{"id":"W4395069441","doi":"10.12688/openreseurope.17390.1","title":"Future-making through eventing human-machine listening","year":2024,"lang":"en","type":"article","venue":"Open Research Europe","topic":"Media, Communication, and Education","field":"Social Sciences","cited_by":1,"is_retracted":false,"has_abstract":true,"ca_institutions":"Concordia University","funders":"Social Sciences and Humanities Research Council of Canada; European Cooperation in Science and Technology; European Commission","keywords":"Active listening; Computer science; Psychology; Communication","routes":{"ca_aff":true,"ca_fund":true,"ca_venue":false,"about_ca":false,"invisible_to_affiliation_only":false},"retraction":null,"screen":null,"direct_labels":[],"prediction":{"model_version":"codex-gemma-dda1882f352a","candidate_categories":["sts","scholarly_communication","insufficient_payload"],"consensus_categories":[],"category_scores_codex":[0.008583444,0.00007587315,0.0001033399,0.000112584,0.002795049,0.001980762,0.001675849,0.00004765591,0.001325959],"category_scores_gemma":[0.001214977,0.00006978006,0.00003597261,0.001260575,0.0002201334,0.0009357679,0.0006668324,0.0005998706,0.0006084974],"about_ca_system_candidate":false,"about_ca_system_consensus":false,"about_ca_system_score_codex":0.0001169094,"about_ca_system_score_gemma":0.0005555685,"about_ca_topic_candidate":false,"about_ca_topic_consensus":false,"about_ca_topic_score_codex":0.006201589,"about_ca_topic_score_gemma":0.002326615,"domain_scores_codex":[0.9965324,0.001757657,0.0002096117,0.0003047638,0.0007164117,0.000479169],"domain_scores_gemma":[0.998504,0.0005572994,0.00003755801,0.0004682658,0.0003343561,0.00009855822],"domain_codex":null,"domain_gemma":null,"domain_candidate":null,"domain_consensus":null,"study_design_codex":"theoretical_or_conceptual","study_design_gemma":"not_applicable","study_design_scores_codex":[0.000009446662,0.00008603764,0.001094323,0.0000908342,0.00002956632,0.00002332162,0.2127214,0.000003658823,0.0005009944,0.6517257,0.04333268,0.09038205],"study_design_scores_gemma":[0.00005059735,0.00002180315,0.0006526668,0.0002473677,0.000004189469,9.28363e-7,0.01622101,0.00009540072,0.00003242672,0.004544397,0.9780358,0.00009342649],"study_design_candidate":"not_applicable","study_design_consensus":null,"genre_codex":"other","genre_gemma":"empirical","genre_scores_codex":[0.01142631,0.003239158,0.0001136919,0.01096243,0.0008913669,0.0004799287,0.000001855384,0.00009330449,0.972792],"genre_scores_gemma":[0.9472443,0.001671096,0.001929085,0.0001188352,0.002061583,0.00005317822,0.00002809219,0.0000317601,0.04686205],"genre_candidate":"other","genre_consensus":null,"teacher_disagreement_score":0.935818,"threshold_uncertainty_score":0.9995869,"prediction_status":"machine_predicted_unvalidated"},"machine_scores":{"provisional":true,"baseline":true,"maturity_gate_passed":false,"score_opus":0.3129250943544231,"score_gpt":0.5694183056286654,"score_spread":0.2564932112742422,"validation_status":"score_only:v0-immature-baseline","note":"Baseline scores from an immature model (maturity gate not passed). Scores rank; they never assert a category."}}