Matches in SemOpenAlex for { <https://semopenalex.org/work/W2050892006> ?p ?o ?g. }
Showing items 1 to 72 of
72
with 100 items per page.
- W2050892006 endingPage "349" @default.
- W2050892006 startingPage "339" @default.
- W2050892006 abstract "AbstractThe creation of several forms of knowledge that would enable organizations to ask and say the right things during complex diagnoses is proposed. Based on the concept of knowledge combustion, the hypothesis testing knowledge blend (HTKB) is the cognitive equivalent of petrol for the combustion engine. The HTKB requires the creation of a knowledge hybrid that uses existing technologies to ask and say the right things. In addition to timing mechanisms and problem space maps, two forms of declarative knowledge (directions and explanations) are integrated to create the HTKB. These directions and explanations would be obtained directly from the video recordings of diagnosticians conducting teleconsultations. By providing these profound dialogues during the conduct of complex diagnoses, the HTKB should increase the knowledge capital of organizations. Formal analyses are beginning to validate the conceptual structure (blue print) presented in this paper, and the results will be provided in the future.Keywords: pragmaticsknowledge creationcognitionknowledge types Additional informationNotes on contributorsTed RandlesAbout the authorsTed Randles is an associate professor of Computer Information Systems in the College of Business and Technology at Eastern Kentucky University, Richmond, Kentucky. He has a Bachelor's degree in political science from Cleveland State University, Cleveland, Ohio, an MPA from Ohio State University, Columbus, Ohio, and a post undergraduate certificate in information systems from Virginia Commonwealth University, Richmond, Virginia. Dr. Randles earned a Ph.D. in decision sciences from Georgia State University, Atlanta, Georgia and has over 15 years experience as a government and computer systems analyst. His current research interests include knowledge management, intelligent systems, medical information systems, and telemedicine. His research has been published in several journals including the Journal of Information and Knowledge Management and Telemedicine and E-health Journal.Christopher D BladesChristopher D. Blades is an associate professor of Computer Information Systems at American University of Afghanistan and an IT consultant in Richmond, Kentucky. He holds a B.Eng. from the University of East Anglia, England in Electrical Engineering and Ph.D. in Computation Methods from the University of Bath, England. His publication history includes Journal of Synthetic Metals, Journal of Information and Knowledge Management, AMCIS and SPIE Conference Proceedings. His current research interests include knowledge management, neural networks, intelligent agents, artificial intelligence, networking, and data mining. He is currently working on distributed web-based software applications utilizing Oracle 10g and Oracle application express (APEX). Dr. Blades was recently elected to the NICTAA Board to advise the Afghanistan government on IT and computer science policy.Adam FadlallaAdam Fadlalla is a professor of Computer and Information Science in the College of Business Administration at Cleveland State University, Cleveland, Ohio. He holds an MBA in Finance and Decision Sciences from Miami University, Oxford, Ohio, an M.Sc. in Computer Science and a Ph.D. in Computer Information Systems from the University of Cincinnati, Cincinnati, Ohio. Dr. Fadlalla served a Fulbright Scholarship with the UAE University in the United Arab Emirates. His current research interests include decision support systems, artificial intelligence applications, knowledge discovery in databases, and medical information systems. His research has been published in many journals, including Information and Management, Computers and Operations Research, Omega, Interfaces, Journal of the American Medical Informatics Association, Information Systems Management, and Journal of Information and Knowledge Management." @default.
- W2050892006 created "2016-06-24" @default.
- W2050892006 creator A5000281470 @default.
- W2050892006 creator A5009097874 @default.
- W2050892006 creator A5076433839 @default.
- W2050892006 date "2008-12-01" @default.
- W2050892006 modified "2023-10-14" @default.
- W2050892006 title "The hypothesis testing knowledge blend" @default.
- W2050892006 cites W1969450024 @default.
- W2050892006 cites W1989757849 @default.
- W2050892006 cites W1991004437 @default.
- W2050892006 cites W2008208925 @default.
- W2050892006 cites W2048756344 @default.
- W2050892006 cites W2063665023 @default.
- W2050892006 cites W2064558173 @default.
- W2050892006 cites W2132454116 @default.
- W2050892006 cites W2155778519 @default.
- W2050892006 cites W4298037799 @default.
- W2050892006 cites W2015525487 @default.
- W2050892006 doi "https://doi.org/10.1057/kmrp.2008.20" @default.
- W2050892006 hasPublicationYear "2008" @default.
- W2050892006 type Work @default.
- W2050892006 sameAs 2050892006 @default.
- W2050892006 citedByCount "3" @default.
- W2050892006 countsByYear W20508920062012 @default.
- W2050892006 countsByYear W20508920062018 @default.
- W2050892006 countsByYear W20508920062021 @default.
- W2050892006 crossrefType "journal-article" @default.
- W2050892006 hasAuthorship W2050892006A5000281470 @default.
- W2050892006 hasAuthorship W2050892006A5009097874 @default.
- W2050892006 hasAuthorship W2050892006A5076433839 @default.
- W2050892006 hasConcept C11413529 @default.
- W2050892006 hasConcept C138885662 @default.
- W2050892006 hasConcept C144024400 @default.
- W2050892006 hasConcept C162324750 @default.
- W2050892006 hasConcept C187736073 @default.
- W2050892006 hasConcept C2778137410 @default.
- W2050892006 hasConcept C41008148 @default.
- W2050892006 hasConcept C41895202 @default.
- W2050892006 hasConcept C56739046 @default.
- W2050892006 hasConcept C96865113 @default.
- W2050892006 hasConceptScore W2050892006C11413529 @default.
- W2050892006 hasConceptScore W2050892006C138885662 @default.
- W2050892006 hasConceptScore W2050892006C144024400 @default.
- W2050892006 hasConceptScore W2050892006C162324750 @default.
- W2050892006 hasConceptScore W2050892006C187736073 @default.
- W2050892006 hasConceptScore W2050892006C2778137410 @default.
- W2050892006 hasConceptScore W2050892006C41008148 @default.
- W2050892006 hasConceptScore W2050892006C41895202 @default.
- W2050892006 hasConceptScore W2050892006C56739046 @default.
- W2050892006 hasConceptScore W2050892006C96865113 @default.
- W2050892006 hasIssue "4" @default.
- W2050892006 hasLocation W20508920061 @default.
- W2050892006 hasOpenAccess W2050892006 @default.
- W2050892006 hasPrimaryLocation W20508920061 @default.
- W2050892006 hasRelatedWork W2300834647 @default.
- W2050892006 hasRelatedWork W2357686075 @default.
- W2050892006 hasRelatedWork W2389150894 @default.
- W2050892006 hasRelatedWork W2389501055 @default.
- W2050892006 hasRelatedWork W2725439132 @default.
- W2050892006 hasRelatedWork W2748952813 @default.
- W2050892006 hasRelatedWork W2778289127 @default.
- W2050892006 hasRelatedWork W2993745360 @default.
- W2050892006 hasRelatedWork W4301396142 @default.
- W2050892006 hasRelatedWork W3141985153 @default.
- W2050892006 hasVolume "6" @default.
- W2050892006 isParatext "false" @default.
- W2050892006 isRetracted "false" @default.
- W2050892006 magId "2050892006" @default.
- W2050892006 workType "article" @default.