Representing Causation in Medicine: How Fuzzy "Sets as Points" Capture the Uniqueness of the Patient, Context, and Change in the Fuzzy Unit Hypercube
暂无分享,去创建一个
[1] E. Grossi. Howovercome somepitfalls ofpresent methods to assess theindividual absolute risk formajor cardiovascular events thanks toartificial intelligence tools , 2006 .
[2] B. Kosko. Fuzziness vs. probability , 1990 .
[3] B. Kosko. Probable equivalence, superpower sets, and superconditionals , 2004 .
[4] L. Zadeh. Toward a Perception-Based Theory of Probabilistic Reasoning , 2000, Rough Sets and Current Trends in Computing.
[5] R. Virchow,et al. Gesammelte Abhandlungen zur wissenschaftlichen Medicin , 1856 .
[6] Cathy M. Helgason,et al. PERCEPTION-BASED REASONING AND FUZZY CARDINALITY PROVIDE DIRECT MEASURES OF CAUSALITY SENSITIVE TO INITIAL CONDITIONS IN THE INDIVIDUAL PATIENT(INVITED PAPER) , 2002 .
[7] John N. Mordeson,et al. Statistical versus Fuzzy Measures of Variable Interaction in Patients with Stroke , 2001, Neuroepidemiology.
[8] Thomas H Jobe,et al. Measurable Differences between Sequential and Parallel Diagnostic Decision Processes for Determining Stroke Subtype: A Representation of Interacting Pathologies , 2002, Thrombosis and Haemostasis.
[9] Bart Kosko,et al. Neural networks and fuzzy systems , 1998 .
[10] Cathy M. Helgason,et al. The fuzzy cube and causal efficacy: representation of concomitant mechanisms in stroke , 1998, Neural Networks.
[11] Sub-Riemannian geometry of the coefficients of univalent functions☆ , 2006, math/0608532.