insufficient_payload
18
citations
aboutno affunlabeled
Confidence, Connection, and Comfort
Kimberly Michelle Ying, Fernando J. Rodríguez, Alexandra Lauren Dibble, Alexia Charis Martin, Kristy Elizabeth Boyer, Sanethia Thomas +1 more
2021· article· en· Social Sciences
distilled prediction:candidate · noneconsensus · none
17
citations
affaboutunlabeled
Bridging the Gender Gap in High-Technology Education
Gail Crombie, Tracy Abarbanel, Colin Anderson
2000· article· en· NASSP Bulletin· Social Sciences
distilled prediction:candidate · insufficient_payloadconsensus · insufficient_payload
15
citations
affunlabeled
Does a Taste of Computing Increase Computer Science Enrollment?
Steven McGee, Randi McGee‐Tekula, Jennifer Duck, Ronald I. Greenberg, Lucia Dettori, Dale Reed +4 more
2017· article· en· Computing in Science & Engineering· Social Sciences
distilled prediction:candidate · stsconsensus · sts
14
citations
venueno affunlabeled
Are K–12 Teachers Ready for E-learning?
Elif Polat, Sinan Hopcan, Ömer Yahşi
2022· article· en· The International Review of Research in Open and Distributed Learning· Social Sciences
distilled prediction:candidate · noneconsensus · none
14
citations
affunlabeled
Scaling up Women in Computing Initiatives
Elizabeth Patitsas, Michelle Craig, Steve Easterbrook
2015· article· en· Social Sciences
distilled prediction:candidate · noneconsensus · none
12
citations
affunlabeled
Curriculum and Instruction Design
Stephan Petrina
2007· book-chapter· en· IGI Global eBooks· Social Sciences
distilled prediction:candidate · noneconsensus · none
11
citations

How this was built: Screen · Findings · About