{"id":"W2762509870","doi":"10.1093/icc/dtx036","title":"Cross-local knowledge fertilization, cluster emergence, and the generation of buzz","year":2017,"lang":"en","type":"article","venue":"Industrial and Corporate Change","topic":"Business Strategy and Innovation","field":"Business, Management and Accounting","cited_by":48,"is_retracted":false,"has_abstract":true,"ca_institutions":"University of Toronto","funders":"University of Toronto; Deutsche Forschungsgemeinschaft","keywords":"Marketing buzz; Economic geography; Cluster (spacecraft); Perspective (graphical); Process (computing); Sociology; Geography; Computer science; Business; Advertising; Artificial intelligence","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":[],"consensus_categories":[],"category_scores_codex":[0.0003999694,0.0001038047,0.0001434938,0.00006621879,0.0005527301,0.0003727375,0.0001202606,0.0001198833,0.00007595692],"category_scores_gemma":[0.00008401339,0.00006998333,0.00001844311,0.0001740659,0.000421775,0.001221073,0.0001238257,0.00008589411,0.000008765195],"about_ca_system_candidate":false,"about_ca_system_consensus":false,"about_ca_system_score_codex":0.00000340189,"about_ca_system_score_gemma":0.00001505491,"about_ca_topic_candidate":false,"about_ca_topic_consensus":false,"about_ca_topic_score_codex":0.0006315556,"about_ca_topic_score_gemma":0.000235047,"domain_scores_codex":[0.9994197,0.00001233253,0.0002290316,0.000153767,0.00008437808,0.0001007172],"domain_scores_gemma":[0.9989809,0.00001022037,0.0005209075,0.0001644946,0.0003166016,0.000006904164],"domain_codex":null,"domain_gemma":null,"domain_candidate":null,"domain_consensus":null,"study_design_codex":"theoretical_or_conceptual","study_design_gemma":"observational","study_design_scores_codex":[0.00142807,0.0001445329,0.3305486,0.0002600818,0.00007037372,0.000003482791,0.0005171185,0.00003874931,0.001176326,0.3915531,0.01035949,0.2639001],"study_design_scores_gemma":[0.02055072,0.00008468415,0.7515216,0.0002891734,0.0002796267,0.000007853069,0.0005657828,0.1195905,0.001871075,0.02922096,0.07497329,0.001044682],"study_design_candidate":"observational","study_design_consensus":null,"genre_codex":"empirical","genre_gemma":"empirical","genre_scores_codex":[0.9919392,0.0002060452,0.0003972375,0.002487957,0.001075889,0.0003550551,0.000004221762,0.0000183534,0.003515998],"genre_scores_gemma":[0.996415,0.00004814139,0.000003322194,0.0002851017,0.002854616,0.00003036124,0.00004096267,0.000008115329,0.0003143499],"genre_candidate":"empirical","genre_consensus":"empirical","teacher_disagreement_score":0.420973,"threshold_uncertainty_score":0.4251209,"prediction_status":"machine_predicted_unvalidated"},"machine_scores":{"provisional":true,"baseline":true,"maturity_gate_passed":false,"score_opus":0.3181669143608067,"score_gpt":0.2984986128059834,"score_spread":0.01966830155482335,"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."}}